A Drug-Target Network-Based Supervised Machine Learning Repurposing Method Allowing the Use of Multiple Heterogeneous Information Sources.

Journal: Methods in molecular biology (Clifton, N.J.)
Published Date:

Abstract

Drug-target networks have an important role in pharmaceutical innovation, drug lead discovery, and recent drug repositioning tasks. Many different in silico approaches for the identification of new drug-target interactions have been proposed, many of them based on a particular class of machine learning algorithms called kernel methods. These pattern classification algorithms are able to incorporate previous knowledge in the form of similarity functions, i.e., a kernel, and they have been successful in a wide range of supervised learning problems. The selection of the right kernel function and its respective parameters can have a large influence on the performance of the classifier. Recently, multiple kernel learning algorithms have been introduced to address this problem, enabling one to combine multiple kernels into large drug-target interaction spaces in order to integrate multiple sources of biological information simultaneously. The Kronecker regularized least squares with multiple kernel learning (KronRLS-MKL) is a machine learning algorithm that aims at integrating heterogeneous information sources into a single chemogenomic space to predict new drug-target interactions. This chapter describes how to obtain data from heterogeneous sources and how to implement and use KronRLS-MKL to predict new interactions.

Authors

  • André C A Nascimento
    Department of Computing, UFRPE, Recife, Brazil. andre.camara@ufrpe.br.
  • Ricardo B C Prudêncio
    Universidade Federal de Pernambuco, Centro de Informática, Av. Jornalista Aníbal Fernandes, s/n, 50.740-560 Recife (PE), Brazil. Electronic address: rbcp@cin.ufpe.br.
  • Ivan G Costa
    Institute for Computational Genomics, Centre of Medical Technology (MTZ), RWTH Aachen University Medical School, Aachen, Germany.