Application of genetic algorithm-support vector machine (GA-SVM) for prediction of BK-channels activity.
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Eslam Pourbasheer | Mohammad Reza Ganjali | Parviz Norouzi | Siavash Riahi | M. Ganjali | P. Norouzi | S. Riahi | E. Pourbasheer
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