Artificial Intelligence in Drug Discovery and Development: Raising Quality per Decision.

IF 2.2 3区 医学 Q2 PHARMACOLOGY & PHARMACY
Pharmacopsychiatry Pub Date : 2026-05-01 Epub Date: 2026-03-05 DOI:10.1055/a-2810-8972
Shota Furukawa, Hiroyuki Uchida, Taishiro Kishimoto
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引用次数: 0

Abstract

Abstract: Drug research and development continuously encounters prolonged timelines, escalating costs, and high attrition rates. In this narrative review, we integrated recent advances in artificial intelligence across target identification, drug repurposing, de novo molecular design, structural biology, safety prediction, and artificial intelligence-supported clinical development, aligning these innovations with evolving global regulatory frameworks. Predictive and interpretable artificial intelligence could enhance the quality of decision-making throughout the research and development process when combined with causal or mechanistic priors, synthesis-aware and physics-informed molecular design, external validation with clear applicability domains, and governance systems aligned with multiple regulatory guidelines and qualified digital endpoint applications. Case studies of artificial intelligence-assisted discovery and repurposing demonstrate shorter development timelines, improved compound quality, and higher-level early-phase success, while underscoring challenges such as overfitting, model generalizability, and dataset bias. Establishing a context-of-use-based "credibility plan" and adopting equity-by-design through the inclusion of non-European datasets and subgroup performance evaluation are essential for achieving generalizable impact. Artificial intelligence integration with new approach methodologies and adaptive or covariate-adjusted clinical trials may help reduce development inefficiency without compromising scientific or ethical rigor.

人工智能在药物发现和开发中的应用:提高决策质量。
药物研究和开发不断遇到时间延长、成本上升和高损耗率的问题。在这篇叙述性综述中,我们整合了人工智能在靶标识别、药物再利用、从头开始的分子设计、结构生物学、安全性预测和人工智能支持的临床开发方面的最新进展,并将这些创新与不断发展的全球监管框架结合起来。可预测和可解释的人工智能可以提高整个研发过程的决策质量,当与因果或机制先验、合成感知和物理信息分子设计、具有明确适用领域的外部验证以及与多个监管指南和合格的数字端点应用相结合时。人工智能辅助发现和再利用的案例研究证明了更短的开发时间,提高了化合物质量,并在早期阶段取得了更高水平的成功,同时也强调了过度拟合、模型泛化和数据集偏差等挑战。建立基于使用背景的“可信度计划”,并通过纳入非欧洲数据集和分组绩效评估采用设计公平,对于实现可推广的影响至关重要。人工智能与新方法方法和自适应或协变量调整临床试验的集成可能有助于减少开发效率低下,而不会损害科学或伦理的严谨性。
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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来源期刊
Pharmacopsychiatry
Pharmacopsychiatry 医学-精神病学
CiteScore
7.10
自引率
9.30%
发文量
54
审稿时长
6-12 weeks
期刊介绍: Covering advances in the fi eld of psychotropic drugs, Pharmaco psychiatry provides psychiatrists, neuroscientists and clinicians with key clinical insights and describes new avenues of research and treatment. The pharmacological and neurobiological bases of psychiatric disorders are discussed by presenting clinical and experimental research.
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