Literature DB >> 25616540

In Silico Predictions of Human Skin Permeability using Nonlinear Quantitative Structure-Property Relationship Models.

Hiromi Baba1, Jun-ichi Takahara, Hiroshi Mamitsuka.   

Abstract

PURPOSE: Predicting human skin permeability of chemical compounds accurately and efficiently is useful for developing dermatological medicines and cosmetics. However, previous work have two problems; 1) quality of databases used, and 2) methods for prediction models. In this paper, we attempt to solve these two problems.
METHODS: We first compile, by carefully screening from the literature, a novel dataset of chemical compounds with permeability coefficients, measured under consistent experimental conditions. We then apply machine learning techniques such as support vector regression (SVR) and random forest (RF) to our database to develop prediction models. Molecular descriptors are fully computationally obtained, and greedy stepwise selection is employed for descriptor selection. Prediction models are internally and externally validated.
RESULTS: We generated an original, new database on human skin permeability of 211 different compounds from aqueous donors. Nonlinear SVR achieved the best performance among linear SVR, nonlinear SVR, and RF. The determination coefficient, root mean square error, and mean absolute error of nonlinear SVR in external validation were 0.910, 0.342, and 0.282, respectively.
CONCLUSIONS: We provided one of the largest datasets with purely experimental log kp and developed reliable and accurate prediction models for screening active ingredients and seeking unsynthesized compounds of dermatological medicines and cosmetics.

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Year:  2015        PMID: 25616540     DOI: 10.1007/s11095-015-1629-y

Source DB:  PubMed          Journal:  Pharm Res        ISSN: 0724-8741            Impact factor:   4.200


  42 in total

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5.  Investigation of the mechanism of flux across human skin in vitro by quantitative structure-permeability relationships.

Authors:  M T Cronin; J C Dearden; G P Moss; G Murray-Dickson
Journal:  Eur J Pharm Sci       Date:  1999-03       Impact factor: 4.384

6.  Prediction of human skin permeability using a combination of molecular orbital calculations and artificial neural network.

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Journal:  Biol Pharm Bull       Date:  2002-03       Impact factor: 2.233

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Authors:  A Wilschut; W F ten Berge; P J Robinson; T E McKone
Journal:  Chemosphere       Date:  1995-04       Impact factor: 7.086

8.  Skin permeability in vivo: comparison in rat, rabbit, pig and man.

Authors:  M J Bartek; J A LaBudde; H I Maibach
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10.  Nonlinear quantitative structure-property relationship modeling of skin permeation coefficient.

Authors:  Brian J Neely; Sundararajan V Madihally; Robert L Robinson; Khaled A M Gasem
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  10 in total

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4.  Evaluating Molecular Properties Involved in Transport of Small Molecules in Stratum Corneum: A Quantitative Structure-Activity Relationship for Skin Permeability.

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Journal:  Molecules       Date:  2018-04-15       Impact factor: 4.411

Review 5.  Machine Learning-based Virtual Screening and Its Applications to Alzheimer's Drug Discovery: A Review.

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6.  HuskinDB, a database for skin permeation of xenobiotics.

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7.  Antitumor component recognition from the Aconiti Lateralis Radix Praeparata and Glycyrrhizae Radix et Rhizoma herb pair extract by chemometrics and mean impact value.

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8.  A Mathematical Approach Using Strat-M® to Predict the Percutaneous Absorption of Chemicals under Finite Dose Conditions.

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9.  Predicting skin permeability using HuskinDB.

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10.  Percutaneous absorption of thirty-eight organic solvents in vitro using pig skin.

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  10 in total

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