数字患者模型确定瑞非尼对老年转移性结直肠癌反应的预测性生物标志物。

IF 2.3
Frontiers in systems biology Pub Date : 2025-09-15 eCollection Date: 2025-01-01 DOI:10.3389/fsysb.2025.1648559
Juan Manuel García-Illarramendi, Pedro Matos-Filipe, Jose Manuel Mas, Judith Farrés, Xavier Daura
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引用次数: 0

摘要

模拟个体化作用机制的计算机临床试验提供了一种强大的方法来评估药物在大量不同患者群体中的疗效,同时也使预测生物标志物的识别成为可能。在这项研究中,我们对399例老年转移性结直肠癌(mCRC)患者进行了一线单药瑞戈非尼的计算机临床试验。基于个性化网络的模型使用患者特异性差异转录组谱构建,并用于模拟瑞非尼的靶向特异性效应。从这一分析中,我们确定了治疗反应的预测性和机械性生物标志物。值得注意的是,四种蛋白——mark3、RBCK1、LHCGR和hsf1——作为双重生物标志物出现,显示出与反应机制和预测潜力的关联。其中三种(MARK3, RBCK1和HSF1)在mCRC患者的独立队列中得到验证,并且也被发现是先前报道的reorafenib预测mirna的靶标。本研究展示了一种新的系统生物学策略来评估药物反应,利用转录组学数据来模拟个体治疗结果并揭示临床相关的生物标志物。我们的研究结果表明,这些方法可以作为评估药物疗效和指导精确肿瘤学的传统临床试验的有价值的补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital patient modeling identifies predictive biomarkers of regorafenib response in elderly metastatic colorectal cancer.

In silico clinical trials that simulate individualized mechanisms of action offer a powerful approach to assess drug efficacy across large and diverse patient populations, while also enabling the identification of predictive biomarkers. In this study, we conducted an in silico clinical trial of first-line, single-agent regorafenib in 399 elderly patients with metastatic colorectal cancer (mCRC). Individualized network-based models were constructed using patient-specific differential transcriptomic profiles and employed to simulate the target-specific effects of regorafenib. From this analysis, we identified both predictive and mechanistic biomarkers of treatment response. Notably, four proteins-MARK3, RBCK1, LHCGR, and HSF1-emerged as dual biomarkers, showing associations with both response mechanisms and predictive potential. Three of these (MARK3, RBCK1, and HSF1) were validated in an independent cohort of mCRC patients and were also found to be targets of previously reported regorafenib-predictive miRNAs. This study demonstrates a novel systems biology strategy for evaluating drug response in silico, leveraging transcriptomic data to simulate individual treatment outcomes and uncover clinically relevant biomarkers. Our findings suggest that such approaches may serve as valuable complements to traditional clinical trials for assessing drug efficacy and guiding precision oncology.

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