Title
In silico prediction methods of self-interacting proteins: an empirical and academic survey
Abstract
In silico prediction of self-interacting proteins (SIPs) has become an important part of proteomics. There is an urgent need to develop effective and reliable prediction methods to overcome the disadvantage of high cost and labor intensive in traditional biological wet-lab experiments. The goal of our survey is to sum up a comprehensive overview of the recent literature with the computational SIPs prediction, to provide important references for actual work in the future. In this review, we first describe the data required for the task of DTIs prediction. Then, some interesting feature extraction methods and computational models are presented on this topic in a timely manner. Afterwards, an empirical comparison is performed to demonstrate the prediction performance of some classifiers under different feature extraction and encoding schemes. Overall, we conclude and highlight potential methods for further enhancement of SIPs prediction performance as well as related research directions.
Year
DOI
Venue
2023
10.1007/s11704-022-1563-1
Frontiers of Computer Science
Keywords
DocType
Volume
proteomics, self-interacting proteins, feature extraction, prediction model
Journal
17
Issue
ISSN
Citations 
3
2095-2228
0
PageRank 
References 
Authors
0.34
68
7
Name
Order
Citations
PageRank
Zhan-Heng Chen125.76
Jian-Qiang LI200.34
Zhu-Hong YOU300.34
Qin-Hu ZHANG400.34
Zhen-Hao GUO500.34
Si-Guo WANG600.34
Yan-Bin Wang744.45