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dc.contributor.authorFreitas, AA
dc.contributor.authorLimbu, K
dc.contributor.authorGhafourian, T
dc.date.accessioned2018-08-26T07:44:07Z
dc.date.available2018-08-26T07:44:07Z
dc.date.issued2015
dc.identifier.urihttp://dspace.tbzmed.ac.ir:8080/xmlui/handle/123456789/48129
dc.description.abstractBackground: Volume of distribution is an important pharmacokinetic property that indicates the extent of a drug's distribution in the body tissues. This paper addresses the problem of how to estimate the apparent volume of distribution at steady state (Vss) of chemical compounds in the human body using decision tree-based regression methods from the area of data mining (or machine learning). Hence, the pros and cons of several different types of decision tree-based regression methods have been discussed. The regression methods predict Vss using, as predictive features, both the compounds' molecular descriptors and the compounds' tissue: plasma partition coefficients (K-t:p) - often used in physiologically-based pharmacokinetics. Therefore, this work has assessed whether the data mining-based prediction of Vss can be made more accurate by using as input not only the compounds' molecular descriptors but also (a subset of) their predicted K-t:p values. Results: Comparison of the models that used only molecular descriptors, in particular, the Bagging decision tree (mean fold error of 2.33), with those employing predicted K-t:p values in addition to the molecular descriptors, such as the Bagging decision tree using adipose K-t:p (mean fold error of 2.29), indicated that the use of predicted K-t:p values as descriptors may be beneficial for accurate prediction of Vss using decision trees if prior feature selection is applied. Conclusions: Decision tree based models presented in this work have an accuracy that is reasonable and similar to the accuracy of reported Vss inter-species extrapolations in the literature. The estimation of Vss for new compounds in drug discovery will benefit from methods that are able to integrate large and varied sources of data and flexible non-linear data mining methods such as decision trees, which can produce interpretable models.
dc.language.isoEnglish
dc.relation.ispartofJOURNAL OF CHEMINFORMATICS
dc.subjectVolume of distribution
dc.subjectTissue partition
dc.subjectQSAR
dc.subjectQSPkR
dc.subjectData mining
dc.subjectMachine learning
dc.subjectDecision tree
dc.subjectPharmacokinetics
dc.subjectADME
dc.titlePredicting volume of distribution with decision tree-based regression methods using predicted tissue:plasma partition coefficients
dc.typeArticle
dc.citation.volume7
dc.citation.indexWeb of science
dc.identifier.DOIhttps://doi.org/10.1186/s13321-015-0054-x


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