444 results on '"Webserver"'
Search Results
2. Sequence Flow: interactive web application for visualizing partial order alignments.
- Author
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Zdąbłasz, Krzysztof, Lisiecka, Anna, and Dojer, Norbert
- Subjects
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WEB-based user interfaces , *COMPUTER software developers , *SEQUENCE alignment , *WEB design , *PROTEIN structure - Abstract
Background: Multiple sequence alignment (MSA) has proven extremely useful in computational biology, especially in inferring evolutionary relationships via phylogenetic analysis and providing insight into protein structure and function. An alternative to the standard MSA model is partial order alignment (POA), in which aligned sequences are represented as paths in a graph rather than rows in a matrix. While the POA model has proven useful in several applications (e.g. sequencing reads assembly and pangenome structure exploration), we lack efficient visualization tools that could highlight its advantages. Results: We propose Sequence Flow – a web application designed to address the above problem. Sequence Flow presents the POA as a Sankey diagram, a kind of graph visualisation typically used for graphs representing flowcharts. Sequence Flow enables interactive alignment exploration, including fragment selection, highlighting a selected group of sequences, modification of the position of graph nodes, structure simplification etc. After adjustment, the visualization can be saved as a high-quality graphic file. Thanks to the use of SanKEY.js – a JavaScript library for creating Sankey diagrams, designed specifically to visualize POAs, Sequence Flow provides satisfactory performance even with large alignments. Conclusions: We provide Sankey diagram-based POA visualization tools for both end users (Sequence Flow) and bioinformatic software developers (SanKEY.js). Sequence Flow webservice is available at https://sequenceflow.mimuw.edu.pl/. The source code for SanKEY.js is available at https://github.com/Krzysiekzd/SanKEY.js and for Sequence Flow at https://github.com/Krzysiekzd/SequenceFlow. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Analysis of mutations in precision oncology using the automated, accurate, and user-friendly web tool PredictONCO
- Author
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Rayyan Tariq Khan, Petra Pokorna, Jan Stourac, Simeon Borko, Adam Dobias, Joan Planas-Iglesias, Stanislav Mazurenko, Ihor Arefiev, Gaspar Pinto, Veronika Szotkowska, Jaroslav Sterba, Jiri Damborsky, Ondrej Slaby, and David Bednar
- Subjects
Precision oncology ,Webserver ,Mutation ,Prediction ,Treatment ,Next-generation sequencing ,Biotechnology ,TP248.13-248.65 - Abstract
Next-generation sequencing technology has created many new opportunities for clinical diagnostics, but it faces the challenge of functional annotation of identified mutations. Various algorithms have been developed to predict the impact of missense variants that influence oncogenic drivers. However, computational pipelines that handle biological data must integrate multiple software tools, which can add complexity and hinder non-specialist users from accessing the pipeline. Here, we have developed an online user-friendly web server tool PredictONCO that is fully automated and has a low barrier to access. The tool models the structure of the mutant protein in the first step. Next, it calculates the protein stability change, pocket level information, evolutionary conservation, and changes in ionisation of catalytic amino acid residues, and uses them as the features in the machine-learning predictor. The XGBoost-based predictor was validated on an independent subset of held-out data, demonstrating areas under the receiver operating characteristic curve (ROC) of 0.97 and 0.94, and the average precision from the precision-recall curve of 0.99 and 0.94 for structure-based and sequence-based predictions, respectively. Finally, PredictONCO calculates the docking results of small molecules approved by regulatory authorities. We demonstrate the applicability of the tool by presenting its usage for variants in two cancer-associated proteins, cellular tumour antigen p53 and fibroblast growth factor receptor FGFR1. Our free web tool will assist with the interpretation of data from next-generation sequencing and navigate treatment strategies in clinical oncology: https://loschmidt.chemi.muni.cz/predictonco/.
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- 2024
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4. DeepNeuropePred: A robust and universal tool to predict cleavage sites from neuropeptide precursors by protein language model
- Author
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Lei Wang, Zilu Zeng, Zhidong Xue, and Yan Wang
- Subjects
Neuropeptides ,Deep learning ,Protein language model ,Webserver ,Biotechnology ,TP248.13-248.65 - Abstract
Neuropeptides play critical roles in many biological processes such as growth, learning, memory, metabolism, and neuronal differentiation. A few approaches have been reported for predicting neuropeptides that are cleaved from precursor protein sequences. However, these models for cleavage site prediction of precursors were developed using a limited number of neuropeptide precursor datasets and simple precursors representation models. In addition, a universal method for predicting neuropeptide cleavage sites that can be applied to all species is still lacking. In this paper, we proposed a novel deep learning method called DeepNeuropePred, using a combination of pre-trained language model and Convolutional Neural Networks for feature extraction and predicting the neuropeptide cleavage sites from precursors. To demonstrate the model’s effectiveness and robustness, we evaluated the performance of DeepNeuropePred and four models from the NeuroPred server in the independent dataset and our model achieved the highest AUC score (0.916), which are 6.9%, 7.8%, 8.8%, and 10.9% higher than Mammalian (0.857), insects (0.850), Mollusc (0.842) and Motif (0.826), respectively. For the convenience of researchers, we provide a web server (http://isyslab.info/NeuroPepV2/deepNeuropePred.jsp).
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- 2024
- Full Text
- View/download PDF
5. Sequence Flow: interactive web application for visualizing partial order alignments
- Author
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Krzysztof Zdąbłasz, Anna Lisiecka, and Norbert Dojer
- Subjects
Multiple sequence alignment ,Partial order alignment ,Sankey diagram ,Webserver ,Biotechnology ,TP248.13-248.65 ,Genetics ,QH426-470 - Abstract
Abstract Background Multiple sequence alignment (MSA) has proven extremely useful in computational biology, especially in inferring evolutionary relationships via phylogenetic analysis and providing insight into protein structure and function. An alternative to the standard MSA model is partial order alignment (POA), in which aligned sequences are represented as paths in a graph rather than rows in a matrix. While the POA model has proven useful in several applications (e.g. sequencing reads assembly and pangenome structure exploration), we lack efficient visualization tools that could highlight its advantages. Results We propose Sequence Flow – a web application designed to address the above problem. Sequence Flow presents the POA as a Sankey diagram, a kind of graph visualisation typically used for graphs representing flowcharts. Sequence Flow enables interactive alignment exploration, including fragment selection, highlighting a selected group of sequences, modification of the position of graph nodes, structure simplification etc. After adjustment, the visualization can be saved as a high-quality graphic file. Thanks to the use of SanKEY.js – a JavaScript library for creating Sankey diagrams, designed specifically to visualize POAs, Sequence Flow provides satisfactory performance even with large alignments. Conclusions We provide Sankey diagram-based POA visualization tools for both end users (Sequence Flow) and bioinformatic software developers (SanKEY.js). Sequence Flow webservice is available at https://sequenceflow.mimuw.edu.pl/ . The source code for SanKEY.js is available at https://github.com/Krzysiekzd/SanKEY.js and for Sequence Flow at https://github.com/Krzysiekzd/SequenceFlow .
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- 2024
- Full Text
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6. m7GRegpred: substrate prediction of N7-methylguanosine (m7G) writers and readers based on sequencing features.
- Author
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Yu Zheng, Haipeng Li, and Shaofeng Lin
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RNA modification & restriction ,BIOCHEMICAL substrates ,GENETIC translation ,ALGORITHMS ,MACHINE learning - Abstract
N7-Methylguanosine (m7G) is important RNA modification at internal and the cap structure of five terminal end of message RNA. It is essential for RNA stability of RNA, the efficiency of translation, and various intracellular RNA processing pathways. Given the significance of the m7G modification, numerous studies have been conducted to predict m7G sites. To further elucidate the regulatory mechanisms surrounding m7G, we introduce a novel bioinformatics framework, m7GRegpred, designed to forecast the targets of the m7G methyltransferases METTL1 and WDR4, and m7G readers QKI5, QKI6, and QKI7 for the first time. We integrated different features to build predictors, with AUROC scores of 0.856, 0.857, 0.780, 0.776, 0.818 for METTL1, WDR4, QKI5, QKI6, and QKI7, respectively. In addition, the effect of window lengths and algorism were systemically evaluated in this work. The finial model was summarized in a user-friendly webserver: http://modinfor.com/m7GRegpred/. Our research indicates that the substrates of m7G regulators can be identified and may potentially advance the study of m7G regulators under unique conditions. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Multiple Protein Profiler 1.0 (MPP): A Webserver for Predicting and Visualizing Physiochemical Properties of Proteins at the Proteome Level.
- Author
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Sganzerla Martinez, Gustavo, Dutt, Mansi, Kumar, Anuj, and Kelvin, David J
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PROTEINS , *MOLECULES , *BIOINFORMATICS , *FORECASTING , *INTERNET servers - Abstract
Determining the physicochemical properties of a protein can reveal important insights in their structure, biological functions, stability, and interactions with other molecules. Although tools for computing properties of proteins already existed, we could not find a comprehensive tool that enables the calculations of multiple properties for multiple input proteins on the proteome level at once. Facing this limitation, we developed Multiple Protein Profiler (MPP) 1.0 as an integrated tool that allows the profiling of 12 individual properties of multiple proteins in a significant manner. MPP provides a tabular and graphic visualization of properties of multiple proteins. The tool is freely accessible at https://mproteinprofiler.microbiologyandimmunology.dal.ca/. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Design and Development of Immersive Vision Drone
- Author
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Narendra, Meda, Tharun, Seemakurthi, Goud, Rolla Shiva, Krishna, Duggempudi Bala, Sindhwani, Manoj, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Jiming, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Zhang, Junjie James, Series Editor, Tan, Kay Chen, Series Editor, Kumar, Shailendra, editor, Tripathy, Manoj, editor, and Jena, Premalata, editor
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- 2024
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9. Toward Sustainable Smart Cities: Smart Water Quality Monitoring System Based on IoT Technology
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Teng, Lee Mei, Yusoff, Khairul Huda, Mohammed, M. N., Jameel Al-Tamimi, Adnan N., Sapari, Norazliani Md, Alfiras, M., Kacprzyk, Janusz, Series Editor, Hamdan, Allam, editor, and Aldhaen, Esra Saleh, editor
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- 2024
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10. Local and Remote Control and Monitoring Through SmartClient and WebServer of an Industrial Network of an S7-1200 and a LOGO! PLC Based on the Industrial Ethernet Protocol for Electro-Pneumatic Processes.
- Author
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Sánchez-Ocaña1, Wilson, Loza-Herrera, Washington, Cabezas-Montero, Daniel, and Salazar-Jácome, Elizabeth
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REMOTE control ,ETHERNET ,INDUSTRIAL design ,BUSINESS communication ,DISCRETE systems ,INTERNET servers - Abstract
This research contains the design of an Industrial Network using the Industrial Ethernet-based communication protocol (Profinet) applied to the electro-pneumatic control of a distributed system of discrete processes, with the purpose of establishing a send/receive of data between an S7-1200 controller that acts as a server and two LOGO controllers that act as clients. For this network, local monitoring was established through a TP-700 screen, which is linked to the Siemens Sm@rt Client application, which allows monitoring processes from a Pc System and a smartphone mobile device, while activating the WebServer in the controller, which is a server to control and monitor processes on the web. From the study carried out, it is concluded that Profinet is an Ethernet protocol that allows the transfer of data in real time, which is suitable for applications that require a fast response. This protocol uses an industrial Ethernet network that supports high speeds, recommended for applications of high complexity. An important aspect to consider when deploying both the Sm@rt Client application and the WebServer is that they must be connected either wirelessly or by Ethernet cable to the intranet where the processes are implemented in order to ensure that the two applications work correctly. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. MHCII-peptide presentation: an assessment of the state-of-theart prediction methods.
- Author
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Yaqing Yang, Zhonghui Wei, Gabriel Cia, Xixi Song, Pucci, Fabrizio, Rooman, Marianne, Fuzhong Xue, and Qingzhen Hou
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MACHINE learning ,MAJOR histocompatibility complex ,DNA-binding proteins ,DEEP learning ,CANCER vaccines ,DATABASES - Abstract
Major histocompatibility complex Class II (MHCII) proteins initiate and regulate immune responses by presentation of antigenic peptides to CD4+ T-cells and self-restriction. The interactions between MHCII and peptides determine the specificity of the immune response and are crucial in immunotherapy and cancer vaccine design. With the ever-increasing amount of MHCII-peptide binding data available, many computational approaches have been developed for MHCIIpeptide interaction prediction over the last decade. There is thus an urgent need to provide an up-to-date overview and assessment of these newly developed computational methods. To benchmark the prediction performance of these methods, we constructed an independent dataset containing binding and nonbinding peptides to 20 human MHCII protein allotypes from the Immune Epitope Database, covering DP, DR and DQ alleles. After collecting 11 known predictors up to January 2022, we evaluated those available through a webserver or standalone packages on this independent dataset. The benchmarking results show that MixMHC2pred and NetMHCIIpan-4.1 achieve the best performance among all predictors. In general, newly developed methods perform better than older ones due to the rapid expansion of data on which they are trained and the development of deep learning algorithms. Our manuscript not only draws a full picture of the state-of-art of MHCII-peptide binding prediction, but also guides researchers in the choice among the different predictors. More importantly, it will inspire biomedical researchers in both academia and industry for the future developments in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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12. SoftVoting6mA: An improved ensemble-based method for predicting DNA N6-methyladenine sites in cross-species genomes
- Author
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Zhaoting Yin, Jianyi Lyu, Guiyang Zhang, Xiaohong Huang, Qinghua Ma, and Jinyun Jiang
- Subjects
dna n6-methyladenine ,convolution neural network ,soft voting ,cross-species ,feature fusion ,webserver ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
The DNA N6-methyladenine (6mA) is an epigenetic modification, which plays a pivotal role in biological processes encompassing gene expression, DNA replication, repair, and recombination. Therefore, the precise identification of 6mA sites is fundamental for better understanding its function, but challenging. We proposed an improved ensemble-based method for predicting DNA N6-methyladenine sites in cross-species genomes called SoftVoting6mA. The SoftVoting6mA selected four (electron–ion-interaction pseudo potential, One-hot encoding, Kmer, and pseudo dinucleotide composition) codes from 15 types of encoding to represent DNA sequences by comparing their performances. Similarly, the SoftVoting6mA combined four learning algorithms using the soft voting strategy. The 5-fold cross-validation and the independent tests showed that SoftVoting6mA reached the state-of-the-art performance. To enhance accessibility, a user-friendly web server is provided at http://www.biolscience.cn/SoftVoting6mA/.
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- 2024
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13. MHCII-peptide presentation: an assessment of the state-of-the-art prediction methods.
- Author
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Yaqing Yang, Zhonghui Wei, Gabriel Cia, Xixi Song, Fabrizio Pucci, Marianne Rooman, Fuzhong Xue, and Qingzhen Hou
- Subjects
MACHINE learning ,MAJOR histocompatibility complex ,DNA-binding proteins ,DEEP learning ,CANCER vaccines ,DATABASES - Abstract
Major histocompatibility complex Class II (MHCII) proteins initiate and regulate immune responses by presentation of antigenic peptides to CD4+ T-cells and self-restriction. The interactions between MHCII and peptides determine the specificity of the immune response and are crucial in immunotherapy and cancer vaccine design. With the ever-increasing amount of MHCII-peptide binding data available, many computational approaches have been developed for MHCII-peptide interaction prediction over the last decade. There is thus an urgent need to provide an up-to-date overview and assessment of these newly developed computational methods. To benchmark the prediction performance of these methods, we constructed an independent dataset containing binding and non-binding peptides to 20 human MHCII protein allotypes from the Immune Epitope Database, covering DP, DR and DQ alleles. After collecting 11 known predictors up to January 2022, we evaluated those available through a webserver or standalone packages on this independent dataset. The benchmarking results show that MixMHC2pred and NetMHCIIpan-4.1 achieve the best performance among all predictors. In general, newly developed methods perform better than older ones due to the rapid expansion of data on which they are trained and the development of deep learning algorithms. Our manuscript not only draws a full picture of the state-of-art of MHCII-peptide binding prediction, but also guides researchers in the choice among the different predictors. More importantly, it will inspire biomedical researchers in both academia and industry for the future developments in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
14. FormulationAI: a novel web-based platform for drug formulation design driven by artificial intelligence.
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Dong, Jie, Wu, Zheng, Xu, Huanle, and Ouyang, Defang
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DRUG design , *ARTIFICIAL intelligence , *DRUG discovery , *CYCLODEXTRINS , *DRUG development , *DRUG delivery systems - Abstract
Today, pharmaceutical industry faces great pressure to employ more efficient and systematic ways in drug discovery and development process. However, conventional formulation studies still strongly rely on personal experiences by trial-and-error experiments, resulting in a labor-consuming, tedious and costly pipeline. Thus, it is highly required to develop intelligent and efficient methods for formulation development to keep pace with the progress of the pharmaceutical industry. Here, we developed a comprehensive web-based platform (FormulationAI) for in silico formulation design. First, the most comprehensive datasets of six widely used drug formulation systems in the pharmaceutical industry were collected over 10 years, including cyclodextrin formulation, solid dispersion, phospholipid complex, nanocrystals, self-emulsifying and liposome systems. Then, intelligent prediction and evaluation of 16 important properties from the six systems were investigated and implemented by systematic study and comparison of different AI algorithms and molecular representations. Finally, an efficient prediction platform was established and validated, which enables the formulation design just by inputting basic information of drugs and excipients. FormulationAI is the first freely available comprehensive web-based platform, which provides a powerful solution to assist the formulation design in pharmaceutical industry. It is available at https://formulationai.computpharm.org/. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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15. The Monitoring System of Soil PH Factor Using IoT-Webserver-Android and Machine Learning: A Case Study.
- Author
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Sumarsono, Farida Afiatna, Fatma Ayu Nuning, and Muflihah, Nur
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SOIL acidity ,MACHINE learning ,ARDUINO (Microcontroller) ,DATABASES ,WEBSITES ,AGRICULTURAL technology - Abstract
In Indonesia, the agriculture industry has been more reluctant than other sectors to adopt IoT, IT, and AI technology. Utilizing this technology will enable precision agriculture. This research aims to make and implement an IoT-Webserver-Android and Machine Learning-based soil PH factor monitoring tool system. The steps for making the tool system are divided into three subsystems. The first is a multiple sensors data acquisition subsystem, consisting of sensors for soil PH-Moisture, Temperature-Humidity, and Sunlight. The sensors are connected to the Arduino Uno microcontroller for serial communication with the ESP 8266 microcontroller for the Wi-Fi module. The second part is the monitoring subsystem with the local web application, which contains a MySQL database and a local web page. The third part is the monitoring subsystem with the Android application, which includes a real-time Firebase database and the application for real-time and mobile data display. The results have been implemented and display the expected outcomes. It is clear from the performance of the three subsystems. The outcomes of the tool system's data evaluation provide precise statistical values. Then, Machine Learning analysis generates accurate soil PH prediction models. It has been demonstrated that the monitoring system is applicable and has a favorable impact on data soil PH factor. The implication for the future is that this monitoring system should be added with Nitrogen-Phosphorus-Potassium sensors to measure soil nutrients. Also, the system added edge-analysis to be integrated in monitoring and analyzing soil nutrients. [ABSTRACT FROM AUTHOR]
- Published
- 2024
16. mtDNA analysis using Mitopore
- Author
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Jochen Dobner, Thach Nguyen, Mario Gustavo Pavez-Giani, Lukas Cyganek, Felix Distelmaier, Jean Krutmann, Alessandro Prigione, and Andrea Rossi
- Subjects
mtDNA analysis ,long-read sequencing ,clinical mtDNA diagnosis ,haplogroups ,webserver ,forensic mtDNA analysis ,Genetics ,QH426-470 ,Cytology ,QH573-671 - Abstract
Mitochondrial DNA (mtDNA) analysis is crucial for the diagnosis of mitochondrial disorders, forensic investigations, and basic research. Existing pipelines are complex, expensive, and require specialized personnel. In many cases, including the diagnosis of detrimental single nucleotide variants (SNVs), mtDNA analysis is still carried out using Sanger sequencing. Here, we developed a simple workflow and a publicly available webserver named Mitopore that allows the detection of mtDNA SNVs, indels, and haplogroups. To simplify mtDNA analysis, we tailored our workflow to process noisy long-read sequencing data for mtDNA analysis, focusing on sequence alignment and parameter optimization. We implemented Mitopore with eliBQ (eliminate bad quality reads), an innovative quality enhancement that permits the increase of per-base quality of over 20% for low-quality data. The whole Mitopore workflow and webserver were validated using patient-derived and induced pluripotent stem cells harboring mtDNA mutations. Mitopore streamlines mtDNA analysis as an easy-to-use fast, reliable, and cost-effective analysis method for both long- and short-read sequencing data. This significantly enhances the accessibility of mtDNA analysis and reduces the cost per sample, contributing to the progress of mtDNA-related research and diagnosis.
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- 2024
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17. TELER Performance as Real-Time Intrusion Detection and Threat Alert Based on Web Log-In Detecting Directory Bruteforce Attacks on Websites
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Rio Darmawan, Bita Parga Zen, and Rianti Yunita Kisworini
- Subjects
bruteforce ,ids ,teler ,threat alert ,webserver ,Military Science - Abstract
TELER is a real-time intrusion detection and weblog-based alerting tool that runs on the terminal. TELER is designed to be a fast terminal-based threat analyzer. The IDS (intrusion detection system) is needed to help web administrators secure their servers. This study aims to test the TELER performance as real-time intrusion detection and threat alert. This study tries to implement an open-source application called TELER based on Golang. The IDS testing method on the web server this time uses directory brute force with the result that TELER can detect an attack and provide prompt notification to the web administrator when an attack occurs on the web server. The result of this study shows that the TELER successfully sent notifications to the Telegram, Discord, and Slack applications when an attack or intrusion occurs. Based on the experiments conducted in this study, Slack is the most effective application for receiving directory brute-force attack notifications. The average time for Slack to receive attack information is 0.03 seconds. TELER was successfully proven to detect cyberattacks.
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- 2023
- Full Text
- View/download PDF
18. Scaling up. Daten und Skripte organisieren
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Jünger, Jakob, Gärtner, Chantal, Jünger, Jakob, and Gärtner, Chantal
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- 2023
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19. LCK-SafeScreen-Model: An Advanced Ensemble Machine Learning Approach for Estimating the Binding Affinity between Compounds and LCK Target.
- Author
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Cheng, Ying, Ji, Cong, Xu, Jun, Chen, Roufen, Guo, Yu, Bian, Qingyu, Shen, Zheyuan, and Zhang, Bo
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MACHINE learning , *DNA fingerprinting , *MOLECULAR docking , *ESTIMATION theory , *MACHINE design , *HUMAN fingerprints - Abstract
The lymphocyte-specific protein tyrosine kinase (LCK) is a critical target in leukemia treatment. However, potential off-target interactions involving LCK can lead to unintended consequences. This underscores the importance of accurately predicting the inhibitory reactions of drug molecules with LCK during the research and development stage. To address this, we introduce an advanced ensemble machine learning technique designed to estimate the binding affinity between molecules and LCK. This comprehensive method includes the generation and selection of molecular fingerprints, the design of the machine learning model, hyperparameter tuning, and a model ensemble. Through rigorous optimization, the predictive capabilities of our model have been significantly enhanced, raising test R2 values from 0.644 to 0.730 and reducing test RMSE values from 0.841 to 0.732. Utilizing these advancements, our refined ensemble model was employed to screen an MCE -like drug library. Through screening, we selected the top ten scoring compounds, and tested them using the ADP-Glo bioactivity assay. Subsequently, we employed molecular docking techniques to further validate the binding mode analysis of these compounds with LCK. The exceptional predictive accuracy of our model in identifying LCK inhibitors not only emphasizes its effectiveness in projecting LCK-related safety panel predictions but also in discovering new LCK inhibitors. For added user convenience, we have also established a webserver, and a GitHub repository to share the project. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
20. MegaLTR: a web server and standalone pipeline for detecting and annotating LTR-retrotransposons in plant genomes.
- Author
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Mokhtar, Morad M. and El Allali, Achraf
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INTERNET servers ,EUKARYOTIC genomes ,PLANT genomes ,CHROMOSOMAL rearrangement ,PLANT species ,GENOMES ,DATA visualization - Abstract
LTR-retrotransposons (LTR-RTs) are a class of RNA-replicating transposon elements (TEs) that can alter genome structure and function by moving positions, repositioning genes, shifting exons, and causing chromosomal rearrangements. LTR-RTs are widespread in many plant genomes and constitute a significant portion of the genome. Their movement and activity in eukaryotic genomes can provide insight into genome evolution and gene function, especially when LTR-RTs are located near or within genes. Building the redundant and non-redundant LTR-RTs libraries and their annotations for species lacking this resource requires extensive bioinformatics pipelines and expensive computing power to analyze large amounts of genomic data. This increases the need for online services that provide computational resources with minimal overhead and maximum efficiency. Here, we present MegaLTR as a web server and standalone pipeline that detects intact LTR-RTs at the whole-genome level and integrates multiple tools for structure-based, homologybased, and de novo identification, classification, annotation, insertion time determination, and LTR-RT gene chimera analysis. MegaLTR also provides statistical analysis and visualization with multiple tools and can be used to accelerate plant species discovery and assist breeding programs in their efforts to improve genomic resources. We hope that the development of online services such as MegaLTR, which can analyze large amounts of genomic data, will become increasingly important for the automated detection and annotation of LTR-RT elements. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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21. Reliable and efficient webserver management for task scheduling in edge-cloud platform.
- Author
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Sangani, Sangeeta and Patil, Rudragoud
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PRODUCTION scheduling ,INTERNET servers ,WORKFLOW management ,CLOUD computing ,WORKING hours ,INTERNET of things ,RESOURCE management - Abstract
The development in the field of cloud webserver management for the execution of the workflow and meeting the quality-of-service (QoS) prerequisites in a distributed cloud environment has been a challenging task. Though, internet of things (IoT) of work presented for the scheduling of the workflow in a heterogeneous cloud environment. Moreover, the rapid development in the field of cloud computing like edge-cloud computing creates new methods to schedule the workflow in a heterogenous cloud environment to process different tasks like IoT, event-driven applications, and different network applications. The current methods used for workflow scheduling have failed to provide better trade-offs to meet reliable performance with minimal delay. In this paper, a novel web server resource management framework is presented namely the reliable and efficient webserver management (REWM) framework for the edge-cloud environment. The experiment is conducted on complex bioinformatic workflows; the result shows the significant reduction of cost and energy by the proposed REWM in comparison with standard webserver management methodology. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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22. BERT-5mC: an interpretable model for predicting 5-methylcytosine sites of DNA based on BERT
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Shuyu Wang, Yinbo Liu, Yufeng Liu, Yong Zhang, and Xiaolei Zhu
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DNA 5-methylcytosine ,BERT ,Machine learning ,Natural language processing ,Webserver ,Fine-tuning ,Medicine ,Biology (General) ,QH301-705.5 - Abstract
DNA 5-methylcytosine (5mC) is widely present in multicellular eukaryotes, which plays important roles in various developmental and physiological processes and a wide range of human diseases. Thus, it is essential to accurately detect the 5mC sites. Although current sequencing technologies can map genome-wide 5mC sites, these experimental methods are both costly and time-consuming. To achieve a fast and accurate prediction of 5mC sites, we propose a new computational approach, BERT-5mC. First, we pre-trained a domain-specific BERT (bidirectional encoder representations from transformers) model by using human promoter sequences as language corpus. BERT is a deep two-way language representation model based on Transformer. Second, we fine-tuned the domain-specific BERT model based on the 5mC training dataset to build the model. The cross-validation results show that our model achieves an AUROC of 0.966 which is higher than other state-of-the-art methods such as iPromoter-5mC, 5mC_Pred, and BiLSTM-5mC. Furthermore, our model was evaluated on the independent test set, which shows that our model achieves an AUROC of 0.966 that is also higher than other state-of-the-art methods. Moreover, we analyzed the attention weights generated by BERT to identify a number of nucleotide distributions that are closely associated with 5mC modifications. To facilitate the use of our model, we built a webserver which can be freely accessed at: http://5mc-pred.zhulab.org.cn.
- Published
- 2023
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23. Predicting ion mobility collision cross sections using projection approximation with ROSIE-PARCS webserver.
- Author
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Turzo, S M Bargeen Alam, Seffernick, Justin T, Lyskov, Sergey, and Lindert, Steffen
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ION mobility , *IONIC mobility , *PROTEIN structure prediction , *PROTEIN structure , *WEB-based user interfaces , *MASS spectrometry - Abstract
Ion mobility coupled to mass spectrometry informs on the shape and size of protein structures in the form of a collision cross section (CCSIM). Although there are several computational methods for predicting CCSIM based on protein structures, including our previously developed projection approximation using rough circular shapes (PARCS), the process usually requires prior experience with the command-line interface. To overcome this challenge, here we present a web application on the Rosetta Online Server that Includes Everyone (ROSIE) webserver to predict CCSIM from protein structure using projection approximation with PARCS. In this web interface, the user is only required to provide one or more PDB files as input. Results from our case studies suggest that CCSIM predictions (with ROSIE-PARCS) are highly accurate with an average error of 6.12%. Furthermore, the absolute difference between CCSIM and CCSPARCS can help in distinguishing accurate from inaccurate AlphaFold2 protein structure predictions. ROSIE-PARCS is designed with a user-friendly interface, is available publicly and is free to use. The ROSIE-PARCS web interface is supported by all major web browsers and can be accessed via this link (https://rosie.graylab.jhu.edu). [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
24. Applying the digital data and the bioinformatics tools in SARS-CoV-2 research
- Author
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Meng Tan, Jiaxin Xia, Haitao Luo, Geng Meng, and Zhenglin Zhu
- Subjects
SARS-CoV-2 ,Bioinformatics tool ,Database ,Software ,Webserver ,Biotechnology ,TP248.13-248.65 - Abstract
Bioinformatics has been playing a crucial role in the scientific progress to fight against the pandemic of the coronavirus disease 2019 (COVID-19) caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). The advances in novel algorithms, mega data technology, artificial intelligence and deep learning assisted the development of novel bioinformatics tools to analyze daily increasing SARS-CoV-2 data in the past years. These tools were applied in genomic analyses, evolutionary tracking, epidemiological analyses, protein structure interpretation, studies in virus-host interaction and clinical performance. To promote the in-silico analysis in the future, we conducted a review which summarized the databases, web services and software applied in SARS-CoV-2 research. Those digital resources applied in SARS-CoV-2 research may also potentially contribute to the research in other coronavirus and non-coronavirus viruses.
- Published
- 2023
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25. PARP1pred: a web server for screening the bioactivity of inhibitors against DNA repair enzyme PARP-1
- Author
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Tassanee Lerksuthirat, Sermsiri Chitphuk, Wasana Stitchantrakul, Donniphat Dejsuphong, Aijaz Ahmad Malik, and Chanin Nantasenamat
- Subjects
parp-1 ,dna repair ,machine learning ,qsar ,webserver ,cheminformatics ,Neoplasms. Tumors. Oncology. Including cancer and carcinogens ,RC254-282 ,Biology (General) ,QH301-705.5 - Abstract
Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In this study, classification models were constructed using a non-redundant set of 2018 PARP-1 inhibitors. Briefly, compounds were described by 12 fingerprint types and built using the random forest algorithm concomitant with various sampling approaches. Results indicated that PubChem with an oversampling approach yielded the best performance, with a Matthews correlation coefficient > 0.7 while also affording interpretable molecular features. Moreover, feature importance, as determined from the Gini index, revealed that the aromatic/cyclic/heterocyclic moiety, nitrogen-containing fingerprints, and the ether/aldehyde/alcohol moiety were important for PARP-1 inhibition. Finally, our predictive model was deployed as a web application called PARP1pred and is publicly available at https://parp1pred.streamlitapp.com, allowing users to predict the biological activity of query compounds using their SMILES notation as the input. It is anticipated that the model described herein will aid in the discovery of effective PARP-1 inhibitors.
- Published
- 2023
- Full Text
- View/download PDF
26. ESCCdb: A comprehensive database and key regulator exploring platform based on cross dataset comparisons for esophageal squamous cell carcinoma
- Author
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Jian Yang, Liyun Bi, Chen Wang, Gang Wang, Yixiong Gou, Liting Dong, Maoxu Wang, Hong Luo, Kun Wang, Yu Wang, Yue Huang, Haoyang Cai, and Zhixiong Xiao
- Subjects
Esophageal squamous cell carcinoma ,Multi-omics ,Webserver ,Transcription factor ,Consistently differential expressed genes ,Biotechnology ,TP248.13-248.65 - Abstract
Esophageal cancer is the seventh most prevalent and the sixth most lethal cancer. Esophageal squamous cell carcinoma (ESCC) is one of the major esophageal cancer subtypes that accounts for 87 % of the total cases. However, its molecular mechanism remains unclear. Here, we present an integrated database for ESCC called ESCCdb, which includes a total of 56 datasets and published studies from the GEO, Xena or SRA databases and related publications. It helps users to explore a particular gene with multiple graphical and interactive views with one click. The results comprise expression changes across 20 datasets, copy number alterations in 11 datasets, somatic mutations from 12 papers, related drugs derived from DGIdb, related pathways, and gene correlations. ESCCdb enables directly cross-dataset comparison of a gene’s mutations, expressions and copy number changes in multiple datasets. This allows users to easily assess the alterations in ESCC. Furthermore, survival analysis, drug-gene relationships, and results from whole-genome CRISPR/Cas9 screening can help users determine the clinical relevance, derive functional inferences, and identify potential drugs. Notably, ESCCdb also enables the exploration of the correlation structure and identification of potential key regulators for a process. Finally, we identified 789 consistently differential expressed genes; we summarized recurrently mutated genes and genes affected by significant copy number alterations. These genes may be stable biomarkers or important players during ESCC development. ESCCdb fills the gap between massive omics data and users’ needs for integrated analysis and can promote basic and clinical ESCC research. The database is freely accessible at http://cailab.labshare.cn/ESCCdb.
- Published
- 2023
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27. Design and Implementation of Telecom Offline Data Integrated Processing Based on Hadoop Architecture
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Zhang, Li-hua, Zhang, Wei-min, Liu, Chun, Li, Xin, Li, Xin-xin, Yang, Rui, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Jiming, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Hirche, Sandra, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Möller, Sebastian, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Zhang, Junjie James, Series Editor, Liu, Qi, editor, Liu, Xiaodong, editor, Cheng, Jieren, editor, Shen, Tao, editor, and Tian, Yuan, editor
- Published
- 2022
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- View/download PDF
28. Embedded Remote Condition Monitoring System for Industrial Machinery
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Gurusamy, Saravanakumar, Mengistie, Mesay, Kangi, Abraham Simon, Mohideen, K. Asan, Perumal, D. Ganesha, Cavas-Martínez, Francisco, Series Editor, Chaari, Fakher, Series Editor, di Mare, Francesca, Series Editor, Gherardini, Francesco, Series Editor, Haddar, Mohamed, Series Editor, Ivanov, Vitalii, Series Editor, Kwon, Young W., Series Editor, Trojanowska, Justyna, Series Editor, Palani, I. A., editor, Sathiya, P., editor, and Palanisamy, D., editor
- Published
- 2022
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29. Progress on Open Chemoinformatic Tools for Drug Discovery
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Medina-Franco, José L., Gutiérrez-Nieto, Rodrigo, Gómez-Velasco, Homero, Talevi, Alan, Series Editor, Scotti, Marcus T., editor, and Bellera, Carolina L., editor
- Published
- 2022
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30. IoT Based Electricity Theft Monitoring System
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Saadhavi, S., Bindu, R., Sadhana, S. Ram., Srilalitha, N. S., Rekha, K. S., Phaneendra, H. D., Xhafa, Fatos, Series Editor, Hemanth, D. Jude, editor, Pelusi, Danilo, editor, and Vuppalapati, Chandrasekar, editor
- Published
- 2022
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- View/download PDF
31. Vehicle Entry Management System Using Image Processing
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Vallikannu, R., kanth, Krishna, Kumar, L. SaiPavan, Monisha, Karthik, Kacprzyk, Janusz, Series Editor, Jain, Lakhmi C., Series Editor, Balas, Valentina E., editor, Solanki, Vijender Kumar, editor, and Kumar, Raghvendra, editor
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- 2022
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32. Power Monitoring Using Internet of Things (IoT) of Smart Lighting System
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Yaichi, Mouaadh, Bouchiba, Bousmaha, Rebhi, Mhamed, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, and Hatti, Mustapha, editor
- Published
- 2022
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33. Deep Learning Photograph Caption Generator
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Shetty, Savitha, Hegde, Sarika, Shetty, Saritha, Shetty, Deepthi, Sowmya, M. R., Miranda, Reevan, Sequeira, Fedrick, Menezes, Joyston, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Shetty D., Pushparaj, editor, and Shetty, Surendra, editor
- Published
- 2022
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34. Room Security System with Face Recognition using Local Binary Pattern Histogram Algorithm based on the Internet of Things.
- Author
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Kurniawan, Turkhamun Adi, Sumadikarta, Istiqomah, Nauli, Sukarno Bahat, Zuli, Faizal, Santoso, Teguh Budi, and Desma, Muhammad Roufiqi
- Subjects
- *
HUMAN facial recognition software , *INTERNET of things , *SECURITY systems , *VIDEO monitors , *ALGORITHMS , *LIGHT intensity - Abstract
An Internet of Things-based security system and OpenCV technology have been developed to improve the efficiency and ease of monitoring video footage from CCTV. The face detection process is carried out using the Haar Cascade method, while facial recognition is carried out using the Local Binary Pattern Histogram algorithm. The test results show that light intensity has a significant influence on system accuracy, but this system provides convenience in monitoring CCTV video in real-time through a webserver and improves security, especially in rooms by utilizing Internet of Things technology. The current facial recognition success rate is 72%. Therefore, for the subsequent development of the system, it is recommended to increase the success rate of facial recognition and also implement the File Transfer Protocol to ensure better and better system performance. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
35. Awareness and learning for initial configuration of an webserver.
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Matsuo, Taisei, Matsuura, Kenji, and Takeuchi, Hironori
- Subjects
LEARNING ,SYSTEM administrators ,AWARENESS - Abstract
An webserver should be maintained by its experienced administrator under the firm knowledge and conviction on vulnerability measures. General administrators of novice learn the vulnerabilities with public literatures to get knowledge while unlearnt people sometimes try by the Internet articles for its affordability. However, the configuration of vulnerability countermeasures can be represented structurally. Therefore, even novices should learn more efficiently by using a learning support system originally developed those structures with the elements of vulnerability countermeasures than by learning with the literature. The system asks questions based on the learner's understanding. In the experiment, learners were divided into two groups of studying by the literature and studying by the system. Through the experiment consisted of a pre-test, learning, and post-test, the average score indicates the advantage of the system while the literature-based study shows partially advantageous. The explanatory text and feedback for items that the learners could not answer correctly need to be revised. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
36. DRAVP: A Comprehensive Database of Antiviral Peptides and Proteins.
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Liu, Yanchao, Zhu, Youzhuo, Sun, Xin, Ma, Tianyue, Lao, Xingzhen, and Zheng, Heng
- Subjects
- *
ANTIVIRAL agents , *DATABASES , *DEFENSINS , *PEPTIDES , *DATA libraries , *CHRONIC hepatitis C , *ANTIMICROBIAL peptides , *RIBAVIRIN - Abstract
Viruses with rapid replication and easy mutation can become resistant to antiviral drug treatment. With novel viral infections emerging, such as the recent COVID-19 pandemic, novel antiviral therapies are urgently needed. Antiviral proteins, such as interferon, have been used for treating chronic hepatitis C infections for decades. Natural-origin antimicrobial peptides, such as defensins, have also been identified as possessing antiviral activities, including direct antiviral effects and the ability to induce indirect immune responses to viruses. To promote the development of antiviral drugs, we constructed a data repository of antiviral peptides and proteins (DRAVP). The database provides general information, antiviral activity, structure information, physicochemical information, and literature information for peptides and proteins. Because most of the proteins and peptides lack experimentally determined structures, AlphaFold was used to predict each antiviral peptide's structure. A free website for users (http://dravp.cpu-bioinfor.org/ , accessed on 30 August 2022) was constructed to facilitate data retrieval and sequence analysis. Additionally, all the data can be accessed from the web interface. The DRAVP database aims to be a useful resource for developing antiviral drugs. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
37. MegaLTR: a web server and standalone pipeline for detecting and annotating LTR-retrotransposons in plant genomes
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Morad M. Mokhtar and Achraf El Allali
- Subjects
LTR-retrotransposons ,plant genomes ,webserver ,insertion age ,LTR-RT gene chimeras ,non-redundant LTR-RTs library ,Plant culture ,SB1-1110 - Abstract
LTR-retrotransposons (LTR-RTs) are a class of RNA-replicating transposon elements (TEs) that can alter genome structure and function by moving positions, repositioning genes, shifting exons, and causing chromosomal rearrangements. LTR-RTs are widespread in many plant genomes and constitute a significant portion of the genome. Their movement and activity in eukaryotic genomes can provide insight into genome evolution and gene function, especially when LTR-RTs are located near or within genes. Building the redundant and non-redundant LTR-RTs libraries and their annotations for species lacking this resource requires extensive bioinformatics pipelines and expensive computing power to analyze large amounts of genomic data. This increases the need for online services that provide computational resources with minimal overhead and maximum efficiency. Here, we present MegaLTR as a web server and standalone pipeline that detects intact LTR-RTs at the whole-genome level and integrates multiple tools for structure-based, homologybased, and de novo identification, classification, annotation, insertion time determination, and LTR-RT gene chimera analysis. MegaLTR also provides statistical analysis and visualization with multiple tools and can be used to accelerate plant species discovery and assist breeding programs in their efforts to improve genomic resources. We hope that the development of online services such as MegaLTR, which can analyze large amounts of genomic data, will become increasingly important for the automated detection and annotation of LTR-RT elements.
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- 2023
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38. PARP1PRED: A WEB SERVER FOR SCREENING THE BIOACTIVITY OF INHIBITORS AGAINST DNA REPAIR ENZYME PARP-1.
- Author
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Lerksuthirat, Tassanee, Chitphuk, Sermsiri, Stitchantrakul, Wasana, Dejsuphong, Donniphat, Malik, Aijaz Ahmad, and Nantasenamat, Chanin
- Subjects
- *
DNA ligases , *HUMAN fingerprints , *POLY(ADP-ribose) polymerase , *INTERNET servers , *RANDOM forest algorithms , *DNA repair - Abstract
Cancer is the leading cause of death worldwide, resulting in the mortality of more than 10 million people in 2020, according to Global Cancer Statistics 2020. A potential cancer therapy involves targeting the DNA repair process by inhibiting PARP-1. In this study, classification models were constructed using a non-redundant set of 2018 PARP-1 inhibitors. Briefly, compounds were described by 12 fingerprint types and built using the random forest algorithm concomitant with various sampling approaches. Results indicated that PubChem with an oversampling approach yielded the best performance, with a Matthews correlation coefficient > 0.7 while also affording interpretable molecular features. Moreover, feature importance, as determined from the Gini index, revealed that the aromatic/cyclic/heterocyclic moiety, nitrogen-containing fingerprints, and the ether/aldehyde/alcohol moiety were important for PARP-1 inhibition. Finally, our predictive model was deployed as a web application called PARP1pred and is publicly available at https://parp1pred.streamlitapp.com, allowing users to predict the biological activity of query compounds using their SMILES notation as the input. It is anticipated that the model described herein will aid in the discovery of effective PARP-1 inhibitors. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
39. LoRa and server-based home automation using the internet of things (IoT)
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Rahabul Islam, Md. Wahidur Rahman, Rahmina Rubaiat, Md. Mahmodul Hasan, Md. Mahfuz Reza, and Mohammad Motiur Rahman
- Subjects
LoRa (Long-Range) ,Internet of things (IoT) ,Webserver ,Automation ,System Usability Scale (SUS) ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
LoRa (Long-Range) has become the Deoxyribo Nucleic Acid (DNA) of the Internet of things (IoT) for equipping smart solutions. Home automation is responsible for providing a safe and stylish home. This paper proposes a capable architecture of home automation for both short-range and long-range utilizing multiple communication technologies, namely LoRaWAN, server-based LoRa gateway, and Bluetooth connectivity. This integrated system effectively controls distinct types of home appliances and keeps smart management among all the electronics components. A regular user can easily manage these unified systems by using an Android application. This paper also presents experimental data analysis. The results and discussion section provide a set of experiments like estimated transmission delay calculation for LoRa, Wi-Fi, and Bluetooth, a coverage area calculation for LoRa with RSSI and SNR values, and a System Usability Scale (SUS). The scheme has achieved a SUS score of 93%. However, the proposed architecture can be called an outright package for smart home and will be very workable, abuzz, and handy.
- Published
- 2022
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40. LCK-SafeScreen-Model: An Advanced Ensemble Machine Learning Approach for Estimating the Binding Affinity between Compounds and LCK Target
- Author
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Ying Cheng, Cong Ji, Jun Xu, Roufen Chen, Yu Guo, Qingyu Bian, Zheyuan Shen, and Bo Zhang
- Subjects
LCK ,off-target ,ensemble machine learning ,molecular docking ,webserver ,Organic chemistry ,QD241-441 - Abstract
The lymphocyte-specific protein tyrosine kinase (LCK) is a critical target in leukemia treatment. However, potential off-target interactions involving LCK can lead to unintended consequences. This underscores the importance of accurately predicting the inhibitory reactions of drug molecules with LCK during the research and development stage. To address this, we introduce an advanced ensemble machine learning technique designed to estimate the binding affinity between molecules and LCK. This comprehensive method includes the generation and selection of molecular fingerprints, the design of the machine learning model, hyperparameter tuning, and a model ensemble. Through rigorous optimization, the predictive capabilities of our model have been significantly enhanced, raising test R2 values from 0.644 to 0.730 and reducing test RMSE values from 0.841 to 0.732. Utilizing these advancements, our refined ensemble model was employed to screen an MCE -like drug library. Through screening, we selected the top ten scoring compounds, and tested them using the ADP-Glo bioactivity assay. Subsequently, we employed molecular docking techniques to further validate the binding mode analysis of these compounds with LCK. The exceptional predictive accuracy of our model in identifying LCK inhibitors not only emphasizes its effectiveness in projecting LCK-related safety panel predictions but also in discovering new LCK inhibitors. For added user convenience, we have also established a webserver, and a GitHub repository to share the project.
- Published
- 2023
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- View/download PDF
41. Automated Rocker Rover for Terrain Surface Surveillance
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Vallikannu, R., Meenakshi, B., Subhash, Venkata, Basha, KiranKumar, Chandra, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Sharma, Devendra Kumar, editor, Son, Le Hoang, editor, Sharma, Rohit, editor, and Cengiz, Korhan, editor
- Published
- 2021
- Full Text
- View/download PDF
42. CommPath: An R package for inference and analysis of pathway-mediated cell-cell communication chain from single-cell transcriptomics
- Author
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Hao Lu, Jie Ping, Guangming Zhou, Zhen Zhao, Weiming Gao, Yuqing Jiang, Cheng Quan, Yiming Lu, and Gangqiao Zhou
- Subjects
Cell-cell communication ,Ligand-receptor interaction ,scRNA-seq ,Webserver ,Biotechnology ,TP248.13-248.65 - Abstract
Single-cell transcriptomics offers opportunities to investigate ligand-receptor (LR) interactions between heterogeneous cell populations within tissues. However, most existing tools for the inference of intercellular communication do not allow prioritization of functional LR associations that provoke certain biological responses in the receiver cells. In addition, current tools do not enable the identification of the impact on the downstream cell types of the receiver cells. We present CommPath, an open-source R package and webserver, to analyze and visualize the LR interactions and pathway-mediated intercellular communication chain with single-cell transcriptomic data. CommPath curates a comprehensive signaling pathway database to interpret the consequences of LR associations and therefore infers functional LR interactions. Furthermore, CommPath determines cell-cell communication chain by considering both the upstream and downstream cells of user-defined cell populations. Applying CommPath to human hepatocellular carcinoma dataset shows its ability to decipher complex LR interaction patterns and the associated intercellular communication chain, as well as their changes in disease versus homeostasis.
- Published
- 2022
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- View/download PDF
43. Editorial: Bioinformatics tools (and web server) for cancer biomarker development, volume II.
- Author
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Longxiang Xie, Liuyang Wang, Wan Zhu, Jing Zhao, and Xiangqian Guo
- Subjects
CARCINOGENESIS ,INTERNET servers ,BIOINFORMATICS - Published
- 2022
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- View/download PDF
44. miR2Trait: an integrated resource for investigating miRNA-disease associations.
- Author
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Babu, Poornima and Palaniappan, Ashok
- Subjects
WIKIS ,HUMAN genome ,MICRORNA ,CELL anatomy ,GENETIC regulation - Abstract
MicroRNAs are key components of cellular regulatory networks, and breakdown in miRNA function causes cascading effects leading to pathophenotypes. A better understanding of the role of miRNAs in diseases is essential for human health. Here, we have devised a method for comprehensively mapping the associations between miRNAs and diseases by merging on a common key between two curated omics databases. The resulting bidirectional resource, miR2Trait, is more detailed than earlier catalogs, uncovers new relationships, and includes analytical utilities to interrogate and extract knowledge from these datasets. miR2Trait provides resources to compute the disease enrichment of a user-given set of miRNAs and analyze the miRNA profile of a specified diseasome. Reproducible examples demonstrating use-cases for each of these resource components are illustrated. Furthermore we used these tools to construct pairwise miRNA-miRNA and disease-disease enrichment networks, and identified 23 central miRNAs that could underlie major regulatory functions in the human genome. miR2Trait is available as an open-source command-line interface in Python3 (URL: https://github.com/miR2Trait) with a companion wiki documenting the scripts and data resources developed, under MIT license for commercial and noncommercial use. A minimal web-based implementation has been made available at https://sas.sastra.edu/pymir18. Supplementary information is available at: https://doi. org/10.6084/m9.figshare.8288825.v3. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
45. Sistema de reconeixement facial i veu per a missatgeria personalitzada a la llar
- Author
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Universitat Politècnica de Catalunya. Departament d'Enginyeria Electrònica, López Palma, Manuel, Garcia Vila, Oriol, Universitat Politècnica de Catalunya. Departament d'Enginyeria Electrònica, López Palma, Manuel, and Garcia Vila, Oriol
- Abstract
Aquest projecte es centra en el desenvolupament d'un sistema que millora la interacció de les persones en entorns domèstics, utilitzant principalment tecnologies de reconeixement facial i de veu per controlar dispositius domèstics intel·ligents. Els objectius principals inclouen el disseny, desenvolupament i implementació d'un sistema que ofereixi autenticació mitjançant reconeixement facial, benvingudes personalitzades als usuaris, i la capacitat d'executar accions mitjançant comandes de veu. Aquestes comandes controlen dispositius a través d'una API REST, amb el sistema operant en un dispositiu amb Linux integrat. El projecte es divideix en diversos segments: el nucli del sistema s'ha desenvolupat en Python, aprofitant diverses biblioteques de codi obert. Aquest segment facilita el reconeixement facial per a l'autenticació i el control d'usuari en temps real, juntament amb el reconeixement de veu que serveix tant per a l'autenticació com per a la interacció amb el sistema, imitant un assistent de veu que respon a diferents comandes. Addicionalment, s'ha creat una interfície web amb Django que facilita la interacció amb la base de dades Firebase, permetent la gestió d'usuari d'una manera senzilla i accessible. Aquesta interfície permet afegir, editar o eliminar usuaris que tenen accés al sistema. Com a component de hardware, s'ha integrat un dispositiu domèstic simulat utilitzant un microcontrolador ESP32 i una matriu de LEDs, desenvolupat en C++ per gestionar comandes HTTP des del codi principal, permetent el control de la matriu de LEDs oferint funcions com encendre, canviar color o mostrar animacions, entre d’altres. El sistema complet està dissenyat per operar sobre una TinkerBoard 2S amb Debian (Linux), proporcionant una base robusta per a futures expansions. Els resultats del projecte demostren una integració exitosa de les tecnologies de reconeixement facial i de veu, millorant substancialment la interacció i l'automatització en un entorn domèstic. L'aplicac, This project focuses on the development of a system that enhances human interaction within home environments, primarily using facial recognition and voice recognition technologies to control smart home devices. The main objectives include designing, developing, and implementing a system that provides facial recognition authentication, personalized user greetings, and the ability to execute actions through voice commands. These commands control devices via a REST API, with the system operating on a device with integrated Linux. The project is divided into several segments: the core of the system has been developed in Python, utilizing various open-source libraries. This segment facilitates facial recognition for authentication and real-time user control, along with voice recognition that serves both for authentication and interaction with the system, mimicking a voice assistant that responds to various commands. Additionally, a web interface with Django has been created to facilitate interaction with the Firebase database, enabling simple and accessible user management. This interface allows for adding, editing, or deleting users who have access to the system. As a hardware component, a simulated home device using an ESP32 microcontroller and an LED matrix has been developed in C++ to handle HTTP commands from the main code, allowing control of the LED matrix with functions such as turning on, changing color, or displaying animations, among others. The complete system is designed to operate on a TinkerBoard 2S with Debian (Linux), providing a robust base for future expansions. The results of the project demonstrate successful integration of facial and voice recognition technologies, substantially improving interaction and automation in a domestic environment. The effective application of the system has allowed users to manage home devices in a more intuitive and secure manner. These improvements in functionality and security confirm the success of the chosen developm
- Published
- 2024
46. ToxinPredictor: Computational models to predict the toxicity of molecules.
- Author
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Goel M, Amawate A, Singh A, and Bagler G
- Abstract
Predicting the toxicity of molecules is essential in fields like drug discovery, environmental protection, and industrial chemical management. While traditional experimental methods are time-consuming and costly, computational models offer an efficient alternative. In this study, we introduce ToxinPredictor, a machine learning-based model to predict the toxicity of small molecules using their structural properties. The model was trained on a curated dataset of 7550 toxic and 6514 non-toxic molecules, leveraging feature selection techniques like Boruta and PCA. The best-performing model, a Support Vector Machine (SVM), achieved state-of-the-art results with an AUROC of 91.7%, F1-score of 84.9%, and accuracy of 85.4%, outperforming existing solutions. SHAP analysis was applied to the SVM model to identify the most important molecular descriptors contributing to toxicity predictions, enhancing interpretability. Despite challenges related to data quality, ToxinPredictor provides a reliable framework for toxicity risk assessment, paving the way for safer drug development and improved environmental health assessments. We also created a user-friendly webserver, ToxinPredictor (https://cosylab.iiitd.edu.in/toxinpredictor) to facilitate the search and prediction of toxic compounds., Competing Interests: Declaration of competing interest The authors declare that they have no conflict of interest or any academic issues that could affect the publication of this manuscript., (Copyright © 2024 Elsevier Ltd. All rights reserved.)
- Published
- 2024
- Full Text
- View/download PDF
47. Analysis of mutations in precision oncology using the automated, accurate, and user-friendly web tool PredictONCO.
- Author
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Khan RT, Pokorna P, Stourac J, Borko S, Dobias A, Planas-Iglesias J, Mazurenko S, Arefiev I, Pinto G, Szotkowska V, Sterba J, Damborsky J, Slaby O, and Bednar D
- Abstract
Next-generation sequencing technology has created many new opportunities for clinical diagnostics, but it faces the challenge of functional annotation of identified mutations. Various algorithms have been developed to predict the impact of missense variants that influence oncogenic drivers. However, computational pipelines that handle biological data must integrate multiple software tools, which can add complexity and hinder non-specialist users from accessing the pipeline. Here, we have developed an online user-friendly web server tool PredictONCO that is fully automated and has a low barrier to access. The tool models the structure of the mutant protein in the first step. Next, it calculates the protein stability change, pocket level information, evolutionary conservation, and changes in ionisation of catalytic amino acid residues, and uses them as the features in the machine-learning predictor. The XGBoost-based predictor was validated on an independent subset of held-out data, demonstrating areas under the receiver operating characteristic curve (ROC) of 0.97 and 0.94, and the average precision from the precision-recall curve of 0.99 and 0.94 for structure-based and sequence-based predictions, respectively. Finally, PredictONCO calculates the docking results of small molecules approved by regulatory authorities. We demonstrate the applicability of the tool by presenting its usage for variants in two cancer-associated proteins, cellular tumour antigen p53 and fibroblast growth factor receptor FGFR1. Our free web tool will assist with the interpretation of data from next-generation sequencing and navigate treatment strategies in clinical oncology: https://loschmidt.chemi.muni.cz/predictonco/., Competing Interests: The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (© 2024 The Authors.)
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- 2024
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- View/download PDF
48. Secure: An Effective Smartphone Safety Solution
- Author
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Kalita, Sampreet, Bhattacharyya, Dhruba Kumar, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Das, Asit Kumar, editor, Nayak, Janmenjoy, editor, Naik, Bighnaraj, editor, Pati, Soumen Kumar, editor, and Pelusi, Danilo, editor
- Published
- 2020
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49. Purimeth: an integrated web-based tool for estimating and accounting for tumor purity in cancer DNA methylation studies
- Author
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Nana Wei, Hanwen Zhu, Chun Li, and Xiaoqi Zheng
- Subjects
tumor purity ,differential methylation ,tumor sample clustering ,dna methylation analysis ,webserver ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
Proportion of cancerous cells in a tumor sample, known as "tumor purity", is a major source of confounding factor in cancer data analyses. Lots of computational methods are available for estimating tumor purity from different types of genomics data or based on different platforms, which makes it difficult to compare and integrate the estimated results. To rectify the deviation caused by tumor purity effect, a number of methods for downstream data analysis have been developed, including tumor sample clustering, association study and differential methylation between tumor samples. However, using these computational tools remains a daunting task for many researchers since they require non-trivial computational skills. To this end, we present Purimeth, an integrated web-based tool for estimating and accounting for tumor purity in cancer DNA methylation studies. Purimeth implements three state-of-the-art methods for tumor purity estimation from DNA methylation array data: InfiniumPurify, MEpurity and PAMES. It also provides graphical interface for various analyses including differential methylation (DM), sample clustering, and purification of tumor methylomes, all with the consideration of tumor purities. In addition, Purimeth catalogs estimated tumor purities for TCGA samples from nine methods for users to visualize and explore. In conclusion, Purimeth provides an easy-operated way for researchers to explore tumor purity and implement cancer methylation data analysis. It is developed using Shiny (Version 1.6.0) and freely available at http://purimeth.comp-epi.com/.
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- 2021
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50. AbAgIntPre: A deep learning method for predicting antibody-antigen interactions based on sequence information
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Yan Huang, Ziding Zhang, and Yuan Zhou
- Subjects
antibody-antigen interaction ,deep learning ,sequence feature ,SARS-CoV ,Siamese-like convolutional neural network ,webserver ,Immunologic diseases. Allergy ,RC581-607 - Abstract
IntroductionAntibody-mediated immunity is an essential part of the immune system in vertebrates. The ability to specifically bind to antigens allows antibodies to be widely used in the therapy of cancers and other critical diseases. A key step in antibody therapeutics is the experimental identification of antibody-antigen interactions, which is generally time-consuming, costly, and laborious. Although some computational methods have been proposed to screen potential antibodies, the dependence on 3D structures still limits the application of these methods.MethodsHere, we developed a deep learning-assisted prediction method (i.e., AbAgIntPre) for fast identification of antibody-antigen interactions that only relies on amino acid sequences. A Siamese-like convolutional neural network architecture was established with the amino acid composition encoding scheme for both antigens and antibodies.Results and DiscussionThe generic model of AbAgIntPre achieved satisfactory performance with the Area Under Curve (AUC) of 0.82 on a high-quality generic independent test dataset. Besides, this approach also showed competitive performance on the more specific SARS-CoV dataset. We expect that AbAgIntPre can serve as an important complement to traditional experimental methods for antibody screening and effectively reduce the workload of antibody design. The web server of AbAgIntPre is freely available at http://www.zzdlab.com/AbAgIntPre.
- Published
- 2022
- Full Text
- View/download PDF
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