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Innovative methods for the identification of predictive biomarker signatures in oncology: Application to bevacizumab

机译:鉴定肿瘤学中预测性生物标志物特征的创新方法:贝伐单抗的应用

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摘要

Current methods for subgroup analyses of data collected from randomized clinical trials (RCTs) may lead to false-positives from multiple testing, lack power to detect moderate but clinically meaningful differences, or be too simplistic in characterizing patients who may benefit from treatment. Herein, we present a general procedure based on a set of newly developed statistical methods for the identification and evaluation of complex multivariate predictors of treatment effect. Furthermore, we implemented this procedure to identify a subgroup of patients who may receive the largest benefit from bevacizumab treatment using a panel of 10 biomarkers measured at baseline in patients enrolled on two RCTs investigating bevacizumab in metastatic breast cancer. Data were collected from patients with human epidermal growth factor receptor 2 (HER2)-negative (AVADO) and HER2-positive (AVEREL) metastatic breast cancer. We first developed a classification rule based on an estimated individual scoring system, using data from the AVADO study only. The classification rule takes into consideration a panel of biomarkers, including vascular endothelial growth factor (VEGF)-A. We then classified the patients in the independent AVEREL study into patient groups according to “promising” or “not-promising” treatment benefit based on this rule and conducted a statistical analysis within these subgroups to compute point estimates, confidence intervals, and p-values for treatment effect and its interaction. In the group with promising treatment benefit in the AVEREL study, the estimated hazard ratio of bevacizumab versus placebo for progression-free survival was 0.687 (95% confidence interval [CI]: 0.462–1.024, p = 0.065), while in the not-promising group the hazard ratio (HR) was 1.152 (95% CI: 0.526–2.524, p = 0.723). Using the median level of VEGF-A from the AVEREL study to divide the study population, then the HR becomes 0.711 (95% CI: 0.435–1.163, p = 0.174) in the promising group and 0.828 (95% CI: 0.496–1.380, p = 0.468) in the not-promising group. Similar results were obtained with the median VEGF-A levels from the AVADO study (“promising” group: HR = 0.709, 95%CI: 0.444–1.133, p = 0.151; “not-promising” group: HR = 0.851, 95% CI: 0.497–1.458, p = 0.556). Our analysis shows it is feasible to employ statistical methods for empirically constructing and validating a scoring system based on a panel of biomarkers. This scoring system can be used to estimate the treatment effect for individual patients and identify a subgroup of patients who may benefit from treatment. The proposed procedure can provide a general framework to organize many statistical methods (existing or to be developed) into a coherent set of analyses for the development of personalized medicines and has the potential of broad applications.
机译:当前对从随机临床试验(RCT)收集的数据进行亚组分析的方法可能会导致多重测试的假阳性,缺乏检测中等但具有临床意义的差异的能力,或者在表征可能受益于治疗的患者时过于简单。在这里,我们提出了一种基于一套新开发的统计方法的通用程序,用于识别和评估治疗效果的复杂多元预测因子。此外,我们实施了此程序,以一组使用基线时测量的10种生物标记物确定一组可能从贝伐单抗治疗中受益最大的患者亚组,该组生物标志物是在两项研究贝伐单抗治疗转移性乳腺癌的RCT中纳入基线的患者。数据来自人类表皮生长因子受体2(HER2)阴性(AVADO)和HER2阳性(AVEREL)转移性乳腺癌患者。我们首先根据估计的个人评分系统开发了分类规则,仅使用来自AVADO研究的数据。分类规则考虑了一组生物标记,包括血管内皮生长因子(VEGF)-A。然后,我们根据此规则根据“有前途的”或“无前途的”治疗益处将独立AVEREL研究中的患者分为患者组,并在这些子组中进行了统计分析,以计算点估计值,置信区间和p值治疗效果及其相互作用。在AVEREL研究中有望带来治疗益处的人群中,贝伐单抗与安慰剂对无进展生存的估计危险比为0.687(95%置信区间[CI]:0.462–1.024,p = 0.065),而在非有希望的群体的危险比(HR)为1.152(95%CI:0.526-2.524,p = 0.723)。使用来自AVEREL研究的VEGF-A的中位数水平对研究人群进行划分,然后在有前途的人群中HR变为0.711(95%CI:0.435–1.163,p = 0.174),而在HR中则变为0.828(95%CI:0.496–1.380) ,p = 0.468)。从AVADO研究中获得的中值VEGF-A水平获得了类似的结果(``有前途的''组:HR = 0.709,95%CI:0.444-1.133,p = 0.151;``无前途的''组:HR = 0.851,95% CI:0.497–1.458,p = 0.556)。我们的分析表明,采用统计方法以经验为基础构建和验证基于生物标志物组的评分系统是可行的。该评分系统可用于估计单个患者的治疗效果,并确定可从治疗中受益的患者亚组。拟议的程序可以提供一个通用框架,将许多统计方法(现有的或将要开发的)组织成用于开发个性化药物的连贯分析集,并具有广泛的应用潜力。

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