Huang Xin, Sun Yan, Trow Paul, Chatterjee Saptarshi, Chakravartty Arunava, Tian Lu, Devanarayan Viswanath
AbbVie, Inc., North Chicago, IL, U.S.A.
Novartis Oncology, Hyderabad, India.
Stat Med. 2017 Apr 30;36(9):1414-1428. doi: 10.1002/sim.7236. Epub 2017 Feb 1.
Causal mechanism of relationship between the clinical outcome (efficacy or safety endpoints) and putative biomarkers, clinical baseline, and related predictors is usually unknown and must be deduced empirically from experimental data. Such relationships enable the development of tailored therapeutics and implementation of a precision medicine strategy in clinical trials to help stratify patients in terms of disease progression, clinical response, treatment differentiation, and so on. These relationships often require complex modeling to develop the prognostic and predictive signatures. For the purpose of easier interpretation and implementation in clinical practice, defining a multivariate biomarker signature in terms of thresholds (cutoffs/cut points) on individual biomarkers is preferable. In this paper, we propose some methods for developing such signatures in the context of continuous, binary and time-to-event endpoints. Results from simulations and case study illustration are also provided. Copyright © 2017 John Wiley & Sons, Ltd.
临床结果(疗效或安全性终点)与假定生物标志物、临床基线及相关预测指标之间的因果机制通常未知,必须从实验数据中凭经验推导得出。此类关系有助于开发量身定制的疗法,并在临床试验中实施精准医学策略,以根据疾病进展、临床反应、治疗差异等对患者进行分层。这些关系通常需要复杂的建模来开发预后和预测特征。为便于在临床实践中进行解释和应用,根据单个生物标志物的阈值(临界值/切点)定义多变量生物标志物特征更为可取。在本文中,我们提出了一些在连续、二元和事件发生时间终点的背景下开发此类特征的方法。还提供了模拟结果和案例研究示例。版权所有© 2017约翰威立父子有限公司。