Egyszerű nézet

dc.contributor.author Arany Ádám
dc.contributor.author Bolgar B
dc.contributor.author Balogh Balázs
dc.contributor.author Antal P
dc.contributor.author Mátyus Péter
dc.date.accessioned 2014-08-12T11:43:52Z
dc.date.available 2014-08-12T11:43:52Z
dc.date.issued 2013
dc.identifier 8487295847
dc.identifier.citation pagination=95-107; journalVolume=20; journalIssueNumber=1; journalTitle=CURRENT MEDICINAL CHEMISTRY;
dc.identifier.uri http://repo.lib.semmelweis.hu//handle/123456789/328
dc.identifier.uri doi:10.2174/0929867311302010010
dc.description.abstract Drug repositioning, an innovative therapeutic application of an old drug, has received much attention as a particularly costeffective strategy in drug R&D Recent work has indicated that repositioning can be promoted by utilizing a wide range of information sources, including medicinal chemical, target, mechanism, main and side-effect-related information, and also bibliometric and taxonomical fingerprints, signatures and knowledge bases. This article describes the adaptation of a conceptually novel, more efficient approach for the identification of new possible therapeutic applications of approved drugs and drug candidates, based on a kernel-based data fusion method. This strategy includes (1) the potentially multiple representation of information sources, (2) the automated weighting and statistically optimal combination of information sources, and (3) the automated weighting of parts of the query compounds. The performance was systematically evaluated by using Anatomical Therapeutic Chemical Classification System classes in a cross-validation framework. The results confirmed that kernel-based data fusion can integrate heterogeneous information sources significantly better than standard rank-based fusion can, and this method provides a unique solution for repositioning; it can also be utilized for de novo drug discovery. The advantages of kernel-based data fusion are illustrated with examples and open problems that are particularly relevant for pharmaceutical applications.
dc.relation.ispartof urn:issn:0929-8673
dc.title Multi-aspect candidates for repositioning: data fusion methods using heterogeneous information sources.
dc.type Journal Article
dc.date.updated 2014-08-12T11:39:37Z
dc.language.rfc3066 en
dc.identifier.mtmt 2186091
dc.identifier.wos 000314093000010
dc.identifier.pubmed 23210850
dc.contributor.department PPKE/Információs Technológiai Kar
dc.contributor.department SE/GYTK/Szerves Vegytani Intézet
dc.contributor.department Budapesti Műszaki és Gazdaságtudományi Egyetem
dc.contributor.department BME/VIK/Méréstechnika és Információs Rendszerek Tanszék
dc.contributor.institution Pázmány Péter Katolikus Egyetem
dc.contributor.institution Semmelweis Egyetem
dc.contributor.institution Budapesti Műszaki és Gazdaságtudományi Egyetem


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