Nonparanormal Modeling Framework for Prognostic Biomarker Assessment with Application to Amyotrophic Lateral Sclerosis (2502.20892v1)
Abstract: Identifying reliable biomarkers for predicting clinical events in longitudinal studies is important for accurate disease prognosis and the development of new treatments. However, prognostic studies are often not randomized, making it difficult to account for patient heterogeneity. In amyotrophic lateral sclerosis (ALS), factors such as age, site of disease onset and genetics impact both survival duration and biomarker levels, yet their impact on the prognostic accuracy of biomarkers over different time horizons remains unclear. While existing methods for time-dependent receiver operating characteristic (ROC) analysis have been adapted for censored time-to-event outcomes, most do not adjust for patient covariates. To address this, we propose the nonparanormal prognostic biomarker (NPB) framework, which models the joint dependence between biomarker and event time distributions while accounting for covariates. This provides covariate-specific ROC curves which assess a potential biomarker's accuracy for a given time horizon. We apply this framework to evaluate serum neurofilament light (NfL) as a biomarker in ALS and demonstrate that its prognostic accuracy varies over time and across patient subgroups. The NPB framework is broadly applicable to other conditions and has the potential to improve clinical trial efficiency by refining patient stratification and reducing sample size requirements.