108 results
Search Results
2. Reviewing Machine Learning and Image Processing Based Decision-Making Systems for Breast Cancer Imaging.
- Author
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Zerouaoui, Hasnae and Idri, Ali
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BREAST tumor diagnosis ,ALGORITHMS ,MAMMOGRAMS ,BREAST tumors ,DECISION support systems ,DECISION trees ,DIAGNOSTIC imaging ,DIGITAL image processing ,MACHINE learning ,MAGNETIC resonance imaging ,MEDLINE ,ARTIFICIAL neural networks ,ONLINE information services ,RESEARCH funding ,SYSTEMATIC reviews ,RESEARCH bias ,SUPPORT vector machines ,DESCRIPTIVE statistics ,COMPUTER-aided diagnosis ,DEEP learning - Abstract
Breast cancer (BC) is the leading cause of death among women worldwide. It affects in general women older than 40 years old. Medical images analysis is one of the most promising research areas since it provides facilities for diagnosis and decision-making of several diseases such as BC. This paper conducts a Structured Literature Review (SLR) of the use of Machine Learning (ML) and Image Processing (IP) techniques to deal with BC imaging. A set of 530 papers published between 2000 and August 2019 were selected and analyzed according to ten criteria: year and publication channel, empirical type, research type, medical task, machine learning techniques, datasets used, validation methods, performance measures and image processing techniques which include image pre-processing, segmentation, feature extraction and feature selection. Results showed that diagnosis was the most used medical task and that Deep Learning techniques (DL) were largely used to perform classification. Furthermore, we found out that classification was the most ML objective investigated followed by prediction and clustering. Most of the selected studies used Mammograms as imaging modalities rather than Ultrasound or Magnetic Resonance Imaging with the use of public or private datasets with MIAS as the most frequently investigated public dataset. As for image processing techniques, the majority of the selected studies pre-process their input images by reducing the noise and normalizing the colors, and some of them use segmentation to extract the region of interest with the thresholding method. For feature extraction, we note that researchers extracted the relevant features using classical feature extraction techniques (e.g. Texture features, Shape features, etc.) or DL techniques (e. g. VGG16, VGG19, ResNet, etc.), and finally few papers used feature selection techniques in particular the filter methods. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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3. Extract Features from Periocular Region to Identify the Age Using Machine Learning Algorithms.
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Kamarajugadda KK and Polipalli TR
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- Biometry, Humans, Aging, Algorithms, Eye, Machine Learning, Pattern Recognition, Automated methods
- Abstract
Latest studies done on huge data collected from aging features proved that the performance of facial image based age estimation is low and need to be improved. One of the significant biometric traits for human recognition or search is Human age. Age assessment is very much exigent over other pattern recognition problems since the aging differs from person to person. This paper proposes a new framework that uses periocular region for age feature extraction and application of hybrid algorithm for age recognition. Firstly, preprocessing and periocular region normalization is done to acquire age invariant features. Secondly, the periocular region that underwent preprocessing is analyzed using hybrid approach, a novel machine algorithm that combines both SVM and kNN. The proposed technique generates the best recognition outputs.
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- 2019
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4. Role of biological Data Mining and Machine Learning Techniques in Detecting and Diagnosing the Novel Coronavirus (COVID-19): A Systematic Review.
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Albahri, A. S., Hamid, Rula A., Alwan, Jwan k., Al-qays, Z.T., Zaidan, A. A., Zaidan, B. B., Albahri, A O. S., AlAmoodi, A. H., Khlaf, Jamal Mawlood, Almahdi, E. M., Thabet, Eman, Hadi, Suha M., Mohammed, K I., Alsalem, M. A., Al-Obaidi, Jameel R., and Madhloom, H.T.
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ALGORITHMS ,ARTIFICIAL intelligence ,MACHINE learning ,MEDLINE ,ONLINE information services ,DATA mining ,SYSTEMATIC reviews ,COVID-19 - Abstract
Coronaviruses (CoVs) are a large family of viruses that are common in many animal species, including camels, cattle, cats and bats. Animal CoVs, such as Middle East respiratory syndrome-CoV, severe acute respiratory syndrome (SARS)-CoV, and the new virus named SARS-CoV-2, rarely infect and spread among humans. On January 30, 2020, the International Health Regulations Emergency Committee of the World Health Organisation declared the outbreak of the resulting disease from this new CoV called 'COVID-19', as a 'public health emergency of international concern'. This global pandemic has affected almost the whole planet and caused the death of more than 315,131 patients as of the date of this article. In this context, publishers, journals and researchers are urged to research different domains and stop the spread of this deadly virus. The increasing interest in developing artificial intelligence (AI) applications has addressed several medical problems. However, such applications remain insufficient given the high potential threat posed by this virus to global public health. This systematic review addresses automated AI applications based on data mining and machine learning (ML) algorithms for detecting and diagnosing COVID-19. We aimed to obtain an overview of this critical virus, address the limitations of utilising data mining and ML algorithms, and provide the health sector with the benefits of this technique. We used five databases, namely, IEEE Xplore, Web of Science, PubMed, ScienceDirect and Scopus and performed three sequences of search queries between 2010 and 2020. Accurate exclusion criteria and selection strategy were applied to screen the obtained 1305 articles. Only eight articles were fully evaluated and included in this review, and this number only emphasised the insufficiency of research in this important area. After analysing all included studies, the results were distributed following the year of publication and the commonly used data mining and ML algorithms. The results found in all papers were discussed to find the gaps in all reviewed papers. Characteristics, such as motivations, challenges, limitations, recommendations, case studies, and features and classes used, were analysed in detail. This study reviewed the state-of-the-art techniques for CoV prediction algorithms based on data mining and ML assessment. The reliability and acceptability of extracted information and datasets from implemented technologies in the literature were considered. Findings showed that researchers must proceed with insights they gain, focus on identifying solutions for CoV problems, and introduce new improvements. The growing emphasis on data mining and ML techniques in medical fields can provide the right environment for change and improvement. [ABSTRACT FROM AUTHOR]
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- 2020
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5. Investigating Machine Learning Techniques for Predicting Risk of Asthma Exacerbations: A Systematic Review.
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Darsha Jayamini, Widana Kankanamge, Mirza, Farhaan, Asif Naeem, M., and Chan, Amy Hai Yan
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ASTHMA risk factors , *ASTHMA prevention , *DISEASE exacerbation , *RISK assessment , *PREDICTION models , *DECISION making , *SYSTEMATIC reviews , *MACHINE learning , *SOCIODEMOGRAPHIC factors , *ALGORITHMS - Abstract
Asthma, a common chronic respiratory disease among children and adults, affects more than 200 million people worldwide and causes about 450,000 deaths each year. Machine learning is increasingly applied in healthcare to assist health practitioners in decision-making. In asthma management, machine learning excels in performing well-defined tasks, such as diagnosis, prediction, medication, and management. However, there remain uncertainties about how machine learning can be applied to predict asthma exacerbation. This study aimed to systematically review recent applications of machine learning techniques in predicting the risk of asthma attacks to assist asthma control and management. A total of 860 studies were initially identified from five databases. After the screening and full-text review, 20 studies were selected for inclusion in this review. The review considered recent studies published from January 2010 to February 2023. The 20 studies used machine learning techniques to support future asthma risk prediction by using various data sources such as clinical, medical, biological, and socio-demographic data sources, as well as environmental and meteorological data. While some studies considered prediction as a category, other studies predicted the probability of exacerbation. Only a group of studies applied prediction windows. The paper proposes a conceptual model to summarise how machine learning and available data sources can be leveraged to produce effective models for the early detection of asthma attacks. The review also generated a list of data sources that other researchers may use in similar work. Furthermore, we present opportunities for further research and the limitations of the preceding studies. [ABSTRACT FROM AUTHOR]
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- 2024
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6. TBUnet: A Pure Convolutional U-Net Capable of Multifaceted Feature Extraction for Medical Image Segmentation.
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Chen, LiFang, Li, Jiawei, and Ge, Hongze
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DIAGNOSTIC imaging equipment , *TUMOR diagnosis , *DIGITAL image processing , *EXPERIMENTAL design , *COLON polyps , *ULTRASONIC imaging , *MELANOMA , *MACHINE learning , *DIAGNOSTIC imaging , *DATABASE management , *QUALITATIVE research , *SIGNAL processing , *ARTIFICIAL neural networks , *TUMORS , *BREAST tumors , *ALGORITHMS - Abstract
Many current medical image segmentation methods utilize convolutional neural networks (CNNs), with some extended U-Net-based networks relying on deep feature representations to achieve satisfactory results. However, due to the limited receptive fields of convolutional architectures, they are unable to explicitly model the varying range dependencies present in medical images. Recently, advancements in large kernel convolution have allowed for the extraction of a wider range of low frequency information, making this task more achievable. In this paper, we propose TBUnet for solving the problem of difficult to accurately segment lesions with heterogeneous structures and fuzzy borders, such as melanoma, colon polyps and breast cancer. The TBUnet is a pure convolutional network with three branches for extracting high frequency information, low frequency information, and boundary information, respectively. It is capable of extracting features in various areas. To fuse the feature maps from the three branches, TBUnet presents the FL (fusion layer) module, which is based on threshold and logical operation. We design the FE (feature enhancement) module on the skip-connection to emphasize the fine-grained features. In addition, our method varies the number of input channels in different branches at each stage of the network, so that the relationship between low and high frequency features can be learned. TBUnet yields 91.08 DSC on ISIC-2018 for melanoma segmentation, and achieves better performance than state-of-the-art medical image segmentation methods. Furthermore, experimental results with 82.48 DSC and 89.04 DSC obtained on the BUSI dataset and the Kvasir-SEG dataset show that TBUnet outperforms the advanced segmentation methods. Experiments demonstrate that TBUnet has excellent segmentation performance and generalisation capability. [ABSTRACT FROM AUTHOR]
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- 2023
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7. An Improved Convolutional Neural Network Based Approach for Automated Heartbeat Classification.
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Wang, Haoren, Shi, Haotian, Chen, Xiaojun, Zhao, Liqun, Huang, Yixiang, and Liu, Chengliang
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ARRHYTHMIA diagnosis ,ALGORITHMS ,CARDIOVASCULAR disease diagnosis ,ELECTROCARDIOGRAPHY ,HEART beat ,MACHINE learning ,ARTIFICIAL neural networks ,DESCRIPTIVE statistics - Abstract
With age, our blood vessels are prone to aging, which induces cardiovascular disease. As an important basis for diagnosing heart disease and evaluating heart function, the electrocardiogram (ECG) records cardiac physiological electrical activity. Abnormalities in cardiac physiological activity are directly reflected in the ECG. Thus, ECG research is conducive to heart disease diagnosis. Considering the complexity of arrhythmia detection, we present an improved convolutional neural network (CNN) model for accurate classification. Compared with the traditional machine learning methods, CNN requires no additional feature extraction steps due to the automatic feature processing layers. In this paper, an improved CNN is proposed to automatically classify the heartbeat of arrhythmia. Firstly, all the heartbeats are divided from the original signals. After segmentation, the ECG heartbeats can be inputted into the first convolutional layers. In the proposed structure, kernels with different sizes are used in each convolution layer, which takes full advantage of the features in different scales. Then a max-pooling layer followed. The outputs of the last pooling layer are merged and as the input to fully-connected layers. Our experiment is in accordance with the AAMI inter-patient standard, which included normal beats (N), supraventricular ectopic beats (S), ventricular ectopic beats (V), fusion beats (F), and unknown beats (Q). For verification, the MIT arrhythmia database is introduced to confirm the accuracy of the proposed method, then, comparative experiments are conducted. The experiment demonstrates that our proposed method has high performance for arrhythmia detection, the accuracy is 99.06%. When properly trained, the proposed improved CNN model can be employed as a tool to automatically detect different kinds of arrhythmia from ECG. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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8. An Agent-based Decision Support for a Vaccination Campaign.
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Sulis, Emilio and Terna, Pietro
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GENETICS ,IMMUNIZATION ,COVID-19 vaccines ,RESEARCH methodology ,ARTIFICIAL intelligence ,MACHINE learning ,MEDICAL protocols ,CONCEPTUAL structures ,DECISION making ,GOVERNMENT policy ,ALGORITHMS - Abstract
We explore the Covid-19 diffusion with an agent-based model of an Italian region with a population on a scale of 1:1000. We also simulate different vaccination strategies. From a decision support system perspective, we investigate the adoption of artificial intelligence techniques to provide suggestions about more effective policies. We adopt the widely used multi-agent programmable modeling environment NetLogo, adding genetic algorithms to evolve the best vaccination criteria. The results suggest a promising methodology for defining vaccine rates by population types over time. The results are encouraging towards a more extensive application of agent-oriented methods in public healthcare policies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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9. Phenotype Algorithm based Big Data Analytics for Cancer Diagnose.
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Sivakumar, K., Nithya, N. S., and Revathy, O.
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TUMOR diagnosis ,ALGORITHMS ,ARTIFICIAL intelligence ,BAR codes ,CONCEPTUAL structures ,DATABASE management ,GENE mapping ,INFORMATION retrieval ,MACHINE learning ,PHENOTYPES ,DATA mining ,SYMPTOMS ,ELECTRONIC health records ,DATA analytics ,PAIN threshold - Abstract
Nowadays, Cancer diagnosis is one of the major challenging characteristics for treating cancer. The reality of cancer patients rely on the diagnosis of cancer at the early stages (either in stage 1 or stage 2). If the cancer is diagnosed in stage 3 or later stages means the changes of survival of the patient will become more critical. Normally, single patient records will generate a huge amount of data if the data could be manage and analyze means to solve many problems for identifying the patterns it will leads to diagnose the cancer. Recent work several machine learning algorithms are introduced for the classification of cancer. However still the classification accuracy of machine learning algorithms are reduced because of huge number of samples. So the proposed work introduces a new Hadoop Distributed File System (HDFS) is focused in this work. In this paper, the proposed phenotype techniques are used which handle and classifies the raw EHR (Electronic Health Record) and EMR (Electronic Medical Record). It is based on the HDFS and Two-Phase Map Reduce. Phenotype algorithm uses NLP (National Language Processing) tool which will analyze and classify the cancer patient data like gene mapping, age related data, image and ultrasonic frequency processing, identification and analysis of irregularities, disease and personal histories. In this paper, the three factorized model is used which calculates the mean score values. The values are calculated by disease stage, pain status, etc. This paper focuses big data analytics for cancer diagnosis and the simulation results shows the proposed system produces the highest performance. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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10. Prediction of Hemodialysis Timing Based on LVW Feature Selection and Ensemble Learning.
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Xiong, Chang-zhu, Su, Minglian, Jiang, Zitao, and Jiang, Wei
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ALGORITHMS ,CONCEPTUAL structures ,STATISTICAL correlation ,HEMODIALYSIS ,INFORMATION science ,LEARNING strategies ,MACHINE learning ,RESEARCH evaluation ,RESEARCH funding ,DATA mining ,TREATMENT duration - Abstract
We propose an improved model based on LVW embedded model feature extractor and ensemble learning for improving prediction accuracy of hemodialysis timing in this paper. Due to this drawback caused by feature extraction models, we adopt an enhanced LVW embedded model to search the feature subset by stochastic strategy, which can find the best feature combination that are most beneficial to learner performance. In the model application, we present an improved integrated learners for model fusion to reduce errors caused by overfitting problem of the single classifier. We run several state-of-the-art Q&A methods as contrastive experiments. The experimental results show that the ensemble learning model based on LVW has better generalization ability (97.04%) and lower standard error (± 0.04). We adopt the model to make high-precision predictions of hemodialysis timing, and the experimental results have shown that our framework significantly outperforms several strong baselines. Our model provides strong clinical decision support for physician diagnosis and has important clinical implications. [ABSTRACT FROM AUTHOR]
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- 2019
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11. An Adaptive Hidden Markov Model for Activity Recognition Based on a Wearable Multi-Sensor Device.
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Li, Zhen, Wei, Zhiqiang, Yue, Yaofeng, Wang, Hao, Jia, Wenyan, Burke, Lora, Baranowski, Thomas, and Sun, Mingui
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ALGORITHMS ,MATHEMATICAL models ,PHYSICAL fitness ,RESEARCH funding ,WEARABLE technology ,THEORY ,LIFESTYLES ,PHYSICAL activity ,DATA analytics - Abstract
Human activity recognition is important in the study of personal health, wellness and lifestyle. In order to acquire human activity information from the personal space, many wearable multi-sensor devices have been developed. In this paper, a novel technique for automatic activity recognition based on multi-sensor data is presented. In order to utilize these data efficiently and overcome the big data problem, an offline adaptive-Hidden Markov Model (HMM) is proposed. A sensor selection scheme is implemented based on an improved Viterbi algorithm. A new method is proposed that incorporates personal experience into the HMM model as a priori information. Experiments are conducted using a personal wearable computer eButton consisting of multiple sensors. Our comparative study with the standard HMM and other alternative methods in processing the eButton data have shown that our method is more robust and efficient, providing a useful tool to evaluate human activity and lifestyle. [ABSTRACT FROM AUTHOR]
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- 2015
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12. Reliable Feature Selection for Automated Angle Closure Glaucoma Mechanism Detection.
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Niwas, S., Lin, Weisi, Bai, Xiaolong, Kwoh, Chee, Sng, Chelvin, Aquino, M., and Chew, P.
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ACADEMIC medical centers ,ALGORITHMS ,ANGLE-closure glaucoma ,ANTERIOR eye segment ,CHI-squared test ,DIAGNOSTIC imaging ,FISHER exact test ,COMPUTERS in medicine ,RESEARCH funding ,QUALITATIVE research ,MULTIPLE regression analysis ,OPTICAL coherence tomography ,DATA analysis software ,DESCRIPTIVE statistics ,KRUSKAL-Wallis Test - Abstract
Glaucoma is an eye disease where a loss of vision occurs as a result of progressive optic nerve damage usually associates with high intraocular pressure. A subtype of glaucoma called primary angle-closure glaucoma (PACG) has been observed to be the result of one or more mechanisms such as Pupil block, Plateau iris, Peripheral iris roll, and Lens in the anterior segment of the eye. Reliable features in anterior segment images are important for determining the specific mechanisms involved in PACG. In this paper, first the discriminant features are selected by several feature selection algorithms in the context of PACG detection based on anterior segment optical coherence tomography (AS-OCT) images, and then a novel criteria is proposed to further select more reliable features. Our approach is based on selecting the top-ranked features in each algorithm and its rank combination for selection of the best features. Compared with the features selected by the individual feature selection methods, the features selected by our method achieves the best performance in terms of the accuracy of classification of the four PACG mechanisms by using AdaBoost classifier. [ABSTRACT FROM AUTHOR]
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- 2015
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13. Impact of Ensemble Learning in the Assessment of Skeletal Maturity.
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Cunha, Pedro, Moura, Daniel, Guevara López, Miguel, Guerra, Conceição, Pinto, Daniela, and Ramos, Isabel
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SKELETAL maturity ,ACADEMIC medical centers ,ALGORITHMS ,DIAGNOSTIC imaging ,COMPUTERS in medicine ,REGRESSION analysis ,RESEARCH funding ,DICOM (Computer network protocol) ,CHILDREN - Abstract
The assessment of the bone age, or skeletal maturity, is an important task in pediatrics that measures the degree of maturation of children's bones. Nowadays, there is no standard clinical procedure for assessing bone age and the most widely used approaches are the Greulich and Pyle and the Tanner and Whitehouse methods. Computer methods have been proposed to automatize the process; however, there is a lack of exploration about how to combine the features of the different parts of the hand, and how to take advantage of ensemble techniques for this purpose. This paper presents a study where the use of ensemble techniques for improving bone age assessment is evaluated. A new computer method was developed that extracts descriptors for each joint of each finger, which are then combined using different ensemble schemes for obtaining a final bone age value. Three popular ensemble schemes are explored in this study: bagging, stacking and voting. Best results were achieved by bagging with a rule-based regression (M5P), scoring a mean absolute error of 10.16 months. Results show that ensemble techniques improve the prediction performance of most of the evaluated regression algorithms, always achieving best or comparable to best results. Therefore, the success of the ensemble methods allow us to conclude that their use may improve computer-based bone age assessment, offering a scalable option for utilizing multiple regions of interest and combining their output. [ABSTRACT FROM AUTHOR]
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- 2014
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14. An Intelligent System for Lung Cancer Diagnosis Using a New Genetic Algorithm Based Feature Selection Method.
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Lu, Chunhong, Zhu, Zhaomin, and Gu, Xiaofeng
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LUNG tumors ,ACADEMIC medical centers ,ALGORITHMS ,RESEARCH funding ,GENOMICS ,DIAGNOSIS - Abstract
In this paper, we develop a novel feature selection algorithm based on the genetic algorithm (GA) using a specifically devised trace-based separability criterion. According to the scores of class separability and variable separability, this criterion measures the significance of feature subset, independent of any specific classification. In addition, a mutual information matrix between variables is used as features for classification, and no prior knowledge about the cardinality of feature subset is required. Experiments are performed by using a standard lung cancer dataset. The obtained solutions are verified with three different classifiers, including the support vector machine (SVM), the back-propagation neural network (BPNN), and the K-nearest neighbor (KNN), and compared with those obtained by the whole feature set, the F-score and the correlation-based feature selection methods. The comparison results show that the proposed intelligent system has a good diagnosis performance and can be used as a promising tool for lung cancer diagnosis. [ABSTRACT FROM AUTHOR]
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- 2014
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15. Multiscale Time-Sharing Elastography Algorithms and Transfer Learning of Clinicopathological Features of Uterine Cervical Cancer for Medical Intelligent Computing System.
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Dong, Xiaojun, Du, Hongmei, Guan, Haichen, and Zhang, Xuezhen
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ALGORITHMS ,ARTIFICIAL intelligence ,HIGH performance computing ,DIGITAL image processing ,MACHINE learning ,METADATA ,SIGNAL processing ,TIME ,ULTRASONIC imaging ,UTERINE tumors ,CERVIX uteri tumors ,INFERENTIAL statistics ,SYMPTOMS - Abstract
Intelligent medical diagnosis and computing system faces many challenges in complex object recognition, large-scale data imaging and real-time diagnosis, such as poor real-time computing, low efficiency of data storage and low recognition rate of lesions. In order to solve the above problems, this paper proposes a medical intelligent computing system and a series of algorithms for the clinical pathology of cervical cancer based on the multi-scale imaging and transfer learning framework. Firstly, based on data dimensions, imaging errors and other factors, this paper designs a multi-scale time-sharing elastic imaging algorithm based on image reconstruction time and data sample characteristics. Then, taking the burst imaging cohort and the calculation data set of new cervical cancer cases as the objects, based on the difficulties of cervical cancer feature modeling, this paper proposes the transfer learning algorithm of clinical and pathological features of cervical cancer. Finally, a medical intelligent computing system for cervical cancer pathology analysis and calculation with high efficiency and reliability is established. A series of proposed algorithms are compared with single-scale Retinex (SSR), which is based on single-scale Retinex migration learning (SSR-TL). The experimental results show that the proposed algorithm in cervical cancer pathological imaging and scoring, as well as the feature extraction and recognition of lesions, especially the efficiency of system execution, is obviously due to the comparison algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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16. An Improved Full Convolutional Network Combined with Conditional Random Fields for Brain MR Image Segmentation Algorithm and its 3D Visualization Analysis.
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Zhai, Jiemin and Li, Huiqi
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ALGORITHMS ,BRAIN ,COMPARATIVE studies ,DIAGNOSTIC imaging ,MACHINE learning ,MAGNETIC resonance imaging ,ARTIFICIAL neural networks ,QUALITATIVE research ,THREE-dimensional imaging ,SEMANTIC Web ,QUANTITATIVE research ,DEEP learning - Abstract
Existing brain region segmentation algorithms based on deep convolutional neural networks (CNN) are inefficient for object boundary segmentation. In order to enhance the segmentation accuracy of brain tissue, this paper proposed an object region segmentation algorithm that combines pixel-level information and semantic information. Firstly, we extract semantic information by CNN with the attention module and get the coarse segmentation results through a specific pixel-level classifier. Then, we exploit conditional random fields to model the relationship between the underlying pixels so as to get local features. Finally, the semantic information and the local pixel-level information are respectively used as the unary potential and the binary potential of the Gibbs distribution, and the combination of both can obtain the fine region segmentation algorithm based on the fusion of pixel-level information and the semantic information. A large number of qualitative and quantitative test results show that our proposed algorithm has higher precision than the existing state-of-the-art deep feature models, which can better solve the problem of rough edge segmentation and produce good 3D visualization effect. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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17. Multiclass Benchmarking Framework for Automated Acute Leukaemia Detection and Classification Based on BWM and Group-VIKOR.
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Alsalem, M. A., Zaidan, A. A., Zaidan, B. B., Albahri, O. S., Alamoodi, A. H., Albahri, A. S., Mohsin, A. H., and Mohammed, K. I.
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LEUKEMIA diagnosis ,ALGORITHMS ,AUTOMATION ,BENCHMARKING (Management) ,DECISION support systems ,DECISION trees ,HEALTH facility administration ,LEUKEMIA ,MACHINE learning ,MATHEMATICAL models ,MEDICAL informatics ,MICROSCOPY ,RESEARCH evaluation ,THEORY - Abstract
This paper aims to assist the administration departments of medical organisations in making the right decision on selecting a suitable multiclass classification model for acute leukaemia. In this paper, we proposed a framework that will aid these departments in evaluating, benchmarking and ranking available multiclass classification models for the selection of the best one. Medical organisations have continuously faced evaluation and benchmarking challenges in such endeavour, especially when no single model is superior. Moreover, the improper selection of multiclass classification for acute leukaemia model may be costly for medical organisations. For example, when a patient dies, one such organisation will be legally or financially sued for incidents in which the model fails to fulfil its desired outcome. With regard to evaluation and benchmarking, multiclass classification models are challenging processes due to multiple evaluation and conflicting criteria. This study structured a decision matrix (DM) based on the crossover of 2 groups of multi-evaluation criteria and 22 multiclass classification models. The matrix was then evaluated with datasets comprising 72 samples of acute leukaemia, which include 5327 gens. Subsequently, multi-criteria decision-making (MCDM) techniques are used in the benchmarking and ranking of multiclass classification models. The MCDM used techniques that include the integrated BWM and VIKOR. BWM has been applied for the weight calculations of evaluation criteria, whereas VIKOR has been used to benchmark and rank classification models. VIKOR has also been employed in two decision-making contexts: individual and group decision making and internal and external group aggregation. Results showed the following: (1) the integration of BWM and VIKOR is effective at solving the benchmarking/selection problems of multiclass classification models. (2) The ranks of classification models obtained from internal and external VIKOR group decision making were almost the same, and the best multiclass classification model based on the two was 'Bayes. Naive Byes Updateable' and the worst one was 'Trees.LMT'. (3) Among the scores of groups in the objective validation, significant differences were identified, which indicated that the ranking results of internal and external VIKOR group decision making were valid. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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18. A Deep Automated Skeletal Bone Age Assessment Model with Heterogeneous Features Learning.
- Author
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Tong, Chao, Liang, Baoyu, Li, Jun, and Zheng, Zhigao
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HAND radiography ,ALGORITHMS ,CONCEPTUAL structures ,DIGITAL image processing ,LEARNING strategies ,MACHINE learning ,ARTIFICIAL neural networks ,REGRESSION analysis ,RESEARCH funding ,SKELETAL maturity ,X-rays - Abstract
Skeletal bone age assessment is a widely used standard procedure in both disease detection and growth prediction for children in endocrinology. Conventional manual assessment methods mainly rely on personal experience in observing X-ray images of left hand and wrist to calculate bone age, which show some intrinsic limitations from low efficiency to unstable accuracy. To address these problems, some automated methods based on image processing or machine learning have been proposed, while their performances are not satisfying enough yet in assessment accuracy. Motivated by the remarkable success of deep learning (DL) techniques in the fields of image classification and speech recognition, we develop a deep automated skeletal bone age assessment model based on convolutional neural networks (CNNs) and support vector regression (SVR) using multiple kernel learning (MKL) algorithm to process heterogeneous features in this paper. This deep framework has been constructed, not only exploring the X-ray images of hand and twist but also some other heterogeneous information like race and gender. The experiment results prove its better performance with higher bone age assessment accuracy on two different data sets compared with the state of the art, indicating that the fused heterogeneous features provide a better description of the degree of bones' maturation. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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19. Risk Factors Associated with COVID-19 Lethality: A Machine Learning Approach Using Mexico Database.
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Carvantes-Barrera, Alejandro, Díaz-González, Lorena, Rosales-Rivera, Mauricio, and Chávez-Almazán, Luis A.
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OBESITY ,HYPERTENSION ,COVID-19 ,MACHINE learning ,DIABETES ,RISK assessment ,PREDICTION models ,DEATH ,ALGORITHMS - Abstract
Identifying risk factors associated with COVID-19 lethality is crucial in combating the ongoing pandemic. In this study, we developed lethality predictive models for each epidemiological wave and for the overall dataset using the Extreme Gradient Boosting technique and analyzed them using Shapley values to determine the contribution levels of various features, including demographics, comorbidities, medical units, and recent medical information from confirmed COVID-19 cases in Mexico between February 23, 2020, and April 15, 2022. The results showed that pneumonia and advanced age were the most important factors predicting patient death in all cohorts. Additionally, the medical unit where the patient received care acted as a risk or protective factor. IMSS medical units were identified as high-risk factors in all cohorts, except in wave four, while SSA medical units generally were moderate protective factors. We also found that intubation was a high-risk factor in the first epidemiological wave and a moderate-risk factor in the following waves. Female gender was a protective factor of moderate-high importance in all cohorts, while being between 18 and 29 years old was a moderate protective factor and being between 50 and 59 years old was a moderate risk factor. Additionally, diabetes (all cohorts), obesity (third wave), and hypertension (fourth wave) were identified as moderate risk factors. Finally, residing in municipalities with the lowest Human Development Index level represented a moderate risk factor. In conclusion, this study identified several significant risk factors associated with COVID-19 lethality in Mexico, which could aid policymakers in developing targeted interventions to reduce mortality rates. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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20. A Feasibility Study of Diabetic Retinopathy Detection in Type II Diabetic Patients Based on Explainable Artificial Intelligence.
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Lalithadevi, B., Krishnaveni, S., and Gnanadurai, J. Samuel Cornelius
- Subjects
RESEARCH ,INFERENTIAL statistics ,ANALYSIS of variance ,ARTIFICIAL intelligence ,MEDICAL screening ,BLOOD sugar ,MACHINE learning ,OPHTHALMOLOGISTS ,REGRESSION analysis ,TYPE 2 diabetes ,RISK assessment ,SEVERITY of illness index ,QUESTIONNAIRES ,DESCRIPTIVE statistics ,FACTOR analysis ,CHI-squared test ,DIABETIC retinopathy ,PREDICTION models ,STATISTICAL sampling ,DATA analysis software ,BODY mass index ,EARLY diagnosis ,ALGORITHMS ,DISEASE risk factors - Abstract
Diabetic retinopathy (DR) is vision impairment and a life-threatening condition for diabetic patients. Especially type II diabetic people have higher chances of getting retinal problems. Hence, early prediction of DR is necessary for preventing the diabetic patients from vision impairment. The main aim of this feasibility study is to identify the most critical risk features that could lead to diabetic retinopathy. This study investigated type II diabetic patients' socio-analytical, diabetes, behavioral, and clinical risk factors. We conducted a self-individual questionnaire session for all participants. Our questionnaire asked about the reliability of results, feeling comfortable during the screening test, willingness to participate in future screenings, overall perspective, and satisfaction with the DR screening test. We proposed a random forest model for predicting the prevalence of DR risk among diabetics. Further explanations of the model were conducted using more robust SHAP eXplainable Artificial Intelligence (XAI) tools. The SHAP method makes it possible to understand how input variables interact with their representative output records, as well as how input variables are ranked. In addition, various descriptive and inferential statistical analyses were performed on the data and evaluated the significant relationship between the factors discussed above via hypothesis testing. This feasibility study involved 172 type II diabetic patients (73 males and 99 females). Therefore, we found that 81 (47.09%) out of 172 participants had referable DR. The average age of the patients was determined as 55.08, with a standard deviation of ± 9.770 (ranging from 40 to 79). Type II patients were affected by mild, moderate, severe, and advanced proliferative diabetic retinopathy (PDR) stages with 23.83%, 13.95%, 5.81%, and 3.48%, respectively, of the total samples. The developed RF model obtained high accuracy of 94.9% using clinical dataset. Our results showed that the formation of tiny microminiature lesions was noticeable in type II diabetic patients with aged people, abnormal blood glucose levels, and prolonged diabetes duration. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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21. Nature-Inspired Algorithm for Training Multilayer Perceptron Networks in e-health Environments for High-Risk Pregnancy Care.
- Author
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Moreira, Mário W. L., Rodrigues, Joel J. P. C., Kumar, Neeraj, Al-Muhtadi, Jalal, and Korotaev, Valery
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ALGORITHMS ,DECISION support systems ,HYPERTENSION in pregnancy ,INFORMATION storage & retrieval systems ,MEDICAL databases ,MATERNAL health services ,EVALUATION of medical care ,ARTIFICIAL neural networks ,PREGNANCY ,RESEARCH funding ,RECEIVER operating characteristic curves - Abstract
Nature presents an infinite source of inspiration for computational models and paradigms, in particular for researchers associated with the area known as natural computing. The simultaneous optimization of the architectures and weights of artificial neural networks (ANNs) through biologically inspired algorithms is an interesting approach for obtaining efficient networks with relatively good generalization capabilities. This methodology constitutes a concordance between a low structural complexity model and low training error rates. Currently, complexity and high error rates are the leading issues faced in the development of clinical decision support systems (CDSSs) for pregnancy care. Hence, in this paper the use of a biologically inspired technique, known as particle swarm optimization (PSO), is proposed for reducing the computational cost of the ANN-based method referred to as the multilayer perceptron (MLP), without reducing its precision rate. The results show that the PSO algorithm is able to improve computational model performance, showing lower validation error rates than the conventional approach. This technique can select the best parameters and provide an efficient solution for training the MLP algorithm. The proposed nature-inspired algorithm and its parameter adjustment method improve the performance and precision of CDSSs. This technique can be applied in electronic health (e-health) systems as a useful tool for handling uncertainty in the decision-making process related to high-risk pregnancy. The proposed method outperformed, on average, other approaches by 26.4% in terms of precision and 14.9% in terms of the true positive ratio (TPR), and showed a reduction of 35.4% in the false positive ratio (FPR). Furthermore, this method was superior to the MLP algorithm in terms of precision and area under the receiver operating characteristic curve by 2.3 and 10.2%, respectively, when applied to the delivery outcome for pregnant women. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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22. Upper Limb Movement Classification Via Electromyographic Signals and an Enhanced Probabilistic Network.
- Author
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Burns, Alexis, Adeli, Hojjat, and Buford, John A.
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ARM physiology ,ALGORITHMS ,CONFIDENCE intervals ,ELECTROMYOGRAPHY ,MACHINE learning ,ARTIFICIAL neural networks ,SIGNAL processing ,BICEPS brachii ,BODY movement ,STROKE rehabilitation ,STROKE patients ,DESCRIPTIVE statistics - Abstract
Few studies in the literature have researched the use of surface electromyography (sEMG) for motor assessment post-stroke due to the complexity of this type of signal. However, recent advances in signal processing and machine learning have provided fresh opportunities for analyzing complex, non-linear, non-stationary signals, such as sEMG. This paper presents a method for identification of the upper limb movements from sEMG signals using a combination of digital signal processing, that is discrete wavelet transform, and the enhanced probabilistic neural network (EPNN). To explore the potential of sEMG signals for monitoring motor rehabilitation progress, this study used sEMG signals from a subset of movements of the Arm Motor Ability Test (AMAT) as inputs into a movement classification algorithm. The importance of a particular frequency domain feature, that is the ratio of the mean absolute values between sub-bands, was discovered in this work. An average classification accuracy of 75.5% was achieved using the proposed approach with a maximum accuracy of 100%. The performance of the proposed method was compared with results obtained using three other classification algorithms: support vector machine (SVM), k-Nearest Neighbors (k-NN), and probabilistic neural network (PNN) in terms of sEMG movement classification. The study demonstrated the capability of using upper limb sEMG signals to identify and distinguish between functional movements used in standard upper limb motor assessments for stroke patients. The classification algorithm used in the proposed method, EPNN, outperformed SVM, k-NN, and PNN. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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23. Systematic Review of Machine Learning applied to the Prediction of Obesity and Overweight.
- Author
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Ferreras, Antonio, Sumalla-Cano, Sandra, Martínez-Licort, Rosmeri, Elío, Iñaka, Tutusaus, Kilian, Prola, Thomas, Vidal-Mazón, Juan Luís, Sahelices, Benjamín, and de la Torre Díez, Isabel
- Subjects
OBESITY risk factors ,DEEP learning ,ONLINE information services ,SYSTEMATIC reviews ,MACHINE learning ,ARTIFICIAL intelligence ,RISK assessment ,PARADIGMS (Social sciences) ,PREDICTION models ,MEDLINE ,NUTRITIONISTS ,ALGORITHMS - Abstract
Obesity and overweight has increased in the last year and has become a pandemic disease, the result of sedentary lifestyles and unhealthy diets rich in sugars, refined starches, fats and calories. Machine learning (ML) has proven to be very useful in the scientific community, especially in the health sector. With the aim of providing useful tools to help nutritionists and dieticians, research focused on the development of ML and Deep Learning (DL) algorithms and models is searched in the literature. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) protocol has been used, a very common technique applied to carry out revisions. In our proposal, 17 articles have been filtered in which ML and DL are applied in the prediction of diseases, in the delineation of treatment strategies, in the improvement of personalized nutrition and more. Despite expecting better results with the use of DL, according to the selected investigations, the traditional methods are still the most used and the yields in both cases fluctuate around positive values, conditioned by the databases (transformed in each case) to a greater extent than by the artificial intelligence paradigm used. Conclusions: An important compilation is provided for the literature in this area. ML models are time-consuming to clean data, but (like DL) they allow automatic modeling of large volumes of data which makes them superior to traditional statistics. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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24. Machine Learning in Hypertension Detection: A Study on World Hypertension Day Data.
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Montagna, Sara, Pengo, Martino Francesco, Ferretti, Stefano, Borghi, Claudio, Ferri, Claudio, Grassi, Guido, Muiesan, Maria Lorenza, and Parati, Gianfranco
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HYPERTENSION risk factors ,HYPERTENSION ,DECISION trees ,SUPPORT vector machines ,PREDICTIVE tests ,RESEARCH evaluation ,MEDICAL screening ,MACHINE learning ,RANDOM forest algorithms ,ACCURACY ,MEDICAL protocols ,QUESTIONNAIRES ,DESCRIPTIVE statistics ,RESEARCH funding ,SENSITIVITY & specificity (Statistics) ,RECEIVER operating characteristic curves ,LOGISTIC regression analysis ,ALGORITHMS - Abstract
Many modifiable and non-modifiable risk factors have been associated with hypertension. However, current screening programs are still failing in identifying individuals at higher risk of hypertension. Given the major impact of high blood pressure on cardiovascular events and mortality, there is an urgent need to find new strategies to improve hypertension detection. We aimed to explore whether a machine learning (ML) algorithm can help identifying individuals predictors of hypertension. We analysed the data set generated by the questionnaires administered during the World Hypertension Day from 2015 to 2019. A total of 20206 individuals have been included for analysis. We tested five ML algorithms, exploiting different balancing techniques. Moreover, we computed the performance of the medical protocol currently adopted in the screening programs. Results show that a gain of sensitivity reflects in a loss of specificity, bringing to a scenario where there is not an algorithm and a configuration which properly outperforms against the others. However, Random Forest provides interesting performances (0.818 sensitivity – 0.629 specificity) compared with medical protocols (0.906 sensitivity – 0.230 specificity). Detection of hypertension at a population level still remains challenging and a machine learning approach could help in making screening programs more precise and cost effective, when based on accurate data collection. More studies are needed to identify new features to be acquired and to further improve the performances of ML models. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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25. DataSifterText: Partially Synthetic Text Generation for Sensitive Clinical Notes.
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Zhou, Nina, Wu, Qiucheng, Wu, Zewen, Marino, Simeone, and Dinov, Ivo D.
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DATABASES ,DATA science ,PRIVACY ,MEDICAL information storage & retrieval systems ,ELECTRONIC data interchange ,SAMPLE size (Statistics) ,ARTIFICIAL intelligence ,MACHINE learning ,DATABASE management ,AUTOMATIC data collection systems ,DATA security ,MEDICAL ethics ,QUALITY assurance ,DESCRIPTIVE statistics ,RESEARCH funding ,DATA analytics ,DATA mining ,ALGORITHMS ,PROBABILITY theory - Abstract
Petabytes of health data are collected annually across the globe in electronic health records (EHR), including significant information stored as unstructured free text. However, the lack of effective mechanisms to securely share clinical text has inhibited its full utilization. We propose a new method, DataSifterText, to generate partially synthetic clinical free-text that can be safely shared between stakeholders (e.g., clinicians, STEM researchers, engineers, analysts, and healthcare providers), limiting the re-identification risk while providing significantly better utility preservation than suppressing or generalizing sensitive tokens. The method creates partially synthetic free-text data, which inherits the joint population distribution of the original data, and disguises the location of true and obfuscated words. Under certain obfuscation levels, the resulting synthetic text was sufficiently altered with different choices, orders, and frequencies of words compared to the original records. The differences were comparable to machine-generated (fully synthetic) text reported in previous studies. We applied DataSifterText to two medical case studies. In the CDC work injury application, using privacy protection, 60.9-86.5% of the synthetic descriptions belong to the same cluster as the original descriptions, demonstrating better utility preservation than the naïve content suppressing method (45.8-85.7%). In the MIMIC III application, the generated synthetic data maintained over 80% of the original information regarding patients' overall health conditions. The reported DataSifterText statistical obfuscation results indicate that the technique provides sufficient privacy protection (low identification risk) while preserving population-level information (high utility). [ABSTRACT FROM AUTHOR]
- Published
- 2022
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- View/download PDF
26. An Automatic Approach Using ELM Classifier for HFpEF Identification Based on Heart Sound Characteristics.
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Liu, Yongmin, Guo, Xingming, and Zheng, Yineng
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HEART sounds ,ALGORITHMS ,COMPARATIVE studies ,HEART failure ,DIGITAL image processing ,MACHINE learning ,RESEARCH funding ,T-test (Statistics) ,LOGISTIC regression analysis ,DATA analysis software ,VENTRICULAR ejection fraction - Abstract
Heart failure with preserved ejection fraction (HFpEF) is a complex and heterogeneous clinical syndrome. For the purpose of assisting HFpEF diagnosis, a non-invasive method using extreme learning machine and heart sound (HS) characteristics was provided in this paper. Firstly, the improved wavelet denoising method was used for signal preprocessing. Then, the logistic regression based hidden semi-Markov model algorithm was utilized to locate the boundary of the first HS and the second HS, therefore, the ratio of diastolic to systolic duration can be calculated. Eleven features were extracted based on multifractal detrended fluctuation analysis to analyze the differences of multifractal behavior of HS between healthy people and HFpEF patients. Afterwards, the statistical analysis was implemented on the extracted HS characteristics to generate the diagnostic feature set. Finally, the extreme learning machine was applied for HFpEF identification by the comparison of performances with support vector machine. The result shows an accuracy of 96.32%, a sensitivity of 95.48% and a specificity of 97.10%, which demonstrates the effectiveness of HS for HFpEF diagnosis. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
27. Classification of Carotid Artery Intima Media Thickness Ultrasound Images with Deep Learning.
- Author
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Savaş, Serkan, Topaloğlu, Nurettin, Kazcı, Ömer, and Koşar, Pınar Nercis
- Subjects
ALGORITHMS ,ARTIFICIAL intelligence ,ATHEROSCLEROSIS ,CAROTID artery diseases ,DIAGNOSTIC imaging ,RESEARCH methodology ,RESEARCH evaluation ,STROKE ,ULTRASONIC imaging ,NEURAL pathways ,EARLY diagnosis ,CAROTID intima-media thickness ,DEEP learning ,DISEASE complications - Abstract
Cerebrovascular accident due to carotid artery disease is the most common cause of death in developed countries following heart disease and cancer. For a reliable early detection of atherosclerosis, Intima Media Thickness (IMT) measurement and classification are important. A new method for decision support purpose for the classification of IMT was proposed in this study. Ultrasound images are used for IMT measurements. Images are classified and evaluated by experts. This is a manual procedure, so it causes subjectivity and variability in the IMT classification. Instead, this article proposes a methodology based on artificial intelligence methods for IMT classification. For this purpose, a deep learning strategy with multiple hidden layers has been developed. In order to create the proposed model, convolutional neural network algorithm, which is frequently used in image classification problems, is used. 501 ultrasound images from 153 patients were used to test the model. The images are classified by two specialists, then the model is trained and tested on the images, and the results are explained. The deep learning model in the study achieved an accuracy of 89.1% in the IMT classification with 89% sensitivity and 88% specificity. Thus, the assessments in this paper have shown that this methodology performs reasonable results for IMT classification. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
28. Age Prediction Based on Brain MRI Image: A Survey.
- Author
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Sajedi, Hedieh and Pardakhti, Nastaran
- Subjects
AGING ,ALGORITHMS ,BRAIN ,DIAGNOSTIC imaging ,MACHINE learning ,MAGNETIC resonance imaging ,COMPUTERS in medicine ,MEDLINE ,ONLINE information services ,SYSTEMATIC reviews - Abstract
Human age prediction is an interesting and applicable issue in different fields. It can be based on various criteria such as face image, DNA methylation, chest plate radiographs, knee radiographs, dental images and etc. Most of the age prediction researches have mainly been based on images. Since the image processing and Machine Learning (ML) techniques have grown up, the investigations were led to use them in age prediction problem. The implementations would be used in different fields, especially in medical applications. Brain Age Estimation (BAE) has attracted more attention in recent years and it would be so helpful in early diagnosis of some neurodegenerative diseases such as Alzheimer, Parkinson, Huntington, etc. BAE is performed on Magnetic Resonance Imaging (MRI) images to compute the brain ages. Studies based on brain MRI shows that there is a relation between accelerated aging and accelerated brain atrophy. This refers to the effects of neurodegenerative diseases on brain structure while making the whole of it older. This paper reviews and summarizes the main approaches for age prediction based on brain MRI images including preprocessing methods, useful tools used in different research works and the estimation algorithms. We categorize the BAE methods based on two factors, first the way of processing MRI images, which includes pixel-based, surface-based, or voxel-based methods and second, the generation of ML algorithms that includes traditional or Deep Learning (DL) methods. The modern techniques as DL methods help MRI based age prediction to get results that are more accurate. In recent years, more precise and statistical ML approaches have been utilized with the help of related tools for simplifying computations and getting accurate results. Pros and cons of each research and the challenges in each work are expressed and some guidelines and deliberations for future research are suggested. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
29. Detection of Skin Cancer Using SVM, Random Forest and kNN Classifiers.
- Author
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Murugan, A., Nair, S.Anu H., and Kumar, K. P. Sanal
- Subjects
MELANOMA diagnosis ,ALGORITHMS ,COMPUTER simulation ,FACTOR analysis ,DIGITAL image processing ,MACHINE learning ,SKIN tumors - Abstract
Most common and deadly type of cancer is Skin cancer. The destructive kind of cancers in skin is Melanoma as well as it can be identified at the initial stage and can be cured completely. For the diagnosis of melanoma, the identification of the melanocytes in the area of epidermis is an essential stage. In this paper the watershed segmentation method is implemented for segmentation. The extracted segments are subjected to feature extraction. The features extracted are shape, ABCD rule and GLCM. The extracted features are then used for classification. The classifiers are kNN (k Nearest Neighbor), Random Forest and SVM (Support Vector Machine). Among different classifiers, the SVM classifier provided better results for the skin lesions classification. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
30. A Dynamic MooM Dataset Processing Under TelMED Protocol Design for QoS Improvisation of Telemedicine Environment.
- Author
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Ahmed, Syed Thouheed, Sandhya, M., and Sankar, Sharmila
- Subjects
ALGORITHMS ,COMMUNICATION ,DIAGNOSTIC imaging ,DIGITAL image processing ,MACHINE learning ,MEDICAL protocols ,COMPUTERS in medicine ,QUALITY assurance ,SIGNAL processing ,TELEMEDICINE ,DATA quality ,ELECTRONIC health records - Abstract
Telemedicine research improves the connectivity of remote patients and doctors. Researchers are focused on data optimization and processing over a predefined channel of communication under a depictive low QoS. In this paper a consolidated representation of telemedicine infrastructure of modern topological arrangement is represented and validated. The infrastructure is aided with Multiple Objective Optimized Medical dataset (MooM) processing and a channel optimizing TelMED protocol designed exclusively for remote medicine dataset transmission and processing. The proposed infrastructure provides an application oriented approach towards Electronics health records (EHR) creation and updating over edge computation. The focus of this article is to achieve higher order of Quality of Service (QoS) and Quality of Data (QoD) compared to typical communication channels algorithms for processing of medical data sample. Typically the proposed technique results are achieved to discuss in MooM dataset processing and TelMED channel optimization sessions and a resulting improvement is discussed with a comparison of each MooM dataset in reverse processing towards server end of diagnosis and a consolidated QoS is retrieved for proposed infrastructure. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
31. Breast Cancer Diagnosis Using Feature Ensemble Learning Based on Stacked Sparse Autoencoders and Softmax Regression.
- Author
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Kadam, Vinod Jagannath, Jadhav, Shivajirao Manikrao, and Vijayakumar, K.
- Subjects
BREAST tumor diagnosis ,ALGORITHMS ,BREAST tumors ,CLINICAL medicine ,COMPUTER simulation ,DATABASE management ,HIGH performance computing ,INFORMATION storage & retrieval systems ,MEDICAL databases ,MACHINE learning ,NEEDLE biopsy ,ARTIFICIAL neural networks ,REGRESSION analysis ,DATA analysis software ,DESCRIPTIVE statistics - Abstract
Nowadays, the most frequent cancer in women is breast cancer (malignant tumor). If breast cancer is detected at the beginning stage, it can often be cured. Many researchers proposed numerous methods for early prediction of this Cancer. In this paper, we proposed feature ensemble learning based on Sparse Autoencoders and Softmax Regression for classification of Breast Cancer into benign (non-cancerous) and malignant (cancerous). We used Breast Cancer Wisconsin (Diagnostic) medical data sets from the UCI machine learning repository. The proposed method is assessed using various performance indices like true classification accuracy, specificity, sensitivity, recall, precision, f measure, and MCC. Simulation and result proved that the proposed approach gives better results in terms of different parameters. The prediction results obtained by the proposed approach were very promising (98.60% true accuracy). In addition, the proposed method outperforms the Stacked Sparse Autoencoders and Softmax Regression based (SSAE-SM) model and other State-of-the-art classifiers in terms of various performance indices. Experimental simulations, empirical results, and statistical analyses are also showing that the proposed model is an efficient and beneficial model for classification of Breast Cancer. It is also comparable with the existing machine learning and soft computing approaches present in the related literature. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
32. A Hybridized ELM for Automatic Micro Calcification Detection in Mammogram Images Based on Multi-Scale Features.
- Author
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Melekoodappattu, Jayesh George and Subbian, Perumal Sankar
- Subjects
MAMMOGRAMS ,ALGORITHMS ,DIAGNOSTIC imaging ,DIGITAL diagnostic imaging ,DIGITAL image processing ,MACHINE learning ,COMPUTERS in medicine ,CALCINOSIS - Abstract
Detection of masses and micro calcifications are a stimulating task for radiologists in digital mammogram images. Radiologists using Computer Aided Detection (CAD) frameworks to find the breast lesion. Micro calcification may be the early sign of breast cancer. There are different kinds of methods used to detect and recognize micro calcification from mammogram images. This paper presents an ELM (Extreme Learning Machine) algorithm for micro calcification detection in digital mammogram images. The interference of mammographic image is removed at the pre-processing stages. A multi-scale features are extracted by a feature generation model. The performance did not improve by all extracted feature, therefore feature selection is performed by nature-inspired optimization algorithm. At last, the hybridized ELM classifier taken the selected optimal features to classify malignant from benign micro calcifications. The proposed work is compared with various classifiers and it shown better performance in training time, sensitivity, specificity and accuracy. The existing approaches considered here are SVM (Support Vector Machine) and NB (Naïve Bayes classifier). The proposed detection system provides 99.04% accuracy which is the better performance than the existing approaches. The optimal selection of feature vectors and the efficient classifier improves the performance of proposed system. Results illustrate the classification performance is better when compared with several other classification approaches. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
33. Distinguising Proof of Diabetic Retinopathy Detection by Hybrid Approaches in Two Dimensional Retinal Fundus Images.
- Author
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S, Karkuzhali and D, Manimegalai
- Subjects
ANEURYSM diagnosis ,ALGORITHMS ,DIABETIC retinopathy ,DIGITAL image processing ,MACHINE learning ,RETINA ,DESCRIPTIVE statistics ,EYE hemorrhage ,COMPUTER-aided diagnosis ,ONE-way analysis of variance - Abstract
Diabetes is characterized by constant high level of blood glucose. The human body needs to maintain insulin at very constrict range. The patients who are all affected by diabetes for a long time affected by eye disease called Diabetic Retinopathy (DR). The retinal landmarks namely Optic disc is predicted and masked to decrease the false positive in the exudates detection. The abnormalities like Exudates, Microaneurysms and Hemorrhages are segmented to classify the various stages of DR. The proposed approach is employed to separate the landmarks of retina and lesions of retina for the classification of stages of DR. The segmentation algorithms like Gabor double-sided hysteresis thresholding, maximum intensity variation, inverse surface adaptive thresholding, multi-agent approach and toboggan segmentation are used to detect and segment BVs, ODs, EXs, MAs and HAs. The feature vector formation and machine learning algorithm used to classify the various stages of DR are evaluated using images available in various retinal databases, and their performance measures are presented in this paper. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
34. A Novel Distributed Multitask Fuzzy Clustering Algorithm for Automatic MR Brain Image Segmentation.
- Author
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Jiang, Yizhang, Zhao, Kaifa, Xia, Kaijian, Xue, Jing, Zhou, Leyuan, Ding, Yang, and Qian, Pengjiang
- Subjects
BRAIN anatomy ,ALGORITHMS ,ARTIFICIAL intelligence ,BRAIN ,CLUSTER analysis (Statistics) ,COMPARATIVE studies ,DIGITAL image processing ,MACHINE learning ,MAGNETIC resonance imaging ,DESCRIPTIVE statistics ,COMPUTER-aided diagnosis - Abstract
Artificial intelligence algorithms have been used in a wide range of applications in clinical aided diagnosis, such as automatic MR image segmentation and seizure EEG signal analyses. In recent years, many machine learning-based automatic MR brain image segmentation methods have been proposed as auxiliary methods of medical image analysis in clinical treatment. Nevertheless, many problems regarding precise medical images, which cannot be effectively utilized to improve partition performance, remain to be solved. Due to the poor contrast in grayscale images, the ambiguity and complexity of MR images, and individual variability, the performance of classic algorithms in medical image segmentation still needs improvement. In this paper, we introduce a distributed multitask fuzzy c-means (MT-FCM) clustering algorithm for MR brain image segmentation that can extract knowledge common among different clustering tasks. The proposed distributed MT-FCM algorithm can effectively exploit information common among different but related MR brain image segmentation tasks and can avoid the negative effects caused by noisy data that exist in some MR images. Experimental results on clinical MR brain images demonstrate that the distributed MT-FCM method demonstrates more desirable performance than the classic signal task method. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
35. An IoT Based Predictive Modelling for Predicting Lung Cancer Using Fuzzy Cluster Based Segmentation and Classification.
- Author
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Palani, D. and Venkatalakshmi, K.
- Subjects
LUNG tumors ,ALGORITHMS ,CLASSIFICATION ,DECISION trees ,DIAGNOSTIC imaging ,DIGITAL image processing ,MACHINE learning ,MATHEMATICAL models ,COMPUTERS in medicine ,ARTIFICIAL neural networks ,QUALITY assurance ,SYSTEMS design ,USER interfaces ,DATA mining ,THEORY ,INTERNET of things ,DIAGNOSIS - Abstract
In this paper, we propose a new Internet of Things (IoT) based predictive modelling by using fuzzy cluster based augmentation and classification for predicting the lung cancer disease through continuous monitoring and also to improve the healthcare by providing medical instructions. Here, the fuzzy clustering method is used and which is based on transition region extraction for effective image segmentation. Moreover, Fuzzy C-Means Clustering algorithm is used to categorize the transitional region features from the feature of lung cancer image. In this work, Otsu thresholding method is used for extracting the transition region from lung cancer image. Moreover, the right edge image and the morphological thinning operation are used for enhancing the performance of segmentation. In addition, the morphological cleaning and the image region filling operations are performed over an edge lung cancer image for getting the object regions. In addition, we also propose a new incremental classification algorithm which combines the existing Association Rule Mining (ARM), the standard Decision Tree (DT) with temporal features and the CNN. The experiments have been conducted by using the standard images that are collected from database and the current health data which are collected from patient through IoT devices. The results proved that the performance of the proposed prediction model which is able to achieve the better accuracy when it is compared with other existing prediction model. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
36. Continuous Blood Pressure Monitoring as a Basis for Ambient Assisted Living (AAL) - Review of Methodologies and Devices.
- Author
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Stojanova, Aleksandra, Koceski, Saso, and Koceska, Natasa
- Subjects
ALGORITHMS ,AMBULATORY blood pressure monitoring ,BLOOD pressure measurement ,CONGREGATE housing ,ELECTROCARDIOGRAPHY ,LIGHT ,MACHINE learning ,MEDICAL technology ,ARTIFICIAL neural networks ,PLETHYSMOGRAPHY ,SIGNAL processing ,WEARABLE technology ,COMPUTER systems ,BLOOD pressure testing machines ,SMARTPHONES - Abstract
Blood pressure (BP) is a bio-physiological signal that can provide very useful information regarding human's general health. High or low blood pressure or its rapid fluctuations can be associated to various diseases or conditions. Nowadays, high blood pressure is considered to be an important health risk factor and major cause of various health problems worldwide. High blood pressure may precede serious heart diseases, stroke and kidney failure. Accurate blood pressure measurement and monitoring plays fundamental role in diagnosis, prevention and treatment of these diseases. Blood pressure is usually measured in the hospitals, as a part of a standard medical routine. However, there is an increasing demand for methodologies, systems as well as accurate and unobtrusive devices that will permit continuous blood pressure measurement and monitoring for a wide variety of patients, allowing them to perform their daily activities without any disturbance. Technological advancements in the last decade have created opportunities for using various devices as a part of ambient assisted living for improving quality of life for people in their natural environment. The main goal of this paper is to provide a comprehensive review of various methodologies for continuous cuff-less blood pressure measurement, as well as to evidence recently developed devices and systems for continuous blood pressure measurement that can be used in ambient assisted living applications. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
37. Diabetic Retinopathy Diagnosis from Retinal Images Using Modified Hopfield Neural Network.
- Author
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Hemanth, D. Jude, Anitha, J., Son, Le Hoang, and Mittal, Mamta
- Subjects
RETINA abnormalities ,ALGORITHMS ,DIABETIC retinopathy ,DIAGNOSTIC imaging ,MACHINE learning ,ARTIFICIAL neural networks ,DIAGNOSIS - Abstract
Disease diagnosis from medical images has become increasingly important in medical science. Abnormality identification in retinal images has become a challenging task in medical science. Effective machine learning and soft computing methods should be used to facilitate Diabetic Retinopathy Diagnosis from Retinal Images. Artificial Neural Networks are widely preferred for Diabetic Retinopathy Diagnosis from Retinal Images. It was observed that the conventional neural networks especially the Hopfield Neural Network (HNN) may be inaccurate due to the weight values are not adjusted in the training process. This paper presents a new Modified Hopfield Neural Network (MHNN) for abnormality classification from human retinal images. It relies on the idea that both weight values and output values can be adjusted simultaneously. The novelty of the proposed method lies in the training algorithm. In conventional method, the weights remain fixed but the weights are changing in the proposed method. Experimental performed on the Lotus Eye Care Hospital containing 540 images collected showed that the proposed MHNN yields an average sensitivity and specificity of 0.99 and accuracy of 99.25%. The proposed MHNN is better than HNN and other neural network approaches for Diabetic Retinopathy Diagnosis from Retinal Images. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
38. Mixture Model Segmentation System for Parasagittal Meningioma brain Tumor Classification based on Hybrid Feature Vector.
- Author
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Arokia Jesu Prabhu, L. and Jayachandran, A.
- Subjects
ALGORITHMS ,CELL nuclei ,CELL physiology ,CEREBROSPINAL fluid ,AUTOMATED cell identification ,CYTOLOGY ,DECISION trees ,DIGITAL image processing ,MACHINE learning ,MAGNETIC resonance imaging ,MATHEMATICS ,MENINGIOMA ,TUMOR classification ,WHITE matter (Nerve tissue) ,GRAY matter (Nerve tissue) ,SYMPTOMS ,DIAGNOSIS - Abstract
Meningioma is the one of the most common type of brain tumor, it as arises from the meninges and encloses the spine and the brain inside the skull. It accounts for 30% of all types of brain tumor. Meningioma's can occur in many parts of the brain and accordingly it is named. In this paper, a mixture model based classification of meningioma brain tumor using MRI image is developed. The proposed method consists of four stages. In the first stage, with respect to the cells' boundary, it is necessary to further processing, which ensures the boundary of some cells is a discrete region. Mathematical Morphology brings a fancy result during the discrete processing. Accurate cancer cell nucleus segmentation is necessary for automated cytological image analysis. Thresholding is a crucial step in segmentation..An adaptive binarization technique is an important step for medical image analysis.Finally, a novel hybrid Fuzzy SVM is designed in the classification stage meningioma brain tumor. The tumor classification results of proposed feature extraction with SVM is 74.24%, MM with FSVM is 82.67% and MM with RBF is 62.71% and our proposed method MM with Hybrid SVM is 91.64%. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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39. ECG Signal Classification Using Various Machine Learning Techniques.
- Author
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Celin, S and Vasanth, K.
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ALGORITHMS ,ELECTROCARDIOGRAPHY ,MACHINE learning ,ARTIFICIAL neural networks ,SIGNAL processing ,WAVE analysis ,DESCRIPTIVE statistics - Abstract
Electrocardiogram (ECG) signal is a process that records the heart rate by using electrodes and detects small electrical changes for each heat rate. It is used to investigate some types of abnormal heart function including arrhythmias and conduction disturbance. In this paper the proposed method is used to classify the ECG signal by using classification technique. First the Input signal is preprocessed by using filtering method such as low pass, high pass and butter worth filter to remove the high frequency noise. Butter worth filter is to remove the excess noise in the signal. After preprocessing peak points are detected by using peak detection algorithm and extract the features for the signal are extracted using statistical parameters. Finally, extracted features are classified by using SVM, Adaboost, ANN and Naïve Bayes classifier to classify the ECG signal database into normal or abnormal ECG signal. Experimental result shows that the accuracy of the SVM, Adaboost, ANN and Naïve Bayes classifier is 87.5%, 93%, 94 and 99.7%. Compared to other classifier naïve bayes classifier accuracy is high. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
40. The Effect of Multiscale PCA De-noising in Epileptic Seizure Detection.
- Author
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Kevric, Jasmin and Subasi, Abdulhamit
- Subjects
SEIZURES diagnosis ,SPASMS ,ALGORITHMS ,DECISION trees ,ELECTROENCEPHALOGRAPHY ,EPILEPSY ,EXPERIMENTAL design ,FACTOR analysis ,NOISE ,SIGNAL processing ,SPECTRUM analysis ,TIME series analysis ,DIAGNOSIS - Abstract
The article describes the effect of Multiscale Principal Component Analysis (MSPCA) de-noising method in terms of epileptic seizure detection. Topics discussed include the development of a patient-independent seizure detection algorithm using Freiburg electroencephalogram (EEG) database and the application of MSPCA de-nosing method to EEG segment prior to Power Spectral Density (PSD). Also mentioned are the results showing that MSPCA is an effective de-noising method.
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- 2014
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41. Role of biological Data Mining and Machine Learning Techniques in Detecting and Diagnosing the Novel Coronavirus (COVID-19): A Systematic Review
- Author
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Suha M. Hadi, E. M. Almahdi, Jwan K. Alwan, A.H. Alamoodi, K. I. Mohammed, A. A. Zaidan, Z.T. Al-qays, M. A. Alsalem, Ahmed Shihab Albahri, Hayan T. Madhloom, Rula A. Hamid, A. S. Albahri, Jameel R. Al-Obaidi, Eman Thabet, Jamal Mawlood Khlaf, and B. B. Zaidan
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medicine.medical_specialty ,020205 medical informatics ,Computer science ,Coronaviruses ,Pneumonia, Viral ,Scopus ,Medicine (miscellaneous) ,Context (language use) ,Health Informatics ,02 engineering and technology ,Disease ,Machine learning ,computer.software_genre ,Health informatics ,International Health Regulations ,Machine Learning ,MERS-CoV ,Betacoronavirus ,Health Information Management ,Artificial Intelligence ,Pandemic ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,Data Mining ,Humans ,Pandemics ,business.industry ,SARS-CoV-2 ,Public health ,Biological Data Mining ,COVID-19 ,Systems-Level Quality Improvement ,Applications of artificial intelligence ,Artificial intelligence ,business ,Coronavirus Infections ,computer ,Algorithms ,Information Systems - Abstract
Coronaviruses (CoVs) are a large family of viruses that are common in many animal species, including camels, cattle, cats and bats. Animal CoVs, such as Middle East respiratory syndrome-CoV, severe acute respiratory syndrome (SARS)-CoV, and the new virus named SARS-CoV-2, rarely infect and spread among humans. On January 30, 2020, the International Health Regulations Emergency Committee of the World Health Organisation declared the outbreak of the resulting disease from this new CoV called 'COVID-19', as a 'public health emergency of international concern'. This global pandemic has affected almost the whole planet and caused the death of more than 315,131 patients as of the date of this article. In this context, publishers, journals and researchers are urged to research different domains and stop the spread of this deadly virus. The increasing interest in developing artificial intelligence (AI) applications has addressed several medical problems. However, such applications remain insufficient given the high potential threat posed by this virus to global public health. This systematic review addresses automated AI applications based on data mining and machine learning (ML) algorithms for detecting and diagnosing COVID-19. We aimed to obtain an overview of this critical virus, address the limitations of utilising data mining and ML algorithms, and provide the health sector with the benefits of this technique. We used five databases, namely, IEEE Xplore, Web of Science, PubMed, ScienceDirect and Scopus and performed three sequences of search queries between 2010 and 2020. Accurate exclusion criteria and selection strategy were applied to screen the obtained 1305 articles. Only eight articles were fully evaluated and included in this review, and this number only emphasised the insufficiency of research in this important area. After analysing all included studies, the results were distributed following the year of publication and the commonly used data mining and ML algorithms. The results found in all papers were discussed to find the gaps in all reviewed papers. Characteristics, such as motivations, challenges, limitations, recommendations, case studies, and features and classes used, were analysed in detail. This study reviewed the state-of-the-art techniques for CoV prediction algorithms based on data mining and ML assessment. The reliability and acceptability of extracted information and datasets from implemented technologies in the literature were considered. Findings showed that researchers must proceed with insights they gain, focus on identifying solutions for CoV problems, and introduce new improvements. The growing emphasis on data mining and ML techniques in medical fields can provide the right environment for change and improvement.
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- 2020
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42. Computer-Aided Diagnosis of Anterior Segment Eye Abnormalities using Visible Wavelength Image Analysis Based Machine Learning.
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S.V., Mahesh Kumar and R., Gunasundari
- Subjects
MACHINE learning ,COMPUTER-assisted image analysis (Medicine) ,IMAGE analysis software ,EYE abnormalities ,ANTERIOR eye segment ,DIAGNOSIS ,CATARACT diagnosis ,CORNEA diseases ,ALGORITHMS ,ANALYSIS of variance ,DIAGNOSTIC imaging ,PROBABILITY theory ,DATA analysis software ,DESCRIPTIVE statistics ,COMPUTER-aided diagnosis - Abstract
Eye disease is a major health problem among the elderly people. Cataract and corneal arcus are the major abnormalities that exist in the anterior segment eye region of aged people. Hence, computer-aided diagnosis of anterior segment eye abnormalities will be helpful for mass screening and grading in ophthalmology. In this paper, we propose a multiclass computer-aided diagnosis (CAD) system using visible wavelength (VW) eye images to diagnose anterior segment eye abnormalities. In the proposed method, the input VW eye images are pre-processed for specular reflection removal and the iris circle region is segmented using a circular Hough Transform (CHT)-based approach. The first-order statistical features and wavelet-based features are extracted from the segmented iris circle and used for classification. The Support Vector Machine (SVM) by Sequential Minimal Optimization (SMO) algorithm was used for the classification. In experiments, we used 228 VW eye images that belong to three different classes of anterior segment eye abnormalities. The proposed method achieved a predictive accuracy of 96.96% with 97% sensitivity and 99% specificity. The experimental results show that the proposed method has significant potential for use in clinical applications. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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43. Machine Learning for Health: Algorithm Auditing & Quality Control.
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Oala, Luis, Murchison, Andrew G., Balachandran, Pradeep, Choudhary, Shruti, Fehr, Jana, Leite, Alixandro Werneck, Goldschmidt, Peter G., Johner, Christian, Schörverth, Elora D. M., Nakasi, Rose, Meyer, Martin, Cabitza, Federico, Baird, Pat, Prabhu, Carolin, Weicken, Eva, Liu, Xiaoxuan, Wenzel, Markus, Vogler, Steffen, Akogo, Darlington, and Alsalamah, Shada
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HEALTH care industry ,AUDITING ,COMPUTER software ,MEDICAL databases ,INFORMATION storage & retrieval systems ,MACHINE learning ,ARTIFICIAL intelligence ,DECISION support systems ,QUALITY control ,ALGORITHMS - Abstract
Developers proposing new machine learning for health (ML4H) tools often pledge to match or even surpass the performance of existing tools, yet the reality is usually more complicated. Reliable deployment of ML4H to the real world is challenging as examples from diabetic retinopathy or Covid-19 screening show. We envision an integrated framework of algorithm auditing and quality control that provides a path towards the effective and reliable application of ML systems in healthcare. In this editorial, we give a summary of ongoing work towards that vision and announce a call for participation to the special issue Machine Learning for Health: Algorithm Auditing & Quality Control in this journal to advance the practice of ML4H auditing. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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44. Deep Learning-Based Natural Language Processing in Radiology: The Impact of Report Complexity, Disease Prevalence, Dataset Size, and Algorithm Type on Model Performance.
- Author
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Olthof, A. W., van Ooijen, P. M. A., and Cornelissen, L. J.
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DEEP learning ,CHEST X rays ,NATURAL language processing ,RETROSPECTIVE studies ,DATABASE management ,MEDICAL records ,ARTIFICIAL neural networks ,HOSPITAL radiological services ,COMPUTED tomography ,MEDICAL informatics ,DATA analysis software ,MEDICAL specialties & specialists ,ALGORITHMS - Abstract
In radiology, natural language processing (NLP) allows the extraction of valuable information from radiology reports. It can be used for various downstream tasks such as quality improvement, epidemiological research, and monitoring guideline adherence. Class imbalance, variation in dataset size, variation in report complexity, and algorithm type all influence NLP performance but have not yet been systematically and interrelatedly evaluated. In this study, we investigate these factors on the performance of four types [a fully connected neural network (Dense), a long short-term memory recurrent neural network (LSTM), a convolutional neural network (CNN), and a Bidirectional Encoder Representations from Transformers (BERT)] of deep learning-based NLP. Two datasets consisting of radiologist-annotated reports of both trauma radiographs (n = 2469) and chest radiographs and computer tomography (CT) studies (n = 2255) were split into training sets (80%) and testing sets (20%). The training data was used as a source to train all four model types in 84 experiments (Fracture-data) and 45 experiments (Chest-data) with variation in size and prevalence. The performance was evaluated on sensitivity, specificity, positive predictive value, negative predictive value, area under the curve, and F score. After the NLP of radiology reports, all four model-architectures demonstrated high performance with metrics up to > 0.90. CNN, LSTM, and Dense were outperformed by the BERT algorithm because of its stable results despite variation in training size and prevalence. Awareness of variation in prevalence is warranted because it impacts sensitivity and specificity in opposite directions. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
45. Enhancing Clinical Prediction Performance by Incorporating Intuition.
- Author
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Kartoun, Uri
- Subjects
MACHINE learning ,INTUITION ,DECISION making in clinical medicine ,ALGORITHMS - Abstract
In the article, the author discusses the use of clinical prediction scores to help evaluate patients and improve preventive strategies to protect them. Topics include the use of machine learning algorithms to develop equations on the predicted risk probability for a given patient to improve prediction score performance and clinical decision-making, and some collected data like smoking status, vital signs, and medications.
- Published
- 2021
- Full Text
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46. Correction to: Technology Acceptance of a Machine Learning Algorithm Predicting Delirium in a Clinical Setting: a Mixed-Methods Study.
- Author
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Jauk, Stefanie, Kramer, Diether, Avian, Alexander, Berghold, Andrea, Leodolter, Werner, and Schulz, Stefan
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- *
MACHINE learning , *RISK assessment , *ALGORITHMS ,RISK of delirium - Abstract
A Correction to this paper has been published: https://doi.org/10.1007/s10916-021-01728-5 [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
47. Technology Acceptance of a Machine Learning Algorithm Predicting Delirium in a Clinical Setting: a Mixed-Methods Study.
- Author
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Jauk, Stefanie, Kramer, Diether, Avian, Alexander, Berghold, Andrea, Leodolter, Werner, and Schulz, Stefan
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RISK of delirium ,MEETINGS ,PILOT projects ,INFORMATION storage & retrieval systems ,MEDICAL databases ,ATTITUDES toward computers ,RESEARCH methodology ,MATHEMATICAL models ,MEDICAL technology ,MACHINE learning ,RISK assessment ,PATIENTS' attitudes ,QUALITATIVE research ,DECISION support systems ,NURSES ,THEORY ,QUESTIONNAIRES ,ACCESS to information ,QUALITY assurance ,DESCRIPTIVE statistics ,PHYSICIANS ,PREDICTION models ,RISK management in business ,DATA analysis software ,STATISTICAL correlation ,ALGORITHMS ,DISEASE management - Abstract
Early identification of patients with life-threatening risks such as delirium is crucial in order to initiate preventive actions as quickly as possible. Despite intense research on machine learning for the prediction of clinical outcomes, the acceptance of the integration of such complex models in clinical routine remains unclear. The aim of this study was to evaluate user acceptance of an already implemented machine learning-based application predicting the risk of delirium for in-patients. We applied a mixed methods design to collect opinions and concerns from health care professionals including physicians and nurses who regularly used the application. The evaluation was framed by the Technology Acceptance Model assessing perceived ease of use, perceived usefulness, actual system use and output quality of the application. Questionnaire results from 47 nurses and physicians as well as qualitative results of four expert group meetings rated the overall usefulness of the delirium prediction positively. For healthcare professionals, the visualization and presented information was understandable, the application was easy to use and the additional information for delirium management was appreciated. The application did not increase their workload, but the actual system use was still low during the pilot study. Our study provides insights into the user acceptance of a machine learning-based application supporting delirium management in hospitals. In order to improve quality and safety in healthcare, computerized decision support should predict actionable events and be highly accepted by users. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
48. Different Scenarios for the Prediction of Hospital Readmission of Diabetic Patients.
- Author
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Neto, Cristiana, Senra, Fábio, Leite, Jaime, Rei, Nuno, Rodrigues, Rui, Ferreira, Diana, and Machado, José
- Subjects
ALGORITHMS ,DIABETES ,HOSPITAL care ,MACHINE learning ,MEDICAL quality control ,QUALITY assurance ,DATA mining ,PATIENT readmissions ,DESCRIPTIVE statistics - Abstract
Hospitals generate large amounts of data on a daily basis, but most of the time that data is just an overwhelming amount of information which never transitions to knowledge. Through the application of Data Mining techniques it is possible to find hidden relations or patterns among the data and convert those into knowledge that can further be used to aid in the decision-making of hospital professionals. This study aims to use information about patients with diabetes, which is a chronic (long-term) condition that occurs when the body does not produce enough or any insulin. The main purpose is to help hospitals improve their care with diabetic patients and consequently reduce readmission costs. An hospital readmission is an episode in which a patient discharged from a hospital is admitted again within a specified period of time (usually a 30 day period). This period allows hospitals to verify that their services are being performed correctly and also to verify the costs of these re-admissions. The goal of the study is to predict if a patient who suffers from diabetes will be readmitted, after being discharged, using Machine Leaning algorithms. The final results revealed that the most efficient algorithm was Random Forest with 0.898 of accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
49. Stress Detection via Keyboard Typing Behaviors by Using Smartphone Sensors and Machine Learning Techniques.
- Author
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Sağbaş, Ensar Arif, Korukoglu, Serdar, and Balli, Serkan
- Subjects
ACCELEROMETERS ,ALGORITHMS ,DECISION trees ,KEYBOARDS (Electronics) ,MACHINE learning ,PROBABILITY theory ,PSYCHOLOGICAL stress ,SMARTPHONES ,MOBILE apps ,DESCRIPTIVE statistics - Abstract
Stress is one of the biggest problems in modern society. It may not be possible for people to perceive if they are under high stress or not. It is important to detect stress early and unobtrusively. In this context, stress detection can be considered as a classification problem. In this study, it was investigated the effects of stress by using accelerometer and gyroscope sensor data of the writing behavior on a smartphone touchscreen panel. For this purpose, smartphone data including two states (stress and calm) were collected from 46 participants. The obtained sensor signals were divided into 5, 10 and 15 s interval windows to create three different data sets and 112 different features were defined from the raw data. To obtain more effective feature subsets, these features were ranked by using Gain Ratio feature selection algorithm. Afterwards, writing behaviors were classified by C4.5 Decision Trees, Bayesian Networks and k-Nearest Neighbor methods. As a result of the experiments, 74.26%, 67.86%, and 87.56% accuracy classification results were obtained respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
50. A Scalable Smartwatch-Based Medication Intake Detection System Using Distributed Machine Learning.
- Author
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Fozoonmayeh, Donya, Le, Hai Vu, Wittfoth, Ekaterina, Geng, Chong, Ha, Natalie, Wang, Jingjue, Vasilenko, Maria, Ahn, Yewon, and Woodbridge, Diane Myung-kyung
- Subjects
ALGORITHMS ,DRUGS ,INFORMATION storage & retrieval systems ,MACHINE learning ,PATIENT compliance ,RESEARCH funding ,SYSTEMS design ,WEARABLE technology ,CLOUD computing ,MOBILE apps ,INTERNET of things - Abstract
Poor Medication adherence causes significant economic impact resulting in hospital readmission, hospital visits and other healthcare costs. The authors developed a smartwatch application and a cloud based data pipeline for developing a user-friendly medication intake monitoring system that can contribute to improving medication adherence. The developed Android smartwatch application collects activity sensor data using accelerometer and gyroscope. The cloud-based data pipeline includes distributed data storage, distributed database management system and distributed computing frameworks in order to build a machine learning model which identifies activity types using sensor data. With the proposed sensor data extraction, preprocessing and machine learning algorithms, this study successfully achieved a high F1 score of 0.977 with 13.313 seconds of training time and 0.139 seconds for testing. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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