量子计算在药物发现技术、挑战和新兴机遇中的应用。

Virendra S Gomase, Arjun P Ghatule, Rupali Sharma, Suchita P Dhamane
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引用次数: 0

摘要

量子计算代表了计算科学的革命性进步,在药物发现,分子相互作用模拟,药物靶标结合优化以及以前所未有的速度和准确性分析复杂生物数据方面的应用。量子计算作为一种强大的工具,加速了新疗法、药物设计和复杂化学相互作用模拟的发展,包括个性化医疗策略。本研究的目的是探索量子计算在药物发现和开发中的潜力,强调其减少时间和成本的能力,同时加速确定有前途的候选药物。方法:利用Grover算法和变分量子特征求解器(VQE)等量子计算算法模拟药物的分子相互作用,优化药物设计。在案例研究中,例如IBM使用VQE进行分子模拟,这些技术证明了它们的有效性。结果:量子计算在解决几个技术障碍方面显示出了希望,例如开发时间长和成本高。此外,在分子模拟和解决药物开发过程中的挑战方面取得了成功。然而,与错误率、量子比特一致性和法规遵从性相关的挑战仍然存在。讨论:本研究探讨了量子计算在药物发现中的应用,重点介绍了量子模拟、量子机器学习和优化算法等关键技术。量子计算对于量子物理学家、计算化学家、生物学家和制药专业人员之间的跨学科合作至关重要,因为它对于克服这些障碍和实现量子技术在医学中的全部潜力至关重要。结论:量子计算在药物发现和开发方面具有巨大潜力,提供了更快、更准确和更低成本的研究途径,特别是在蛋白质折叠预测和个性化医疗等复杂领域。这种新模式在指导未来的药物开发和以患者为中心的医学方面具有巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantum Computing in Drug Discovery Techniques, Challenges, and Emerging Opportunities.

Introduction: Quantum computing represents a transformative advancement in computational science, with applications in drug discovery, molecular interaction simulation, drug-target binding optimization, and the analysis of complex biological data at unprecedented speeds and accuracy. Quantum computing emerges as a powerful tool to accelerate the development of new therapeutics, drug design, and the simulation of complex chemical interactions, including personalized medicine strategies. The objective of this study is to explore the potential of quantum computing in drug discovery and development, highlighting its ability to reduce time and costs while accelerating the identification of promising drug candidates.

Methods: Quantum computing algorithms, such as Grover's algorithm and the Variational Quantum Eigensolver (VQE), are utilized to simulate molecular interactions of drugs and optimize drug design. In case studies, such as IBM's use of VQE for molecular simulations, these technologies demonstrate their effectiveness.

Results: Quantum computing has shown promise in addressing several technological barriers, such as lengthy development timelines and high costs. Additionally, demonstrated success in molecular simulations and solving challenges during the drug development process. However, challenges related to error rates, qubit coherence, and regulatory compliance remain.

Discussion: This study examines the applications of quantum computing in drug discovery, highlighting key techniques such as quantum simulation, quantum machine learning, and optimization algorithms. Quantum computing is crucial for interdisciplinary collaboration among quantum physicists, computational chemists, biologists, and pharmaceutical professionals, as it is essential to overcoming these obstacles and realizing the full potential of quantum technologies in medicine.

Conclusion: Quantum computing holds great potential in drug discovery and development, offering accelerated, more accurate, and lower-cost research avenues, particularly in complex areas such as protein folding prediction and personalized medicine. This new paradigm has tremendous potential for guiding the future of pharmaceutical development and patient-focused medicine.

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