Machine learning-based prediction of short-and long-term mortality for shared decision-making in older hip fracture patients

the Dutch Hip Fracture Audit algorithms in 74,396 cases

Journal Article (2025)
Author(s)

Hidde Dijkstra (Rijksuniversiteit Groningen)

Cathleen S. Parsons (Rijksuniversiteit Groningen, TU Delft - Information and Communication Technology)

Hanne Eva van Bremen (Amsterdam Movement Sciences, Universiteit van Amsterdam, Dutch Institute for Clinical Auditing)

Hanna C. Willems (Amsterdam Public Health, Universiteit van Amsterdam, Amsterdam Movement Sciences)

Anne A.H. de Hond ( University Medical Centre Utrecht)

Barbara C. van Munster (Rijksuniversiteit Groningen)

Job N. Doornberg (Rijksuniversiteit Groningen)

Jacobien H.F. Oosterhoff (Rijksuniversiteit Groningen, TU Delft - Information and Communication Technology)

DOI related publication
https://doi.org/10.2340/17453674.2025.44248 Final published version
More Info
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Publication Year
2025
Language
English
Journal title
Acta Orthopaedica
Volume number
96
Pages (from-to)
521-528
Downloads counter
178
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Abstract

Background and purpose — Treatment-related shared decision-making (SDM) in older adults with hip fractures is complex due to the need to balance patient-specific factors such as life goals, frailty, and surgical risks. It includes considerations such as prognosis and decisions concerning whether to operate or not on frail, life-limited patients. We aimed to develop machine learning (ML)-driven prediction models for short-and long-term mortality in a large cohort of patients with hip fractures. Methods — In this national registry-based retrospective cohort study, patients aged ≥ 70 years registered in the nationwide Dutch Hip Fracture Audit from 2018–2023 were included. Predictive variables were selected based on the literature and/or clinical relevance. 6 ML algorithms, including logistic regression, were trained with internal cross-validation and evaluated on discrimination (c-statistic), sensitivity, specificity, calibration, and interpretability. Results — 74,396 patients (median age 84, IQR 78–89; 68% female) were analyzed. Most patients lived at home (69%) and high malnutrition risk was seen in 10%. 18% had dementia. Mortality rates were 9.1% (30-day), 15% (90-day), and 26% (1-year). Logistic regression performed comparably to other algorithms, but was chosen as the preferred algorithm due to its superior interpretability (c-statistic: 30-day 0.82, 90-day 0.81, 1-year 0.80). Conclusion — We developed and validated ML algorithms, including logistic regression, for mortality prediction in older hip fracture patients with adequate performance. This information may inform SDM.