Gaining insight into the drivers of patient mobility in joint replacement procedures is crucial for evidence-based healthcare planning and policy evaluation. However, traditional indices commonly used to describe mobility, such as the Attraction Index and the Escape Index, provide only static, ratio-based measures and fail to capture the spatio-temporal dynamics that shape patient flows. This work develops and applies Bayesian hierarchical spatio-temporal models to study patient mobility in joint arthroplasty, with a particular focus on total ankle replacement in Italy. The proposed approach integrates spatial modeling, temporal trends, and relevant covariates, offering a more robust framework than descriptive indices alone. Furthermore, it incorporates a soft constraint in the likelihood to align the estimated annual totals with observed or externally estimated values. The proposed models demonstrate promising accuracy, effectively capture the spatio-temporal dynamics underlying patient mobility, and can be employed to develop forecasting strategies to inform future healthcare planning.

Bayesian hierarchical spatio-temporal models for the analysis of interregional mobility of patients undergoing joint arthroplasty in Italy / Cuccu, Adriano. - (2026 Jan 27).

Bayesian hierarchical spatio-temporal models for the analysis of interregional mobility of patients undergoing joint arthroplasty in Italy

CUCCU, ADRIANO
27/01/2026

Abstract

Gaining insight into the drivers of patient mobility in joint replacement procedures is crucial for evidence-based healthcare planning and policy evaluation. However, traditional indices commonly used to describe mobility, such as the Attraction Index and the Escape Index, provide only static, ratio-based measures and fail to capture the spatio-temporal dynamics that shape patient flows. This work develops and applies Bayesian hierarchical spatio-temporal models to study patient mobility in joint arthroplasty, with a particular focus on total ankle replacement in Italy. The proposed approach integrates spatial modeling, temporal trends, and relevant covariates, offering a more robust framework than descriptive indices alone. Furthermore, it incorporates a soft constraint in the likelihood to align the estimated annual totals with observed or externally estimated values. The proposed models demonstrate promising accuracy, effectively capture the spatio-temporal dynamics underlying patient mobility, and can be employed to develop forecasting strategies to inform future healthcare planning.
27-gen-2026
Torre, Marina
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1759179
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