Computational Methods for Predicting Post-Translational Modification Sites

Specificaties
Gebonden, blz. | Engels
Springer US | e druk, 2022
ISBN13: 9781071623169
Rubricering
Springer US e druk, 2022 9781071623169
Onderdeel van serie Methods in Molecular Biology
Verwachte levertijd ongeveer 9 werkdagen

Samenvatting

This volume describes computational approaches to predict multitudes of PTM sites. Chapters describe in depth approaches on algorithms, state-of-the-art Deep Learning based approaches, hand-crafted features, physico-chemical based features, issues related to obtaining negative training, sequence-based features, and structure-based features. Written in the format of the highly successful Methods in Molecular Biology series, each chapter includes an introduction to the topic, lists necessary materials and reagents, includes tips on troubleshooting and known pitfalls, and step-by-step, readily reproducible protocols.

 Authoritative and cutting-edge, Authoritative and cutting-edge,  Computational Methods for Predicting Post-Translational Modification Sites aims to be a useful guide for researchers who are interested in the field of PTM site prediction. 

Specificaties

ISBN13:9781071623169
Taal:Engels
Bindwijze:gebonden
Uitgever:Springer US

Inhoudsopgave

<p>Maximizing Depth of PTM Coverage: Generating Robust MS Datasets for Computational Prediction Modeling.-&nbsp;PLDMS: Phosphopeptide Library Dephosphorylation followed by Mass Spectrometry Analysis to Determine the Specificity of Phosphatases for Dephosphorylation Site Sequences.-&nbsp;FEPS: A tool for Feature Extraction from Protein Sequence.-&nbsp;A pre-trained ELECTRA model for Kinase-specific Phosphorylation Site Prediction.-&nbsp;&nbsp;iProtGly-SS: A Tool to Accurately Predict Protein Glycation Site Using structural-based Features.-&nbsp;Functions of Glycosylation and Related Web Resources for its Prediction.-&nbsp;Analysis of Post-Translational Modifications in Arabidopsis Proteins and Metabolic Pathways using the FAT-PTM Database.-&nbsp;Bioinformatic Analyses of Peroxiredoxins and RF-Prx: A RANDOM FOREST-BASED PREDICTOR and classifier for Prxs.-&nbsp;Computational prediction of N- and O-linked glycosylation sites for human and mouse proteins.-&nbsp;iPTMnet RESTful API for Post-Translational Modification Network Analysis.-&nbsp;Systematic Characterization of Lysine Post-Translational Modification Sites using MUscADEL.-&nbsp;Enhancing the Discovery of Functional Post-Translational Modification Sites with Machine Learning Models – Development, Validation, and Interpretation.-&nbsp;Exploration of Protein Post-Translational Modification Landscape and Crosstalk with CrossTalkMapper.-&nbsp;PTM-X: Prediction of Post-Translational Modification Crosstalk Within and Across Proteins.-&nbsp;Deep Learning-Based Advances In Protein Post-Translational Modification Site And Protein Cleavage Prediction.</p>

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        Computational Methods for Predicting Post-Translational Modification Sites