A mixture of feature experts approach for protein-protein interaction prediction

被引:36
作者
Qi, Yanjun [1 ]
Klein-Seetharaman, Judith [1 ,2 ]
Bar-Joseph, Ziv [1 ]
机构
[1] Carnegie Mellon Univ, Sch Comp Sci, Pittsburgh, PA 15213 USA
[2] Univ Pittsburgh, Sch Med, Dept Biol Struct, Pittsburgh, PA 15260 USA
关键词
D O I
10.1186/1471-2105-8-S10-S6
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: High-throughput methods can directly detect the set of interacting proteins in model species but the results are often incomplete and exhibit high false positive and false negative rates. A number of researchers have recently presented methods for integrating direct and indirect data for predicting interactions. These methods utilize a common classifier for all pairs. However, due to missing data and high redundancy among the features used, different protein pairs may benefit from different features based on the set of attributes available. In addition, in many cases it is hard to directly determine which of the data sources contributed to a prediction. This information is important for biologists using these predications in the design of new experiments. Results: To address these challenges we propose a Mixture-of-Feature-Experts method for protein-protein interaction prediction. We split the features into roughly homogeneous sets of feature experts. The individual experts use logistic regression and their scores are combined using another logistic regression. When combining the scores the weighting of each expert depends on the set of input attributes available for that pair. Thus, different experts will have different influence on the prediction depending on the available features. Conclusion: We applied our method to predict the set of interacting proteins in yeast and human cells. Our method improved upon the best previous methods for this task. In addition, the weighting of the experts provides means to evaluate the prediction based on the high scoring features.
引用
收藏
页数:14
相关论文
共 50 条
[41]   Reciprocal Perspective for Improved Protein-Protein Interaction Prediction [J].
Kevin Dick ;
James R. Green .
Scientific Reports, 8
[42]   Using Topology Information for Protein-Protein Interaction Prediction [J].
Birlutiu, Adriana ;
Heskes, Tom .
PATTERN RECOGNITION IN BIOINFORMATICS, PRIB 2014, 2014, 8626 :10-22
[43]   Active learning for human protein-protein interaction prediction [J].
Mohamed, Thahir P. ;
Carbonell, Jaime G. ;
Ganapathiraju, Madhavi K. .
BMC BIOINFORMATICS, 2010, 11
[44]   PIPs: human protein-protein interaction prediction database [J].
McDowall, Mark D. ;
Scott, Michelle S. ;
Barton, Geoffrey J. .
NUCLEIC ACIDS RESEARCH, 2009, 37 :D651-D656
[45]   Revolutionizing protein-protein interaction prediction with deep learning [J].
Zhang, Jing ;
Durham, Jesse ;
Cong, Qian .
CURRENT OPINION IN STRUCTURAL BIOLOGY, 2024, 85
[46]   Prediction and evaluation of protein-protein interaction in keratinocyte differentiation [J].
Yoon, Hyun Kyung ;
Sohn, Kyung-Cheol ;
Lee, Jung-Suk ;
Kim, Yu Jin ;
Bhak, Jong ;
Yang, Jun-Mo ;
You, Kwan-Hee ;
Kim, Chang-Deok ;
Lee, Jeung-Hoon .
BIOCHEMICAL AND BIOPHYSICAL RESEARCH COMMUNICATIONS, 2008, 377 (02) :662-667
[47]   Advances in Computational Methods for Protein-Protein Interaction Prediction [J].
Xian, Lei ;
Wang, Yansu .
ELECTRONICS, 2024, 13 (06)
[48]   Algorithmic approaches to protein-protein interaction site prediction [J].
Tristan T Aumentado-Armstrong ;
Bogdan Istrate ;
Robert A Murgita .
Algorithms for Molecular Biology, 10
[49]   Protein-protein interaction prediction with correlated gene ontology [J].
Qian, M ;
Wang, JZ .
PROGRESS IN BIOCHEMISTRY AND BIOPHYSICS, 2005, 32 (05) :449-455
[50]   Better Link Prediction for Protein-Protein Interaction Networks [J].
Yuen, Ho Yin ;
Jansson, Jesper .
2020 IEEE 20TH INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOENGINEERING (BIBE 2020), 2020, :53-60