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COPICAT: a software system for predicting interactions between proteins and chemical compounds
Author(s) -
Yasubumi Sakakibara,
Tsuyoshi Hachiya,
Miho Uchida,
Nobuyoshi Nagamine,
Yohei Sugawara,
Masahiro Yokota,
Masaomi Nakamura,
Kris Popendorf,
Takashi Komori,
Kengo Sato
Publication year - 2012
Publication title -
bioinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.599
H-Index - 390
eISSN - 1367-4811
pISSN - 1367-4803
DOI - 10.1093/bioinformatics/bts031
Subject(s) - chemical space , chemical database , computer science , upload , pubchem , login , classifier (uml) , software , support vector machine , drug discovery , interface (matter) , protein function , data mining , web server , machine learning , database , artificial intelligence , the internet , bioinformatics , computational biology , chemistry , operating system , biology , biochemistry , bubble , maximum bubble pressure method , gene
Since tens of millions of chemical compounds have been accumulated in public chemical databases, fast comprehensive computational methods to predict interactions between chemical compounds and proteins are needed for virtual screening of lead compounds. Previously, we proposed a novel method for predicting protein-chemical interactions using two-layer Support Vector Machine classifiers that require only readily available biochemical data, i.e. amino acid sequences of proteins and structure formulas of chemical compounds. In this article, the method has been implemented as the COPICAT web service, with an easy-to-use front-end interface. Users can simply submit a protein-chemical interaction prediction job using a pre-trained classifier, or can even train their own classification model by uploading training data. COPICAT's fast and accurate computational prediction has enhanced lead compound discovery against a database of tens of millions of chemical compounds, implying that the search space for drug discovery is extended by >1000 times compared with currently well-used high-throughput screening methodologies.

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