Artificial intelligence as a tool in drug discovery and development.

Maria Kokudeva, Mincho Vichev, Emilia Naseva, Dimitrina Georgieva Miteva, Tsvetelina Velikova
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引用次数: 0

Abstract

The rapidly advancing field of artificial intelligence (AI) has garnered substantial attention for its potential application in drug discovery and development. This opinion review critically examined the feasibility and prospects of integrating AI as a transformative tool in the pharmaceutical industry. AI, encompassing machine learning algorithms, deep learning, and data analytics, offers unprecedented opportunities to streamline and enhance various stages of drug development. This opinion review delved into the current landscape of AI-driven approaches, discussing their utilization in target identification, lead optimization, and predictive modeling of pharmacokinetics and toxicity. We aimed to scrutinize the integration of large-scale omics data, electronic health records, and chemical informatics, highlighting the power of AI in uncovering novel therapeutic targets and accelerating drug repurposing strategies. Despite the considerable potential of AI, the review also addressed inherent challenges, including data privacy concerns, interpretability of AI models, and the need for robust validation in real-world clinical settings. Additionally, we explored ethical considerations surrounding AI-driven decision-making in drug development. This opinion review provided a nuanced perspective on the transformative role of AI in drug discovery by discussing the existing literature and emerging trends, presenting critical insights and addressing potential hurdles. In conclusion, this study aimed to stimulate discourse within the scientific community and guide future endeavors to harness the full potential of AI in drug development.

人工智能作为药物发现和开发的工具。
快速发展的人工智能(AI)领域因其在药物发现和开发中的潜在应用而备受关注。本评论对将人工智能作为制药业变革工具的可行性和前景进行了批判性研究。人工智能包括机器学习算法、深度学习和数据分析,为简化和加强药物开发的各个阶段提供了前所未有的机遇。这篇观点综述深入探讨了人工智能驱动方法的现状,讨论了这些方法在靶点识别、先导物优化以及药代动力学和毒性预测建模中的应用。我们旨在仔细研究大规模全息数据、电子健康记录和化学信息学的整合,强调人工智能在发现新的治疗靶点和加速药物再利用战略方面的力量。尽管人工智能潜力巨大,但综述也探讨了其固有的挑战,包括数据隐私问题、人工智能模型的可解释性以及在真实临床环境中进行稳健验证的必要性。此外,我们还探讨了药物开发中人工智能驱动决策的伦理问题。本观点综述通过讨论现有文献和新兴趋势、提出重要见解和解决潜在障碍,为人工智能在药物研发中的变革性作用提供了一个细致入微的视角。总之,本研究旨在激发科学界的讨论,并指导未来在药物开发中充分利用人工智能潜力的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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0.00%
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