A computational framework for boosting confidence in high-throughput protein-protein interaction datasets

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作者
Raghavendra Hosur
Jian Peng
Arunachalam Vinayagam
Ulrich Stelzl
Jinbo Xu
Norbert Perrimon
Jadwiga Bienkowska
Bonnie Berger
机构
[1] Computer Science and Artificial Intelligence Laboratory,Department of Genetics
[2] Toyota Technological Institute,Department of Mathematics
[3] Harvard Medical School,undefined
[4] Otto-Warburg Laboratory,undefined
[5] Ihnestraβe 63-73,undefined
[6] Max Planck Institute for Molecular Genetics,undefined
[7] Howard Hughes Medical Institute,undefined
[8] Computational Biology group,undefined
[9] Biogen Idec,undefined
[10] 14 Cambridge Center,undefined
[11] MIT,undefined
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关键词
Markov Chain Monte Carlo; Protein Data Bank; Confidence Score; Interface Residue; Probabilistic Graphical Model;
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摘要
Improving the quality and coverage of the protein interactome is of tantamount importance for biomedical research, particularly given the various sources of uncertainty in high-throughput techniques. We introduce a structure-based framework, Coev2Net, for computing a single confidence score that addresses both false-positive and false-negative rates. Coev2Net is easily applied to thousands of binary protein interactions and has superior predictive performance over existing methods. We experimentally validate selected high-confidence predictions in the human MAPK network and show that predicted interfaces are enriched for cancer -related or damaging SNPs. Coev2Net can be downloaded at http://struct2net.csail.mit.edu.
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