利用多路复用心脏收缩力测定的机器学习增强药物分类。

IF 9.1 2区 医学 Q1 PHARMACOLOGY & PHARMACY Pharmacological research Pub Date : 2024-10-11 DOI:10.1016/j.phrs.2024.107459
Reza Aghavali, Erin G. Roberts, Yosuke K. Kurokawa, Erica Mak, Martin Y.C. Chan, Andy O.T. Wong, Ronald A. Li, Kevin D. Costa
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引用次数: 0

摘要

新发现药物的心脏筛选仍然是制药业长期面临的挑战。虽然通过临床前生化和动物试验评估了疗效和心脏毒性,但在人体临床试验中,90% 的先导化合物未能达到安全性和疗效基准。我们需要一个更能代表人类心脏反应的临床前模型;由人类多能干细胞衍生的心肌细胞设计的心脏组织提供了这样一个平台。在这项研究中,三种功能各异且经过独立验证的工程化心脏组织试验暴露于代表 5 类机理作用的已知化合物中,浓度不断增加,从而建立了一个强大的电生理学和收缩力数据集。结合六个单独模型的结果,由此产生的集合算法可以对未知化合物的机理作用进行分类,预测准确率高达 86.2%。这一结果优于单个检测模型,为提高未来临床试验的成功率提供了一种策略,与最近颁布的《FDA 现代化法案 2.0》相一致。
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Enhanced drug classification using machine learning with multiplexed cardiac contractility assays
Cardiac screening of newly discovered drugs remains a longstanding challenge for the pharmaceutical industry. While therapeutic efficacy and cardiotoxicity are evaluated through preclinical biochemical and animal testing, 90 % of lead compounds fail to meet safety and efficacy benchmarks during human clinical trials. A preclinical model more representative of the human cardiac response is needed; heart tissue engineered from human pluripotent stem cell derived cardiomyocytes offers such a platform. In this study, three functionally distinct and independently validated engineered cardiac tissue assays are exposed to increasing concentrations of known compounds representing 5 classes of mechanistic action, creating a robust electrophysiology and contractility dataset. Combining results from six individual models, the resulting ensemble algorithm can classify the mechanistic action of unknown compounds with 86.2 % predictive accuracy. This outperforms single-assay models and offers a strategy to enhance future clinical trial success aligned with the recent FDA Modernization Act 2.0.
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来源期刊
Pharmacological research
Pharmacological research 医学-药学
CiteScore
18.70
自引率
3.20%
发文量
491
审稿时长
8 days
期刊介绍: Pharmacological Research publishes cutting-edge articles in biomedical sciences to cover a broad range of topics that move the pharmacological field forward. Pharmacological research publishes articles on molecular, biochemical, translational, and clinical research (including clinical trials); it is proud of its rapid publication of accepted papers that comprises a dedicated, fast acceptance and publication track for high profile articles.
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