Graph Kernels for Molecular Structure−Activity Relationship Analysis with Support Vector Machines

Pierre Mahé,* Nobuhisa Ueda, Tatsuya Akutsu, Jean-Luc Perret, and Jean-Philippe Vert
Ecole des Mines de Paris, 35 rue Saint Honor, 77305 Fontainebleau, France, and Bioinformatics Center, Institute for Chemical Research, Kyoto University, Uji, Kyoto 611-0011, Japan
J. Chem. Inf. Model., 2005, 45 (4), pp 939–951
DOI: 10.1021/ci050039t
Publication Date (Web): May 27, 2005
Copyright © 2005 American Chemical Society
*

 Corresponding author phone: (+33) 1 64 69 49 94; e-mail: pierre.mahe@ensmp.fr.

,

 Ecole des Mines de Paris.

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 Kyoto University.

Abstract

The support vector machine algorithm together with graph kernel functions has recently been introduced to model structure−activity relationships (SAR) of molecules from their 2D structure, without the need for explicit molecular descriptor computation. We propose two extensions to this approach with the double goal to reduce the computational burden associated with the model and to enhance its predictive accuracy: description of the molecules by a Morgan index process and definition of a second-order Markov model for random walks on 2D structures. Experiments on two mutagenicity data sets validate the proposed extensions, making this approach a possible complementary alternative to other modeling strategies.

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History

  • Published In Issue July 25, 2005
  • Received February 2, 2005

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