2023
DOI: 10.3233/idt-230145
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Bio-inspired algorithm-based hyperparameter tuning for drug-target binding affinity prediction in healthcare

Abstract: The greatest challenge for healthcare in drug repositioning and discovery is identifying interactions between known drugs and targets. Experimental methods can reveal some drug-target interactions (DTI) but identifying all of them is an expensive and time-consuming endeavor. Machine learning-based algorithms currently cover the DTI prediction problem as a binary classification problem. However, the performance of the DTI prediction is negatively impacted by the lack of experimentally validated negative samples… Show more

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