Quantum machine learning framework for virtual screening in drug discovery: a prospective quantum advantage

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Abstract

Machine Learning for ligand based virtual screening (LB-VS) is an important in-silico tool for discovering new drugs in a faster and cost-effective manner, especially for emerging diseases such as COVID-19. In this paper, we propose a general-purpose framework combining a classical Support Vector Classifier algorithm with quantum kernel estimation for LB-VS on real-world databases, and we argue in favor of its prospective quantum advantage. Indeed, we heuristically prove that our quantum integrated workflow can, at least in some relevant instances, provide a tangible advantage compared to state-of-art classical algorithms operating on the same datasets, showing strong dependence on target and features selection method. Finally, we test our algorithm on IBM Quantum processors using ADRB2 and COVID-19 datasets, showing that hardware simulations provide results in line with the predicted performances and can surpass classical equivalents.

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Mensa, S., Sahin, E., Tacchino, F., Kl Barkoutsos, P., & Tavernelli, I. (2023). Quantum machine learning framework for virtual screening in drug discovery: a prospective quantum advantage. Machine Learning: Science and Technology, 4(1). https://doi.org/10.1088/2632-2153/acb900

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