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基于天然产物的抗癌药物发现:从计算方法到临床研究

Anticancer Drug Discovery Based on Natural Products: From Computational Approaches to Clinical Studies.

作者信息

Chunarkar-Patil Pritee, Kaleem Mohammed, Mishra Richa, Ray Subhasree, Ahmad Aftab, Verma Devvret, Bhayye Sagar, Dubey Rajni, Singh Himanshu Narayan, Kumar Sanjay

机构信息

Department of Bioinformatics, Rajiv Gandhi Institute of IT and Biotechnology, Bharati Vidyapeeth (Deemed to be University), Pune 411046, Maharashtra, India.

Department of Pharmacology, Dadasaheb Balpande, College of Pharmacy, Nagpur 440037, Maharashtra, India.

出版信息

Biomedicines. 2024 Jan 16;12(1):201. doi: 10.3390/biomedicines12010201.

Abstract

Globally, malignancies cause one out of six mortalities, which is a serious health problem. Cancer therapy has always been challenging, apart from major advances in immunotherapies, stem cell transplantation, targeted therapies, hormonal therapies, precision medicine, and palliative care, and traditional therapies such as surgery, radiation therapy, and chemotherapy. Natural products are integral to the development of innovative anticancer drugs in cancer research, offering the scientific community the possibility of exploring novel natural compounds against cancers. The role of natural products like Vincristine and Vinblastine has been thoroughly implicated in the management of leukemia and Hodgkin's disease. The computational method is the initial key approach in drug discovery, among various approaches. This review investigates the synergy between natural products and computational techniques, and highlights their significance in the drug discovery process. The transition from computational to experimental validation has been highlighted through in vitro and in vivo studies, with examples such as betulinic acid and withaferin A. The path toward therapeutic applications have been demonstrated through clinical studies of compounds such as silvestrol and artemisinin, from preclinical investigations to clinical trials. This article also addresses the challenges and limitations in the development of natural products as potential anti-cancer drugs. Moreover, the integration of deep learning and artificial intelligence with traditional computational drug discovery methods may be useful for enhancing the anticancer potential of natural products.

摘要

在全球范围内,恶性肿瘤导致六分之一的死亡,这是一个严重的健康问题。除了免疫疗法、干细胞移植、靶向疗法、激素疗法、精准医学和姑息治疗等方面取得重大进展,以及手术、放射治疗和化疗等传统疗法外,癌症治疗一直具有挑战性。天然产物在癌症研究中创新抗癌药物的开发中不可或缺,为科学界提供了探索新型抗癌天然化合物的可能性。长春新碱和长春碱等天然产物在白血病和霍奇金病的治疗中的作用已得到充分证实。在各种药物发现方法中,计算方法是初始关键方法。本综述研究了天然产物与计算技术之间的协同作用,并强调了它们在药物发现过程中的重要性。通过体外和体内研究,以桦木酸和Withaferin A等为例,突出了从计算到实验验证的转变。从临床前研究到临床试验,通过对诸如白藜芦醇和青蒿素等化合物的临床研究,展示了通往治疗应用的途径。本文还讨论了天然产物作为潜在抗癌药物开发中的挑战和局限性。此外,将深度学习和人工智能与传统计算药物发现方法相结合,可能有助于提高天然产物的抗癌潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f850/10813144/06f014bc8f7d/biomedicines-12-00201-g001.jpg

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