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Construction and optimization of gene expression signatures for prediction of survival in two-arm clinical trials

机译:两臂临床试验中存活预测基因表达特征的构建与优化

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Gene expression signatures for the prediction of differential survival of patients undergoing anti-cancer therapies are of great interest because they can be used to prospectively stratify patients entering new clinical trials, or to determine optimal treatment for patients in more routine clinical settings. Unlike prognostic signatures however, predictive signatures require training set data from clinical studies with at least two treatment arms. As two-arm studies with gene expression profiling have been rarer than similar one-arm studies, the methodology for constructing and optimizing predictive signatures has been less prominently explored than for prognostic signatures. Focusing on two “use cases” of two-arm clinical trials, one for metastatic colorectal cancer (CRC) patients treated with the anti-angiogenic molecule aflibercept, and the other for triple negative breast cancer (TNBC) patients treated with the small molecule iniparib, we present derivation steps and quantitative and graphical tools for the construction and optimization of signatures for the prediction of progression-free survival based on cross-validated multivariate Cox models. This general methodology is organized around two more specific approaches which we have called subtype correlation (subC) and mechanism-of-action (MOA) modeling, each of which leverage a priori knowledge of molecular subtypes of tumors or drug MOA for a given indication. The tools and concepts presented here include the so-called differential log-hazard ratio, the survival scatter plot, the hazard ratio receiver operating characteristic, the area between curves and the patient selection matrix. In the CRC use case for instance, the resulting signature stratifies the patient population into “sensitive” and “relatively-resistant” groups achieving a more than two-fold difference in the aflibercept-to-control hazard ratios across signature-defined patient groups. Through cross-validation and resampling the probability of generalization of the signature to similar CRC data sets is predicted to be high. The tools presented here should be of general use for building and using predictive multivariate signatures in oncology and in other therapeutic areas.
机译:用于预测经历抗癌疗法的患者的差异存活的基因表达签名具有很大的兴趣,因为它们可用于预期分层进入新的临床试验的患者,或在更多常规临床环境中确定对患者的最佳治疗。然而,与预后签名不同,预测性签名需要培训从具有至少两个治疗臂的临床研究中的培训数据。由于与基因表达分析的两臂研究比类似的单臂研究更加罕见,因此构建和优化预测性签名的方法不太突出探索,而不是对于预后签名。专注于双臂临床试验的两个“用例”,一种用于用抗血管生成分子患者治疗的转移性结肠直肠癌(CRC)患者,另一个用于三重阴性乳腺癌(TNBC)患者用小分子iniparib治疗,我们提出了基于交叉验证多元COX模型的衍生步骤和定量和图形工具,用于预测无进展生存的签名。围绕我们称为亚型相关性(Subc)和动作机制(MOA)建模的更多方法组织了该一般方法,每个方法和动作机制建模,每个方法都利用了给定指示的肿瘤或药物MOA的分子亚型的先验知识。这里呈现的工具和概念包括所谓的差分日志危险比,生存散射图,危险比接收器操作特性,曲线之间的面积和患者选择矩阵。例如,在CRC用例中,所得签名将患者人群分解为“敏感”和“相对抗性”组,在签名定义的患者组上实现了患者对控制危险比的差异超过两倍。通过交叉验证和重新采样,预测签名的概要到类似的CRC数据集的概率很高。此处提供的工具应该是用于建立和使用在肿瘤学和其他治疗区域的预测多元签名的普遍用途。

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