接收机工作特性
生物标志物
计算机科学
事件(粒子物理)
预测模型
肌萎缩侧索硬化
医学
生存分析
临床试验
生物标志物发现
审查(临床试验)
危险分层
比例危险模型
疾病
临床研究设计
数据挖掘
肿瘤科
估计
预测建模
逻辑回归
作者
Ainesh Sewak,Vanda Inácio,Joanne Wuu,Michael Benatar,Torsten Hothorn
标识
DOI:10.1177/09622802261445416
摘要
Identifying reliable biomarkers for predicting clinical events in longitudinal studies is important for accurate disease prognosis and for guiding development of new treatments. However, prognostic studies are often observational, making it difficult to account for patient heterogeneity. In amyotrophic lateral sclerosis (ALS), factors such as age, site of onset and genetic status influence both survival and biomarker levels, yet their impact on the prognostic accuracy of biomarkers over time remains unclear. While time-dependent receiver operating characteristic methods have been developed to handle censored time-to-event outcomes, most do not adjust for covariates. To address this, we propose the nonparanormal prognostic biomarker framework, which models the joint distribution of the biomarker and event time while accounting for covariates. This allows estimation of covariate-specific time-dependent receiver operating characteristic curves and related summary measures. We apply the NPB framework to evaluate serum neurofilament light as a prognostic biomarker in ALS, showing that its accuracy varies over time and with patient characteristics. By capturing these covariate-specific effects, the NPB framework supports more targeted risk stratification and can potentially improve the design of clinical trials for new ALS treatments.
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