Literature DB >> 30378494

Recent Advances in Machine Learning Methods for Predicting Heat Shock Proteins.

Wei Chen1,2, Pengmian Feng3, Tao Liu2, Dianchuan Jin2.   

Abstract

BACKGROUND: As molecular chaperones, Heat Shock Proteins (HSPs) not only play key roles in protein folding and maintaining protein stabilities, but are also linked with multiple kinds of diseases. Therefore, HSPs have been regarded as the focus of drug design. Since HSPs from different families play distinct functions, accurately classifying the families of HSPs is the key step to clearly understand their biological functions. In contrast to laborintensive and cost-ineffective experimental methods, computational classification of HSP families has emerged to be an alternative approach.
METHODS: We reviewed the paper that described the existing datasets of HSPs and the representative computational approaches developed for the identification and classification of HSPs.
RESULTS: The two benchmark datasets of HSPs, namely HSPIR and sHSPdb were introduced, which provided invaluable resources for computationally identifying HSPs. The gold standard dataset and sequence encoding schemes for building computational methods of classifying HSPs were also introduced. The three representative web-servers for identifying HSPs and their families were described.
CONCLUSION: The existing machine learning methods for identifying the different families of HSPs indeed yielded quite encouraging results and did play a role in promoting the research on HSPs. However, the number of HSPs with known structures is very limited. Therefore, determining the structure of the HSPs is also urgent, which will be helpful in revealing their functions. Copyright© Bentham Science Publishers; For any queries, please email at epub@benthamscience.net.

Entities:  

Keywords:  Heat shock protein; drug target; machine learning; n-peptide composition; reduced amino acid composition; web server.

Mesh:

Substances:

Year:  2019        PMID: 30378494     DOI: 10.2174/1389200219666181031105916

Source DB:  PubMed          Journal:  Curr Drug Metab        ISSN: 1389-2002            Impact factor:   3.731


  20 in total

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4.  Predicting Endoplasmic Reticulum Resident Proteins Using Auto-Cross Covariance Transformation With a U-Shaped Residue Weight-Transfer Function.

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Journal:  Front Genet       Date:  2019-12-20       Impact factor: 4.599

5.  Machine Learning of Single-Cell Transcriptome Highly Identifies mRNA Signature by Comparing F-Score Selection with DGE Analysis.

Authors:  Pengfei Liang; Wuritu Yang; Xing Chen; Chunshen Long; Lei Zheng; Hanshuang Li; Yongchun Zuo
Journal:  Mol Ther Nucleic Acids       Date:  2020-02-13       Impact factor: 8.886

6.  iRNA-m2G: Identifying N2-methylguanosine Sites Based on Sequence-Derived Information.

Authors:  Wei Chen; Xiaoming Song; Hao Lv; Hao Lin
Journal:  Mol Ther Nucleic Acids       Date:  2019-08-28       Impact factor: 8.886

7.  SDM6A: A Web-Based Integrative Machine-Learning Framework for Predicting 6mA Sites in the Rice Genome.

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Journal:  Mol Ther Nucleic Acids       Date:  2019-08-16       Impact factor: 8.886

8.  AOPs-SVM: A Sequence-Based Classifier of Antioxidant Proteins Using a Support Vector Machine.

Authors:  Chaolu Meng; Shunshan Jin; Lei Wang; Fei Guo; Quan Zou
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9.  A Comparative Analysis of Single-Cell Transcriptome Identifies Reprogramming Driver Factors for Efficiency Improvement.

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10.  Predicting Bacteriophage Enzymes and Hydrolases by Using Combined Features.

Authors:  Hong-Fei Li; Xian-Fang Wang; Hua Tang
Journal:  Front Bioeng Biotechnol       Date:  2020-03-24
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