Performance of the ALOGPS 2.1 program for octanol-water partition coefficient prediction with organic chemicals on the Canadian Domestic Substances List
Author(s) -
Sierra Rayne,
Kaya Forest
Publication year - 2010
Publication title -
nature precedings
Language(s) - English
Resource type - Journals
ISSN - 1756-0357
DOI - 10.1038/npre.2010.3882.2
Subject(s) - partition coefficient , octanol , digital subscriber line , partition (number theory) , statistics , environmental science , mathematics , data mining , computer science , chemistry , chromatography , combinatorics , telecommunications
The KOWWIN and ALOGPS octanol-water partition coefficient (K~ow~) estimation software programs were compared for their capacity to accurately predict log K~ow~ values of 1545 organic compounds on the publicly available Domestic Substances List (DSL) from Environment Canada for which experimental data is available. Approximately equivalent log K~ow~ error statistics were observed between KOWWIN and ALOGPS against available experimental data. Substantial predictive differences were observed between the two programs for 6529 compounds not having experimental K~ow~ data on the Canadian DSL. Predictive differences of up to 40 log K~ow~ units were found between KOWWIN and ALOGPS, and in some cases, the discrepancies were sufficiently large that strongly opposing hydrophobicity classifications were obtained
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