Title of article :
Ranking of QSAR Models to Predict Minimal Inhibitory Concentrations Toward Mycobacterium tuberculosis for a Set of Fluoroquinolones
Author/Authors :
Marjan Vracko، نويسنده , , Nikola Minovski، نويسنده , , Karoly Heberger، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Pages :
5
From page :
586
To page :
590
Abstract :
CP-ANN technique was used to build 54 different QSAR models. The models were built for three sets (assays) of fluoroquinolones considering their antituberculosis activity and using different technical parameters (dimension of network and number of learning epochs). The models served as a reliable basis for ranking by a new powerful method based on sum of ranking differences (SRD). With the applied SRD procedure we can find the optimal ones. The best model can be selected easily for the first assay. Two models can be recommended for the second assay, and no recommended model was found for the assay3.
Keywords :
Method comparison , prediction of antituberculosis activity , QSAR , modeling , ranking , Neural networks
Journal title :
Acta Chimica Slovenica
Serial Year :
2010
Journal title :
Acta Chimica Slovenica
Record number :
672270
Link To Document :
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