Literature DB >> 8552655

Structure-activity relationships derived by machine learning: the use of atoms and their bond connectivities to predict mutagenicity by inductive logic programming.

R D King1, S H Muggleton, A Srinivasan, M J Sternberg.   

Abstract

We present a general approach to forming structure-activity relationships (SARs). This approach is based on representing chemical structure by atoms and their bond connectivities in combination with the inductive logic programming (ILP) algorithm PROGOL. Existing SAR methods describe chemical structure by using attributes which are general properties of an object. It is not possible to map chemical structure directly to attribute-based descriptions, as such descriptions have no internal organization. A more natural and general way to describe chemical structure is to use a relational description, where the internal construction of the description maps that of the object described. Our atom and bond connectivities representation is a relational description. ILP algorithms can form SARs with relational descriptions. We have tested the relational approach by investigating the SARs of 230 aromatic and heteroaromatic nitro compounds. These compounds had been split previously into two subsets, 188 compounds that were amenable to regression and 42 that were not. For the 188 compounds, a SAR was found that was as accurate as the best statistical or neural network-generated SARs. The PROGOL SAR has the advantages that it did not need the use of any indicator variables handcrafted by an expert, and the generated rules were easily comprehensible. For the 42 compounds, PROGOL formed a SAR that was significantly (P < 0.025) more accurate than linear regression, quadratic regression, and back-propagation. This SAR is based on an automatically generated structural alert for mutagenicity.

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Year:  1996        PMID: 8552655      PMCID: PMC40253          DOI: 10.1073/pnas.93.1.438

Source DB:  PubMed          Journal:  Proc Natl Acad Sci U S A        ISSN: 0027-8424            Impact factor:   11.205


  4 in total

1.  Drug design by machine learning: the use of inductive logic programming to model the structure-activity relationships of trimethoprim analogues binding to dihydrofolate reductase.

Authors:  R D King; S Muggleton; R A Lewis; M J Sternberg
Journal:  Proc Natl Acad Sci U S A       Date:  1992-12-01       Impact factor: 11.205

Review 2.  Structure-activity relationship of mutagenic aromatic and heteroaromatic nitro compounds. Correlation with molecular orbital energies and hydrophobicity.

Authors:  A K Debnath; R L Lopez de Compadre; G Debnath; A J Shusterman; C Hansch
Journal:  J Med Chem       Date:  1991-02       Impact factor: 7.446

3.  Quantitative structure-activity relationships by neural networks and inductive logic programming. I. The inhibition of dihydrofolate reductase by pyrimidines.

Authors:  J D Hirst; R D King; M J Sternberg
Journal:  J Comput Aided Mol Des       Date:  1994-08       Impact factor: 3.686

4.  Quantitative structure-activity relationships by neural networks and inductive logic programming. II. The inhibition of dihydrofolate reductase by triazines.

Authors:  J D Hirst; R D King; M J Sternberg
Journal:  J Comput Aided Mol Des       Date:  1994-08       Impact factor: 3.686

  4 in total
  17 in total

1.  Warmr: a data mining tool for chemical data.

Authors:  R D King; A Srinivasan; L Dehaspe
Journal:  J Comput Aided Mol Des       Date:  2001-02       Impact factor: 3.686

2.  Representation of molecular structure using quantum topology with inductive logic programming in structure-activity relationships.

Authors:  Bård Buttingsrud; Einar Ryeng; Ross D King; Bjørn K Alsberg
Journal:  J Comput Aided Mol Des       Date:  2006-10-13       Impact factor: 3.686

3.  Computational reasoning across multiple models.

Authors:  Guy Tsafnat; Enrico W Coiera
Journal:  J Am Med Inform Assoc       Date:  2009-08-28       Impact factor: 4.497

4.  The discovery of indicator variables for QSAR using inductive logic programming.

Authors:  R D King; A Srinivasan
Journal:  J Comput Aided Mol Des       Date:  1997-11       Impact factor: 3.686

5.  The development of a knowledge base for basic active structures: an example case of dopamine agonists.

Authors:  Takashi Okada; Masumi Yamakawa; Norihito Ohmori; Sachio Mori; Hiroshi Horikawa; Taketo Hayashi; Satoshi Fujishima
Journal:  Chem Cent J       Date:  2010-01-23       Impact factor: 4.215

6.  QSAR modeling for predicting mutagenic toxicity of diverse chemicals for regulatory purposes.

Authors:  Nikita Basant; Shikha Gupta
Journal:  Environ Sci Pollut Res Int       Date:  2017-04-24       Impact factor: 4.223

7.  Can machine learning models predict failure of revision total hip arthroplasty?

Authors:  Christian Klemt; Wayne Brian Cohen-Levy; Matthew Gerald Robinson; Jillian C Burns; Kyle Alpaugh; Ingwon Yeo; Young-Min Kwon
Journal:  Arch Orthop Trauma Surg       Date:  2022-05-04       Impact factor: 3.067

8.  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

9.  2D-Qsar for 450 types of amino acid induction peptides with a novel substructure pair descriptor having wider scope.

Authors:  Tsutomu Osoda; Satoru Miyano
Journal:  J Cheminform       Date:  2011-11-02       Impact factor: 5.514

10.  In-silico predictive mutagenicity model generation using supervised learning approaches.

Authors:  Abhik Seal; Anurag Passi; Uc Abdul Jaleel; David J Wild
Journal:  J Cheminform       Date:  2012-05-15       Impact factor: 5.514

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