Predicting clinical trial success for Clostridium difficile infections based on preclinical data.

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2024-10-09 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1487335
Fangzhou Li, Jason Youn, Christian Millsop, Ilias Tagkopoulos
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引用次数: 0

Abstract

Preclinical models are ubiquitous and essential for drug discovery, yet our understanding of how well they translate to clinical outcomes is limited. In this study, we investigate the translational success of treatments for Clostridium difficile infection from animal models to human patients. Our analysis shows that only 36% of the preclinical and clinical experiment pairs result in translation success. Univariate analysis shows that the sustained response endpoint is correlated with translation failure (SRC = -0.20, p-value = 1.53 × 10-54), and explainability analysis of multi-variate random forest models shows that both sustained response endpoint and subject age are negative predictors of translation success. We have developed a recommendation system to help plan the right preclinical study given factors such as drug dosage, bacterial dosage, and preclinical/clinical endpoint. With an accuracy of 0.76 (F1 score of 0.71) and by using only 7 features (out of 68 total), the proposed system boosts translational efficiency by 25%. The method presented can extend to any disease and can serve as a preclinical to clinical translation decision support system to accelerate drug discovery and de-risk clinical outcomes.

根据临床前数据预测艰难梭菌感染临床试验的成功率。
临床前模型无处不在,对药物发现至关重要,但我们对这些模型如何转化为临床结果的了解却很有限。在这项研究中,我们调查了艰难梭菌感染治疗方法从动物模型到人类患者的转化成功率。我们的分析表明,只有 36% 的临床前和临床实验配对取得了转化成功。单变量分析表明,持续反应终点与转化失败相关(SRC = -0.20,p 值 = 1.53 × 10-54),多变量随机森林模型的可解释性分析表明,持续反应终点和受试者年龄都是转化成功的负预测因素。我们开发了一个推荐系统,可根据药物剂量、细菌剂量和临床前/临床终点等因素帮助规划正确的临床前研究。该系统的准确率为 0.76(F1 得分为 0.71),仅使用了 7 个特征(共 68 个),就将转化效率提高了 25%。所提出的方法可扩展到任何疾病,并可作为临床前到临床转化的决策支持系统,以加速药物发现并降低临床结果的风险。
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
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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