9 results on '"Hasan, Khondokar Fida"'
Search Results
2. Explainable Artificial Intelligence for Smart City Application: A Secure and Trusted Platform
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Kabir, M. Humayun, Hasan, Khondokar Fida, Hasan, Mohammad Kamrul, Ansari, Keyvan, Kacprzyk, Janusz, Series Editor, Ahmed, Mohiuddin, editor, Islam, Sheikh Rabiul, editor, Anwar, Adnan, editor, Moustafa, Nour, editor, and Pathan, Al-Sakib Khan, editor
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- 2022
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3. A robust and clinically applicable deep learning model for early detection of Alzheimer's.
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Rana, Md Masud, Islam, Md Manowarul, Talukder, Md. Alamin, Uddin, Md Ashraf, Aryal, Sunil, Alotaibi, Naif, Alyami, Salem A., Hasan, Khondokar Fida, and Moni, Mohammad Ali
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ALZHEIMER'S disease ,DEEP learning ,MACHINE learning ,NEURODEGENERATION ,ARTIFICIAL intelligence ,THERAPEUTICS - Abstract
Alzheimer's disease, often known as dementia, is a severe neurodegenerative disorder that causes irreversible memory loss by destroying brain cells. People die because there is no specific treatment for this disease. Alzheimer's is most common among seniors 65 years and older. However, the progress of this disease can be reduced if it can be diagnosed earlier. Recently, artificial intelligence has instilled hope in the diagnosis of Alzheimer's disease by performing sophisticated analyses on extensive patient datasets, enabling the identification of subtle patterns that may elude human experts. Researchers have investigated various deep learning and machine learning models to diagnose this disease at an early stage using image datasets. In this paper, a new Deep learning (DL) methodology is proposed, where MRI images are fed into the model after applying various pre‐processing techniques. The proposed Alzheimer's disease detection approach adopts transfer learning for multi‐class classification using brain MRIs. The MRI Images are classified into four categories: mild dementia (MD), moderate dementia (MOD), very mild dementia (VMD), and non‐dementia (ND). The model is implemented and extensive performance analysis is performed. The finding shows that the model obtains 97.31% accuracy. The model outperforms the state‐of‐the‐art models in terms of accuracy, precision, recall, and F‐score. [ABSTRACT FROM AUTHOR]
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- 2023
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4. Efficient Machine Learning Models for Early Stage Detection of Autism Spectrum Disorder.
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Bala, Mousumi, Ali, Mohammad Hanif, Satu, Md. Shahriare, Hasan, Khondokar Fida, and Moni, Mohammad Ali
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AUTISM spectrum disorders ,MACHINE learning ,ARTIFICIAL intelligence ,OBJECT recognition (Computer vision) ,FEATURE selection ,SUPPORT vector machines - Abstract
Autism spectrum disorder (ASD) is a neurodevelopmental disorder that severely impairs an individual's cognitive, linguistic, object recognition, communication, and social abilities. This situation is not treatable, although early detection of ASD can assist to diagnose and take proper steps for mitigating its effect. Using various artificial intelligence (AI) techniques, ASD can be detected an at earlier stage than with traditional methods. The aim of this study was to propose a machine learning model that investigates ASD data of different age levels and to identify ASD more accurately. In this work, we gathered ASD datasets of toddlers, children, adolescents, and adults and used several feature selection techniques. Then, different classifiers were applied into these datasets, and we assessed their performance with evaluation metrics including predictive accuracy, kappa statistics, the f1-measure, and AUROC. In addition, we analyzed the performance of individual classifiers using a non-parametric statistical significant test. For the toddler, child, adolescent, and adult datasets, we found that Support Vector Machine (SVM) performed better than other classifiers where we gained 97.82% accuracy for the RIPPER-based toddler subset; 99.61% accuracy for the Correlation-based feature selection (CFS) and Boruta CFS intersect (BIC) method-based child subset; 95.87% accuracy for the Boruta-based adolescent subset; and 96.82% accuracy for the CFS-based adult subset. Then, we applied the Shapley Additive Explanations (SHAP) method into different feature subsets, which gained the highest accuracy and ranked their features based on the analysis. [ABSTRACT FROM AUTHOR]
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- 2022
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5. A dependable hybrid machine learning model for network intrusion detection.
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Talukder, Md. Alamin, Hasan, Khondokar Fida, Islam, Md. Manowarul, Uddin, Md. Ashraf, Akhter, Arnisha, Yousuf, Mohammand Abu, Alharbi, Fares, and Moni, Mohammad Ali
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MACHINE learning , *INFORMATION & communication technologies , *INTERNET of things , *DEEP learning , *ARTIFICIAL neural networks - Abstract
Network intrusion detection systems (NIDSs) play an important role in computer network security. There are several detection mechanisms where anomaly-based automated detection outperforms others significantly. Amid the sophistication and growing number of attacks, dealing with large amounts of data is a recognized issue in the development of anomaly-based NIDS. However, do current models meet the needs of today's networks in terms of required accuracy and dependability? In this research, we propose a new hybrid model that combines machine learning and deep learning to increase detection rates while securing dependability. Our proposed method ensures efficient pre-processing by combining SMOTE for data balancing and XGBoost for feature selection. We compared our developed method to various machine learning and deep learning algorithms in order to find a more efficient algorithm to implement in the pipeline. Furthermore, we chose the most effective model for network intrusion based on a set of benchmarked performance analysis criteria. Our method produces excellent results when tested on two datasets, KDDCUP'99 and CIC-MalMem-2022, with an accuracy of 99.99% and 100% for KDDCUP'99 and CIC-MalMem-2022, respectively, and no overfitting or Type-1 and Type-2 issues. • Introduced a hybrid machine learning model to enhance network intrusion detection. • Incorporating SMOTE for data balancing and XGBoost for important feature selection. • Proved reliability in intrusion detection by interpreting the dependability analysis. • Superior to other existing models in detecting network intrusion effectively. [ABSTRACT FROM AUTHOR]
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- 2023
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6. Robust clinical applicable CNN and U-Net based algorithm for MRI classification and segmentation for brain tumor.
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Akter, Atika, Nosheen, Nazeela, Ahmed, Sabbir, Hossain, Mariom, Yousuf, Mohammad Abu, Almoyad, Mohammad Ali Abdullah, Hasan, Khondokar Fida, and Moni, Mohammad Ali
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BRAIN tumors , *IMAGE segmentation , *CONVOLUTIONAL neural networks , *DEEP learning , *IMAGE recognition (Computer vision) , *CLASSIFICATION algorithms , *MAGNETIC resonance imaging - Abstract
Early diagnosis of brain tumors is critical for enhancing patient prognosis and treatment options, while accurate classification and segmentation of brain tumors are vital for developing personalized treatment strategies. Despite the widespread use of Magnetic Resonance Imaging (MRI) for brain examination and advances in AI-based detection methods, building an accurate and efficient model for detecting and categorizing tumors from MRI images remains a challenge. To address this problem, we proposed a deep Convolutional Neural Network (CNN)-based architecture for automatic brain image classification into four classes and a U-Net-based segmentation model. Using six benchmarked datasets, we tested the classification model and trained the segmentation model, enabling side-by-side comparison of the impact of segmentation on tumor classification in brain MRI images. We also evaluated two classification methods based on accuracy, recall, precision, and AUC. Our developed novel deep learning-based model for brain tumor classification and segmentation outperforms existing pre-trained models across all six datasets. The results demonstrate that our classification model achieved the highest accuracy of 98.7% in a merged dataset and 98.8% with the segmentation approach, with the highest classification accuracy reaching 97.7% among the four individual datasets. Thus, this novel framework could be applicable in clinics for the automatic identification and segmentation of brain tumors utilizing MRI scan input images. • Brain tumor type depends on complex intercellular structures. • Classification of full brain MRI requires more time and resources. • Classification of segmented tumor images requires additional computational complexity. • Brain tumor classification into four classes (Glioma, meningioma, pituitary, no tumor). • CNN-based classification model and U-Net-based segmentation model implementation. [ABSTRACT FROM AUTHOR]
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- 2024
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7. An efficient deep learning model to categorize brain tumor using reconstruction and fine-tuning.
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Talukder, Md. Alamin, Islam, Md. Manowarul, Uddin, Md. Ashraf, Akhter, Arnisha, Pramanik, Md. Alamgir Jalil, Aryal, Sunil, Almoyad, Muhammad Ali Abdulllah, Hasan, Khondokar Fida, and Moni, Mohammad Ali
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DEEP learning , *BRAIN tumors , *MACHINE learning , *CANCER diagnosis , *BUILDING repair - Abstract
Brain tumors are among the most fatal and devastating diseases, often resulting in significantly reduced life expectancy. An accurate diagnosis of brain tumors is crucial to devise treatment plans that can extend the lives of affected individuals. Manually identifying and analyzing large volumes of MRI data is both challenging and time-consuming. Consequently, there is a pressing need for a reliable deep learning (DL) model to accurately diagnose brain tumors. In this study, we propose a novel DL approach based on transfer learning to effectively classify brain tumors. Our novel method incorporates extensive pre-processing, transfer learning architecture reconstruction, and fine-tuning. We employ several transfer learning algorithms, including Xception, ResNet50V2, InceptionResNetV2, and DenseNet201. Our experiments used the Figshare MRI brain tumor dataset, comprising 3,064 images, and achieved accuracy scores of 99.40%, 99.68%, 99.36%, and 98.72% for Xception, ResNet50V2, InceptionResNetV2, and DenseNet201, respectively. Our findings reveal that ResNet50V2 achieves the highest accuracy rate of 99.68% on the Figshare MRI brain tumor dataset, outperforming existing models. Therefore, our proposed model's ability to accurately classify brain tumors in a short timeframe can aid neurologists and clinicians in making prompt and precise diagnostic decisions for brain tumor patients. • Proposed a cutting-edge deep learning model to accurately classify brain tumor. • Integrated the reconstruction and fine-tuning to build an improved prediction model. • The favorable categorization rate for brain tumors reduces the likelihood of fatality. [ABSTRACT FROM AUTHOR]
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- 2023
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8. GRU-INC: An inception-attention based approach using GRU for human activity recognition.
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Mim, Taima Rahman, Amatullah, Maliha, Afreen, Sadia, Yousuf, Mohammad Abu, Uddin, Shahadat, Alyami, Salem A., Hasan, Khondokar Fida, and Moni, Mohammad Ali
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HUMAN activity recognition , *MACHINE learning , *DEEP learning , *FEATURE extraction , *EXTRACTION techniques - Abstract
Human Activity Recognition (HAR) is very useful for the clinical applications, and many machine learning algorithms have been successfully implemented to achieve high-performance results. Although handcrafted feature extraction techniques were used in the past, Artificial Neural Network (ANN) is now more popular. In this work, a model has been proposed called Gated Recurrent Unit-Inception (GRU-INC) model has been proposed, which is an Inception-Attention based approach using Gated Recurrent Unit (GRU) that effectively makes use of the temporal and spatial information of the time-series data. The proposed model achieved an F1-score of 96.27%, 90.05%, 90.30%, 99.12%, and 95.99% on the publicly available datasets such as, UCI-HAR, OPPORTUNITY, PAMAP2, WISDM, and Daphnet, respectively. GRU along with Attention Mechanism (AM) was utilized for the temporal part, and Inception module along with Convolutional Block Attention Module (CBAM) was exploited for the spatial part of the model. The proposed architecture was evaluated against state-of-the-art models and similar works. It has been proved that the GRU-INC model has a higher recognition rate as well as lower computational cost. Thus our framework could be applicable in activity associated clinical and rehabilitation applications. • A GRU-Inception based deep learning model to identify human activities. • Attention mechanism is incorporated with GRU to improve temporal feature extraction. • Inception modules along with a CBAM block further highlights the spatial features. • The model is relatively wider rather than a deep structure thus reducing complexity. [ABSTRACT FROM AUTHOR]
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- 2023
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9. Machine learning-based lung and colon cancer detection using deep feature extraction and ensemble learning.
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Talukder, Md. Alamin, Islam, Md. Manowarul, Uddin, Md Ashraf, Akhter, Arnisha, Hasan, Khondokar Fida, and Moni, Mohammad Ali
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FEATURE extraction , *LUNG cancer , *DEEP learning , *MACHINE learning , *COLON cancer , *GENETIC disorders - Abstract
Cancer is a fatal disease caused by a combination of genetic diseases and a variety of biochemical abnormalities. Lung and colon cancer have emerged as two of the leading causes of death and disability in humans. The histopathological detection of such malignancies is usually the most important component in determining the best course of action. Early detection of the ailment on either front considerably decreases the likelihood of mortality. Machine learning and deep learning techniques can be utilized to speed up such cancer detection, allowing researchers to study a large number of patients in a much shorter amount of time and at a lower cost. In this research work, we introduced a hybrid ensemble feature extraction model to efficiently identify lung and colon cancer. It integrates deep feature extraction and ensemble learning with high-performance filtering for cancer image datasets. The model is evaluated on histopathological (LC25000) lung and colon datasets. According to the study findings, our hybrid model can detect lung, colon, and (lung and colon) cancer with accuracy rates of 99.05%, 100%, and 99.30%, respectively. The study's findings show that our proposed strategy outperforms existing models significantly. Thus, these models could be applicable in clinics to support the doctor in the diagnosis of cancers. • A hybrid ensemble model to efficiently identify lung and colon cancer is introduced. • Anticipated deep feature extraction to extract features from cancer datasets. • An ensemble strategy is evolved to build a robust detection model. • The optimistic detection rate of cancer prevents the odds of mortality. [ABSTRACT FROM AUTHOR]
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- 2022
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