학술논문

Link Mining for Kernel-based Compound-Protein Interaction Predictions Using a Chemogenomics Approach
Document Type
Working Paper
Source
In the Thirteenth International Conference on Intelligent Computing (ICIC2017), Lecture Notes in Computer Science, 10362: 549-558, 2017
Subject
Quantitative Biology - Quantitative Methods
Computer Science - Computational Engineering, Finance, and Science
Statistics - Machine Learning
J.3
Language
Abstract
Virtual screening (VS) is widely used during computational drug discovery to reduce costs. Chemogenomics-based virtual screening (CGBVS) can be used to predict new compound-protein interactions (CPIs) from known CPI network data using several methods, including machine learning and data mining. Although CGBVS facilitates highly efficient and accurate CPI prediction, it has poor performance for prediction of new compounds for which CPIs are unknown. The pairwise kernel method (PKM) is a state-of-the-art CGBVS method and shows high accuracy for prediction of new compounds. In this study, on the basis of link mining, we improved the PKM by combining link indicator kernel (LIK) and chemical similarity and evaluated the accuracy of these methods. The proposed method obtained an average area under the precision-recall curve (AUPR) value of 0.562, which was higher than that achieved by the conventional Gaussian interaction profile (GIP) method (0.425), and the calculation time was only increased by a few percent.