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Statistica Sinica 36 (2026), 649-668

LONGITUDINAL MODELING OF RANK-BASED
GLOBAL OUTCOME

Maomao Ding, Jing Ning*, Xuming He, Anne-Marie Wills and Ruosha Li*

Rice University, University of Texas MD Anderson Cancer Center,
Washington University in St. Louis,
Massachusetts General Hospital and
University of Texas Health Science Center at Houston

Abstract: Many chronic diseases exhibit multifaceted symptoms that cannot be comprehensively characterized by one outcome. To address this, researchers often adopt a global outcome to combine information from multiple individual outcomes. The global rank-sum facilitates robust integration of multiple outcomes and has been applied in many clinical studies. We consider longitudinal settings and devise a global percentile outcome for depicting patients’ time-varying global disease burden. We develop useful regression strategies for the longitudinal global percentile outcome based on a flexible regression framework of the monotonic index model. Posing minimal restrictions, we propose a maximum rank correlation type estimator and show that it entails desirable asymptotic properties. The methods are also extended to accommodate the common missing at random dropout scenarios. We propose a computationally stable and efficient procedure for parameter estimation, as well as a perturbation scheme for consistent variance estimation. Numerical studies show that our method performs well under realistic settings. We apply the proposed method to data from a Parkinson's disease clinical trial to examine risk factors associated with elevated global disease burden and accelerated disease progression.

Key words and phrases: Global percentile outcome, longitudinal data, maximum rank correlation, monotonic index model, Parkinson's disease.


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