Literature DB >> 3905377

Toxicity modeling and prediction with pattern recognition.

S Wold, W J Dunn, S Hellberg.   

Abstract

Empirical models can be constructed relating the change in toxicity to the change in chemical structure for series of similar compounds or mixtures. The first step is to translate the variation in structure to quantitative numbers. This gives a data table, a data matrix denoted by X, which then is analyzed. The same type of the models can be used to relate the variation of in vivo data to the variation of a battery of in vitro tests. A single data analytical model cannot be applied to a set of compounds of diverse chemical structure. For such data sets, separate models must be developed for each subgroup of compounds. The data analytical problem then partly is one of classification, pattern recognition (PARC). The assumption of structural and biological similarity within each subset of modeled compounds is then essential for empirical models to apply. PARC is often used to classify compounds as active (toxic) or inactive. The data structure is then often asymmetric which puts special demands on the data analysis, making the traditional PARC methods inapplicable. Depending on the desired information from the data analysis and on the type of available data, four levels of PARC can be distinguished: (I) the data X are used to develop rules for classifying future compounds into one of the classes represented in X; (II) same as I, but the possibility of future compounds belonging to "unknown" classes not represented in X is taken into account; (III) same as II, plus the quantitative prediction of one activity variable (here toxicity) in some classes; (IV) same as III, but several quantitative activity (toxicity) variables are predicted.

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Year:  1985        PMID: 3905377      PMCID: PMC1568772          DOI: 10.1289/ehp.8561257

Source DB:  PubMed          Journal:  Environ Health Perspect        ISSN: 0091-6765            Impact factor:   9.031


  9 in total

1.  A structure-carcinogenicity study of 4-nitroquinoline 1-oxides using the SIMCA method of pattern recognition.

Authors:  W J Dunn; S Wold
Journal:  J Med Chem       Date:  1978-10       Impact factor: 7.446

2.  Computer-assisted structure-activity studies of chemical carcinogens. A heterogeneous data set.

Authors:  P C Jurs; J T Chou; M Yuan
Journal:  J Med Chem       Date:  1979-05       Impact factor: 7.446

3.  Teratogenesis: a statistical structure-activity model.

Authors:  K Enslein; T R Lander; J R Strange
Journal:  Teratog Carcinog Mutagen       Date:  1983

4.  Chance factors in studies of quantitative structure-activity relationships.

Authors:  J G Topliss; R P Edwards
Journal:  J Med Chem       Date:  1979-10       Impact factor: 7.446

5.  Computer methods for the assessment of toxicity.

Authors:  S Wold; S Hellberg; W J Dunn
Journal:  Acta Pharmacol Toxicol (Copenh)       Date:  1983

6.  Carcinogenicity of polycyclic aromatic hydrocarbons studied by SIMCA pattern recognition.

Authors:  B Nordén; U Edlund; S Wold
Journal:  Acta Chem Scand B       Date:  1978

7.  Structure-activity analyzed by pattern recognition: the asymmetric case.

Authors:  W J Dunn; S Wold
Journal:  J Med Chem       Date:  1980-06       Impact factor: 7.446

8.  Relating mutagenicity to chemical structure.

Authors:  J Tinker
Journal:  J Chem Inf Comput Sci       Date:  1981-02

9.  Cytochrome P-450 mediated genetic activity and cytotoxicity of seven halogenated aliphatic hydrocarbons in Saccharomyces cerevisiae.

Authors:  D F Callen; C R Wolf; R M Philpot
Journal:  Mutat Res       Date:  1980-01       Impact factor: 2.433

  9 in total
  3 in total

1.  Multivariate statistical approach to a data set of dioxin and furan contaminations in human milk.

Authors:  G U Lindström; M Sjöström; S E Swanson; P Fürst; C Krüger; H A Meemken; W Groebel
Journal:  Bull Environ Contam Toxicol       Date:  1988-05       Impact factor: 2.151

2.  Multivariate classification of histochemically stained human skeletal muscle fibres by the SIMCA method.

Authors:  E Bye; O Grønnerød; N B Vogt
Journal:  Histochem J       Date:  1989-01

3.  Modeling MEK4 Kinase Inhibitors through Perturbed Electrostatic Potential Charges.

Authors:  Rama K Mishra; Kristine K Deibler; Matthew R Clutter; Purav P Vagadia; Matthew O'Connor; Gary E Schiltz; Raymond Bergan; Karl A Scheidt
Journal:  J Chem Inf Model       Date:  2019-10-14       Impact factor: 4.956

  3 in total

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