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首页> 外文期刊>CPT: Pharmacometrics & Systems Pharmacology >Tumor Time‐Course Predicts Overall Survival in Non‐Small Cell Lung Cancer Patients Treated with Atezolizumab: Dependency on Follow‐Up Time
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Tumor Time‐Course Predicts Overall Survival in Non‐Small Cell Lung Cancer Patients Treated with Atezolizumab: Dependency on Follow‐Up Time

机译:肿瘤时间过程预测atezolizumab治疗的非小细胞肺癌患者的整体存活:对随访时间的依赖

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The large heterogeneity in response to immune checkpoint inhibitors is driving the exploration of predictive biomarkers to identify patients who will respond to such treatment. We extended our previously suggested modeling framework of atezolizumab pharmacokinetics, IL18, and tumor size (TS) dynamics, to also include overall survival (OS). Baseline and model‐derived variables were explored as predictors of OS in 88 patients with non‐small cell lung cancer treated with atezolizumab. To investigate the impact of follow‐up length on the inclusion of predictors of OS, four different censoring strategies were applied. The time‐course of TS change was the most significant predictor in all scenarios, whereas IL18 was not significant. Identified predictors of OS were similar regardless of censoring strategy, although OS was underpredicted when patients were censored 5?months after last dose. The study demonstrated that the tumor‐time course‐OS relationship could be identified based on early phase I data.
机译:响应于免疫检查点抑制剂的大异质性正在推动预测生物标志物的探索,以识别将响应这种治疗的患者。我们扩展了先前建议的atezolizumab药代动力学,IL18和肿瘤大小(TS)动力学的建模框架,还包括整体存活(OS)。基线和模型衍生的变量被探讨为88例非小细胞肺癌患者的OS预测因子。为了调查随访时间对纳入OS预测的影响,应用了四种不同的审查策略。 TS改变的时间过程是所有场景中最重要的预测因子,而IL18则不重要。无论审查策略如何,鉴定的操作系统预测因子都是相似的,尽管患者在患者被审查5?最后剂量后的月份时受到审查。该研究表明,可以基于早期I阶段数据来识别肿瘤时间路线关系。

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