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Muratov, E.N.* ; Bajorath, J.* ; Sheridan, R.P.* ; Tetko, I.V. ; Filimonov, D.* ; Poroikov, V.* ; Oprea, T.I.* ; Baskin, I.I.* ; Varnek, A.* ; Roitberg, A.* ; Isayev, O.* ; Curtalolo, S.* ; Fourches, D.* ; Cohen, Y.* ; Aspuru-Guzik, A.* ; Winkler, D.A.* ; Agrafiotis, D.* ; Cherkasov, A.* ; Tropsha, A.*

QSAR without borders.

Chem. Soc. Rev. 49, 3525-3564 (2020)
Postprint DOI PMC
Open Access Hybrid
Creative Commons Lizenzvertrag
Prediction of chemical bioactivity and physical properties has been one of the most important applications of statistical and more recently, machine learning and artificial intelligence methods in chemical sciences. This field of research, broadly known as quantitative structure-activity relationships (QSAR) modeling, has developed many important algorithms and has found a broad range of applications in physical organic and medicinal chemistry in the past 55+ years. This Perspective summarizes recent technological advances in QSAR modeling but it also highlights the applicability of algorithms, modeling methods, and validation practices developed in QSAR to a wide range of research areas outside of traditional QSAR boundaries including synthesis planning, nanotechnology, materials science, biomaterials, and clinical informatics. As modern research methods generate rapidly increasing amounts of data, the knowledge of robust data-driven modelling methods professed within the QSAR field can become essential for scientists working both within and outside of chemical research. We hope that this contribution highlighting the generalizable components of QSAR modeling will serve to address this challenge.
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Publikationstyp Artikel: Journalartikel
Dokumenttyp Review
Schlagwörter Quantitative Structure-activity; Adverse Outcome Pathways; Activity-relationship Models; Matched Molecular Pairs; Data Mining Techniques; Deep Neural-networks; Biological-activity; Industrial-chemicals; Activity Prediction; Organic-reactions
Sprache englisch
Veröffentlichungsjahr 2020
HGF-Berichtsjahr 2020
ISSN (print) / ISBN 0306-0012
e-ISSN 1460-4744
Quellenangaben Band: 49, Heft: 11, Seiten: 3525-3564 Artikelnummer: , Supplement: ,
Verlag Royal Society of Chemistry (RSC)
Verlagsort London
Begutachtungsstatus Peer reviewed
POF Topic(s) 30203 - Molecular Targets and Therapies
Forschungsfeld(er) Enabling and Novel Technologies
PSP-Element(e) G-503000-001
PubMed ID 32356548
Erfassungsdatum 2020-05-07