Objective This study aimed to investigate key determinants of healthcare-seeking delays among Tibetan residents and develop predictive models using automated machine learning (AutoML) with post-hoc SHAP interpretation alongside a clinical decision support system. Methods Face-to-face surveys using structured questionnaires were administered to 1,879 Tibetan residents. Data processing employed an AutoML framework: datasets were partitioned into training ( n = 1,503) and testing ( n = 376) subsets at an 8:2 ratio. Standardized preprocessing—including outlier rectification, one-hot encoding (OHE), and random forest-based multiple imputation (MI)—was applied. Model validation integrated 5-fold cross-validation and SHapley Additive exPlanations (SHAP) analysis. Results Among 1,879 participants, the healthcare-seeking delay incidence was 41.99%. The LightGBM model significantly outperformed conventional approaches (AUC 0.86). SHAP feature importance analysis revealed the predictor hierarchy: Age County hospital quality score Distance to county hospital Township health center quality score Able to communicate in Chinese. Conclusion A high-performance model with post-hoc SHAP interpretation accurately identifies geographical, cultural, and healthcare resource variables to accurately identify high-risk populations. The developed clinical decision support system enables risk computation through modular interfaces, providing an evidence-based tool for optimizing hierarchical diagnosis and resource allocation in Tibetan healthcare.
Xi et al. (Tue,) studied this question.
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