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基于所有毒性和个体基因组概况的癌症I期临床试验中个性化最大耐受剂量的自适应估计

Adaptive Estimation of Personalized Maximum Tolerated Dose in Cancer Phase I Clinical Trials Based on All Toxicities and Individual Genomic Profile.

作者信息

Chen Zhengjia, Li Zheng, Zhuang Run, Yuan Ying, Kutner Michael, Owonikoko Taofeek, Curran Walter J, Kowalski Jeanne

机构信息

Department of Biostatistics and Bioinformatics, Emory University, Atlanta, Georgia, United States of America.

Biostatistics and Bioinformatics Shared Resource, Winship Cancer Institute, Emory University, Atlanta, Georgia, United States of America.

出版信息

PLoS One. 2017 Jan 26;12(1):e0170187. doi: 10.1371/journal.pone.0170187. eCollection 2017.

Abstract

BACKGROUND

Many biomarkers have been shown to be associated with the efficacy of cancer therapy. Estimation of personalized maximum tolerated doses (pMTDs) is a critical step toward personalized medicine, which aims to maximize the therapeutic effect of a treatment for individual patients. In this study, we have established a Bayesian adaptive Phase I design which can estimate pMTDs by utilizing patient biomarkers that can predict susceptibility to specific adverse events and response as covariates.

METHODS

Based on a cutting-edge cancer Phase I clinical trial design called escalation with overdose control using normalized equivalent toxicity score (EWOC-NETS), which fully utilizes all toxicities, we propose new models to incorporate patient biomarker information in the estimation of pMTDs for novel cancer therapeutic agents. The methodology is fully elaborated and the design operating characteristics are evaluated with extensive simulations.

RESULTS

Simulation studies demonstrate that the utilization of biomarkers in EWOC-NETS can estimate pMTDs while maintaining the original merits of this Phase I trial design, such as ethical constraint of overdose control and full utilization of all toxicity information, to improve the accuracy and efficiency of the pMTD estimation.

CONCLUSIONS

Our novel cancer Phase I designs with inclusion of covariate(s) in the EWOC-NETS model are useful to estimate a personalized MTD and have substantial potential to improve the therapeutic effect of drug treatment.

摘要

背景

许多生物标志物已被证明与癌症治疗疗效相关。估计个性化最大耐受剂量(pMTDs)是迈向个性化医疗的关键一步,其目的是使个体患者的治疗效果最大化。在本研究中,我们建立了一种贝叶斯适应性I期设计,该设计可通过利用患者生物标志物(可预测对特定不良事件的易感性和反应)作为协变量来估计pMTDs。

方法

基于一种前沿的癌症I期临床试验设计,即使用标准化等效毒性评分的过量控制递增法(EWOC-NETS),该方法充分利用了所有毒性信息,我们提出了新的模型,将患者生物标志物信息纳入新型癌症治疗药物pMTDs的估计中。详细阐述了该方法,并通过广泛的模拟评估了设计的操作特性。

结果

模拟研究表明,在EWOC-NETS中利用生物标志物可以估计pMTDs,同时保持该I期试验设计的原有优点,如过量控制的伦理约束和所有毒性信息的充分利用,以提高pMTD估计的准确性和效率。

结论

我们在EWOC-NETS模型中纳入协变量的新型癌症I期设计,对于估计个性化MTD很有用,并且具有显著的潜力来提高药物治疗的疗效。

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