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Large-Scale Protein-Protein Interactions Detection by Integrating Big Biosensing Data with Computational Model
Author(s) -
ZhuHong You,
Shuai Li,
Xin Gao,
Xin Luo,
Zhen Ji
Publication year - 2014
Publication title -
biomed research international
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.772
H-Index - 126
eISSN - 2314-6141
pISSN - 2314-6133
DOI - 10.1155/2014/598129
Subject(s) - computer science , support vector machine , identification (biology) , scale (ratio) , human proteins , throughput , biosensor , machine learning , representation (politics) , sensitivity (control systems) , artificial intelligence , data mining , computational biology , biology , engineering , telecommunications , biochemistry , botany , physics , quantum mechanics , politics , gene , political science , law , wireless , electronic engineering
Protein-protein interactions are the basis of biological functions, and studying these interactions on a molecular level is of crucial importance for understanding the functionality of a living cell. During the past decade, biosensors have emerged as an important tool for the high-throughput identification of proteins and their interactions. However, the high-throughput experimental methods for identifying PPIs are both time-consuming and expensive. On the other hand, high-throughput PPI data are often associated with high false-positive and high false-negative rates. Targeting at these problems, we propose a method for PPI detection by integrating biosensor-based PPI data with a novel computational model. This method was developed based on the algorithm of extreme learning machine combined with a novel representation of protein sequence descriptor. When performed on the large-scale human protein interaction dataset, the proposed method achieved 84.8% prediction accuracy with 84.08% sensitivity at the specificity of 85.53%. We conducted more extensive experiments to compare the proposed method with the state-of-the-art techniques, support vector machine. The achieved results demonstrate that our approach is very promising for detecting new PPIs, and it can be a helpful supplement for biosensor-based PPI data detection.

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