Phenotypic approaches for CNS drugs.

IF 13.9 1区 医学 Q1 PHARMACOLOGY & PHARMACY Trends in pharmacological sciences Pub Date : 2024-11-01 Epub Date: 2024-10-21 DOI:10.1016/j.tips.2024.09.003
Raahul Sharma, Caitlin R M Oyagawa, Hamid Abbasi, Michael Dragunow, Daniel Conole
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引用次数: 0

Abstract

Central nervous system (CNS) drug development is plagued by high clinical failure rate. Phenotypic assays promote clinical translation of drugs by reducing complex brain diseases to measurable, clinically valid phenotypes. We critique recent platforms integrating patient-derived brain cells, which most accurately recapitulate CNS disease phenotypes, with higher throughput models, including immortalized cells, to balance validity and scalability. These platforms were screened with conventional commercial chemogenomic compound libraries. We explore emerging library curation strategies to improve hit rate and quality, and screening novel fragment libraries as alternatives, for more tractable drug target deconvolution. The clinically relevant models used in these platforms could harbor important, unidentified drug targets, so we review evolving agnostic target deconvolution approaches, including chemical proteomics and artificial intelligence (AI), which aid in phenotypic screening hit mechanism elucidation, thereby facilitating rational hit-to-drug optimization.

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中枢神经系统药物的表型方法。
中枢神经系统(CNS)药物开发的临床失败率很高。表型化验可将复杂的脑部疾病简化为可测量的、临床上有效的表型,从而促进药物的临床转化。我们对最近的平台进行了点评,这些平台将最能准确再现中枢神经系统疾病表型的患者衍生脑细胞与包括永生细胞在内的高通量模型相结合,以平衡有效性和可扩展性。这些平台使用传统的商业化学基因组化合物库进行筛选。我们探索了新出现的化合物库整理策略,以提高命中率和质量,并筛选新型片段化合物库作为替代品,以实现更易操作的药物靶点解构。这些平台中使用的临床相关模型可能蕴藏着重要的、未确定的药物靶点,因此我们回顾了不断发展的不可知靶点解旋方法,包括化学蛋白质组学和人工智能(AI),它们有助于表型筛选的命中机制阐明,从而促进从命中到药物的合理优化。
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来源期刊
CiteScore
23.90
自引率
0.70%
发文量
132
审稿时长
6-12 weeks
期刊介绍: Trends in Pharmacological Sciences (TIPS) is a monthly peer-reviewed reviews journal that focuses on a wide range of topics in pharmacology, pharmacy, pharmaceutics, and toxicology. Launched in 1979, TIPS publishes concise articles discussing the latest advancements in pharmacology and therapeutics research. The journal encourages submissions that align with its core themes while also being open to articles on the biopharma regulatory landscape, science policy and regulation, and bioethics. Each issue of TIPS provides a platform for experts to share their insights and perspectives on the most exciting developments in the field. Through rigorous peer review, the journal ensures the quality and reliability of published articles. Authors are invited to contribute articles that contribute to the understanding of pharmacology and its applications in various domains. Whether it's exploring innovative drug therapies or discussing the ethical considerations of pharmaceutical research, TIPS provides a valuable resource for researchers, practitioners, and policymakers in the pharmacological sciences.
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