Quantum Machine Learning Framework for Virtual Screening in Drug Discovery: a Prospective Quantum Advantage
Quantum Machine Learning Framework for Virtual Screening in Drug Discovery: a Prospective Quantum Advantage
Machine Learning (ML) 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 (SVC) 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.
Stefano Mensa、Francesco Tacchino、Panagiotis Kl. Barkoutsos、Emre Sahin、Ivano Tavernelli
药学生物科学研究方法、生物科学研究技术计算技术、计算机技术
Stefano Mensa,Francesco Tacchino,Panagiotis Kl. Barkoutsos,Emre Sahin,Ivano Tavernelli.Quantum Machine Learning Framework for Virtual Screening in Drug Discovery: a Prospective Quantum Advantage[EB/OL].(2022-04-08)[2025-07-17].https://arxiv.org/abs/2204.04017.点此复制
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