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      Identifying novel protein phenotype annotations by hybridizing protein-protein interactions and protein sequence similarities.

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          Abstract

          Studies of protein phenotypes represent a central challenge of modern genetics in the post-genome era because effective and accurate investigation of protein phenotypes is one of the most critical procedures to identify functional biological processes in microscale, which involves the analysis of multifactorial traits and has greatly contributed to the development of modern biology in the post genome era. Therefore, we have developed a novel computational method that identifies novel proteins associated with certain phenotypes in yeast based on the protein-protein interaction network. Unlike some existing network-based computational methods that identify the phenotype of a query protein based on its direct neighbors in the local network, the proposed method identifies novel candidate proteins for a certain phenotype by considering all annotated proteins with this phenotype on the global network using a shortest path (SP) algorithm. The identified proteins are further filtered using both a permutation test and their interactions and sequence similarities to annotated proteins. We compared our method with another widely used method called random walk with restart (RWR). The biological functions of proteins for each phenotype identified by our SP method and the RWR method were analyzed and compared. The results confirmed a large proportion of our novel protein phenotype annotation, and the RWR method showed a higher false positive rate than the SP method. Our method is equally effective for the prediction of proteins involving in all the eleven clustered yeast phenotypes with a quite low false positive rate. Considering the universality and generalizability of our supporting materials and computing strategies, our method can further be applied to study other organisms and the new functions we predicted can provide pertinent instructions for the further experimental verifications.

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          Author and article information

          Journal
          Mol. Genet. Genomics
          Molecular genetics and genomics : MGG
          1617-4623
          1617-4623
          Apr 2016
          : 291
          : 2
          Affiliations
          [1 ] School of Life Sciences, Shanghai University, Shanghai, 200444, People's Republic of China. chen_lei1@163.com.
          [2 ] College of Information Engineering, Shanghai Maritime University, Shanghai, 201306, People's Republic of China. chen_lei1@163.com.
          [3 ] Institute of Health Sciences, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai, 200031, People's Republic of China.
          [4 ] School of Life Sciences, Shanghai University, Shanghai, 200444, People's Republic of China. cai_yud@126.com.
          Article
          10.1007/s00438-015-1157-9
          10.1007/s00438-015-1157-9
          26728152
          fcfcfd69-19c3-40bc-bc48-bc6aca237bd2
          History

          Phenotype,Protein sequence similarity,Protein–protein interaction,Shortest path algorithm

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