Skip NavigationSkip to Content

Improving (Q)SAR predictions by examining bias in the selection of compounds for experimental testing

  1. Author:
    Pogodin, P V
    Lagunin, A A [ORCID]
    Filimonov, D A [ORCID]
    Nicklaus,Marc
    Poroikov, V V [ORCID]
  2. Author Address

    Department of Bioinformatics, Institute of Biomedical Chemistry , Moscow , Russia., Department of Bioinformatics, Medical-Biological Department, Pirogov Russian National Research Medical University , Moscow , Russia., Computer-Aided Drug Design Group, Chemical Biology Laboratory, Center for Cancer Research, National Cancer Institute, NIH, NCI-Frederick , Frederick , MD , USA.,
    1. Year: 2019
    2. Date: OCT 3
    3. Epub Date: 2019 09 24
  1. Journal: SAR and QSAR in environmental research
    1. 30
    2. 10
    3. Pages: 759-773
  2. Type of Article: Article
  3. ISSN: 1062-936X
  1. Abstract:

    Existing data on structures and biological activities are limited and distributed unevenly across distinct molecular targets and chemical compounds. The question arises if these data represent an unbiased sample of the general population of chemical-biological interactions. To answer this question, we analyzed ChEMBL data for 87,583 molecules tested against 919 protein targets using supervised and unsupervised approaches. Hierarchical clustering of the Murcko frameworks generated using Chemistry Development Toolkit showed that the available data form a big diffuse cloud without apparent structure. In contrast hereto, PASS-based classifiers allowed prediction whether the compound had been tested against the particular molecular target, despite whether it was active or not. Thus, one may conclude that the selection of chemical compounds for testing against specific targets is biased, probably due to the influence of prior knowledge. We assessed the possibility to improve (Q)SAR predictions using this fact: PASS prediction of the interaction with the particular target for compounds predicted as tested against the target has significantly higher accuracy than for those predicted as untested (average ROC AUC are about 0.87 and 0.75, respectively). Thus, considering the existing bias in the data of the training set may increase the performance of virtual screening.

    See More

External Sources

  1. DOI: 10.1080/1062936X.2019.1665580
  2. PMID: 31547686
  3. WOS: 000487464700001

Library Notes

  1. Fiscal Year: FY2019-2020
NCI at Frederick

You are leaving a government website.

This external link provides additional information that is consistent with the intended purpose of this site. The government cannot attest to the accuracy of a non-federal site.

Linking to a non-federal site does not constitute an endorsement by this institution or any of its employees of the sponsors or the information and products presented on the site. You will be subject to the destination site's privacy policy when you follow the link.

ContinueCancel