Applicability Domain ANalysis (ADAN)

Author(s)
Pau Carrió, Marta Pinto, Gerhard Ecker, Ferran Sanz, Manuel Pastor
Abstract

We report a novel method called ADAN (Applicability Domain ANalysis) for assessing the reliability of drug property predictions obtained by in silico methods. The assessment provided by ADAN is based on the comparison of the query compound with the training set, using six diverse similarity criteria. For every criterion, the query compound is considered out of range when the similarity value obtained is larger than the 95th percentile of the values obtained for the training set. The final outcome is a number in the range of 0-6 that expresses the number of unmet similarity criteria and allows classifying the query compound within seven reliability categories. Such categories can be further exploited to assign simpler reliability classes using a traffic light schema, to assign approximate confidence intervals or to mark the predictions as unreliable. The entire methodology has been validated simulating realistic conditions, where query compounds are structurally diverse from those in the training set. The validation exercise involved the construction of more than 1000 models. These models were built using a combination of training set, molecular descriptors, and modeling methods representative of the real predictive tasks performed in the eTOX project (a project whose objective is to predict in vivo toxicological end points in drug development). Validation results confirm the robustness of the proposed assessment methodology, which compares favorably with other classical methods based solely on the structural similarity of the compounds. ADAN characteristics make the method well-suited for estimate the quality of drug predictions obtained in extremely unfavorable conditions, like the prediction of drug toxicity end points.

Organisation(s)
External organisation(s)
University Pompeu Fabra
Journal
Journal of Chemical Information and Modeling
Volume
54
Pages
1500-1511
No. of pages
12
ISSN
1549-9596
DOI
https://doi.org/10.1021/ci500172z
Publication date
05-2014
Peer reviewed
Yes
Austrian Fields of Science 2012
102020 Medical informatics, 301207 Pharmaceutical chemistry
ASJC Scopus subject areas
General Chemical Engineering, General Chemistry, Library and Information Sciences, Computer Science Applications
Portal url
https://ucrisportal.univie.ac.at/en/publications/1679b531-9ceb-41c3-8a91-f59928a58004