Literature DB >> 17451225

A novel logic-based approach for quantitative toxicology prediction.

Ata Amini1, Stephen H Muggleton, Huma Lodhi, Michael J E Sternberg.   

Abstract

There is a pressing need for accurate in silico methods to predict the toxicity of molecules that are being introduced into the environment or are being developed into new pharmaceuticals. Predictive toxicology is in the realm of structure activity relationships (SAR), and many approaches have been used to derive such SAR. Previous work has shown that inductive logic programming (ILP) is a powerful approach that circumvents several major difficulties, such as molecular superposition, faced by some other SAR methods. The ILP approach reasons with chemical substructures within a relational framework and yields chemically understandable rules. Here, we report a general new approach, support vector inductive logic programming (SVILP), which extends the essentially qualitative ILP-based SAR to quantitative modeling. First, ILP is used to learn rules, the predictions of which are then used within a novel kernel to derive a support-vector generalization model. For a highly heterogeneous dataset of 576 molecules with known fathead minnow fish toxicity, the cross-validated correlation coefficients (R2CV) from a chemical descriptor method (CHEM) and SVILP are 0.52 and 0.66, respectively. The ILP, CHEM, and SVILP approaches correctly predict 55, 58, and 73%, respectively, of toxic molecules. In a set of 165 unseen molecules, the R2 values from the commercial software TOPKAT and SVILP are 0.26 and 0.57, respectively. In all calculations, SVILP showed significant improvements in comparison with the other methods. The SVILP approach has a major advantage in that it uses ILP automatically and consistently to derive rules, mostly novel, describing fragments that are toxicity alerts. The SVILP is a general machine-learning approach and has the potential of tackling many problems relevant to chemoinformatics including in silico drug design.

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Year:  2007        PMID: 17451225     DOI: 10.1021/ci600223d

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  4 in total

1.  Discovering rules for protein-ligand specificity using support vector inductive logic programming.

Authors:  Lawrence A Kelley; Paul J Shrimpton; Stephen H Muggleton; Michael J E Sternberg
Journal:  Protein Eng Des Sel       Date:  2009-07-02       Impact factor: 1.650

2.  Low potency toxins reveal dense interaction networks in metabolism.

Authors:  William Bains
Journal:  BMC Syst Biol       Date:  2016-02-20

3.  Prior Knowledge for Predictive Modeling: The Case of Acute Aquatic Toxicity.

Authors:  Gulnara Shavalieva; Stavros Papadokonstantakis; Gregory Peters
Journal:  J Chem Inf Model       Date:  2022-08-23       Impact factor: 6.162

4.  Incorporating Virtual Reactions into a Logic-based Ligand-based Virtual Screening Method to Discover New Leads.

Authors:  Christopher R Reynolds; Stephen H Muggleton; Michael J E Sternberg
Journal:  Mol Inform       Date:  2015-03-20       Impact factor: 3.353

  4 in total

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