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dc.contributor TÁMOP:TAMOP 4.2.1./B-09/KMR-2010-0003
dc.contributor.author Simon, Zoltán
dc.contributor.author Peragovics, Ágnes
dc.contributor.author Vighné Smeller, Margit Borbála
dc.contributor.author Csukly, Gábor
dc.contributor.author Tombor, László
dc.contributor.author Yang Z
dc.contributor.author Zahoranszky-Kohalmi G
dc.contributor.author Végner, László
dc.contributor.author Jelinek, Balázs
dc.contributor.author Hari P
dc.contributor.author Hetényi, Csaba
dc.contributor.author Bitter, István
dc.contributor.author Czobor, Pál
dc.contributor.author Málnási Csizmadia, András
dc.date.accessioned 2016-01-15T07:40:18Z
dc.date.available 2016-01-15T07:40:18Z
dc.date.issued 2012
dc.identifier 84858067143
dc.identifier.citation pagination=134-145; journalVolume=52; journalIssueNumber=1; journalTitle=JOURNAL OF CHEMICAL INFORMATION AND MODELING;
dc.identifier.uri http://repo.lib.semmelweis.hu//handle/123456789/2117
dc.identifier.uri doi:10.1021/ci2002022
dc.description.abstract Most drugs exert their effects via multitarget interactions, as hypothesized by polypharmacology. While these multitarget interactions are responsible for the clinical effect profiles of drugs, current methods have failed to uncover the complex relationships between them. Here, we introduce an approach which is able to relate complex drug-protein interaction profiles with effect profiles. Structural data and registered effect profiles of all small-molecule drugs were collected, and interactions to a series of nontarget protein binding sites of each drug were calculated. Statistical analyses confirmed a close relationship between the studied 177 major effect categories and interaction profiles of ca. 1200 FDA-approved small-molecule drugs. On the basis of this relationship, the effect profiles of drugs were revealed in their entirety, and hitherto uncovered effects could be predicted in a systematic manner. Our results show that the prediction power is independent of the composition of the protein set used for interaction profile generation.
dc.relation.ispartof urn:issn:1549-9596
dc.title Drug Effect Prediction by Polypharmacology-Based Interaction Profiling.
dc.type Journal Article
dc.date.updated 2015-08-10T08:00:00Z
dc.language.rfc3066 en
dc.identifier.mtmt 1803686
dc.identifier.wos 000299351600014
dc.identifier.pubmed 22098080
dc.contributor.department ELTE/TTK/Bio_I/MTA-ELTE Molekuláris Biofizikai Kutatócsoport
dc.contributor.department ELTE/TTK/Biológiai Intézet
dc.contributor.department SE/AOK/K/Pszichiátriai és Pszichoterápiás Klinika
dc.contributor.institution Eötvös Loránd Tudományegyetem
dc.contributor.institution Semmelweis Egyetem


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