A New Class of Mark-Specific Proportional Hazards Models for Recurrent Events: Application to Opioid Refills Among Post-Surgical Patients
Eileen Yang, Donglin Zeng, Mark Bicket, Yi Li
公開日: 2025/9/14
Abstract
Prescription opioids relieve moderate-to-severe pain after surgery, but overprescription can lead to misuse and overdose. Understanding factors associated with post-surgical opioid refills is crucial for improving pain management and reducing opioid-related harms. Conventional methods often fail to account for refill size or dosage and capture patient risk dynamics. We address this gap by treating dosage as a continuously varying mark for each refill event and proposing a new class of mark-specific proportional hazards models for recurrent events. Our marginal model, developed on the gap-time scale with a dual weighting scheme, accommodates event proximity to dosage of interest while accounting for the informative number of recurrences. We establish consistency and asymptotic normality of the estimator and provide a sandwich variance estimator for robust inference. Simulations show improved finite-sample performance over competing methods. We apply the model to data from the Michigan Surgical Quality Collaborative and Michigan Automated Prescription System. Results show that high BMI, smoking, cancer, and open surgery increase hazards of high-dosage refills, while inpatient surgeries elevate refill hazards across all dosages. Black race is associated with higher hazards of low-dosage but lower hazards of high-dosage refills. These findings may inform personalized, dosage-specific pain management strategies.