A discriminant model constructed by the support vector machine method for HERG potassium channel inhibitors |
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Authors: | Tobita Motoi Nishikawa Tetsuo Nagashima Renpei |
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Affiliation: | Reverse proteomics research institute, Kisarazu-si, Chiba, Japan. toby@rd.hitachi.co.jp |
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Abstract: | HERG attracts attention as a risk factor for arrhythmia, which might trigger torsade de pointes. A highly accurate classifier of chemical compounds for inhibition of the HERG potassium channel is constructed using support vector machine. For two test sets, our discriminant models achieved 90% and 95% accuracy, respectively. The classifier is even applied for the prediction of cardio vascular adverse effects to achieve about 70% accuracy. While modest inhibitors are partly characterized by properties linked to global structure of a molecule including hydrophobicity and diameter, strong inhibitors are exclusively characterized by properties linked to substructures of a molecule. |
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