# Supervised Machine Learning-Based Prediction of In-Hospital Mortality Following Hip Fracture in Older Adults

**Authors:** Eduardo Guzmán-Muñoz, Manuel Vásquez-Muñoz, Yeny Concha-Cisternas, Rodrigo Olivares-Ordenes, Vicente Clemente-Suárez, Antonio Castillo-Paredes, Rodrigo Yáñez-Sepúlveda

PMC · DOI: 10.3390/diagnostics16040612 · Diagnostics · 2026-02-19

## TL;DR

This study uses machine learning to predict in-hospital mortality for older adults with hip fractures using Chilean healthcare data.

## Contribution

The study introduces a high-performing, interpretable machine learning model for predicting mortality in hip fracture patients using administrative data.

## Key findings

- Gradient Boosting achieved the best performance with an AUC-ROC of 0.885.
- Age, comorbidity burden, and surgical treatment were key predictors of mortality.
- SHAP analysis revealed nonlinear and clinically meaningful contributions to risk.

## Abstract

Background/Objectives: Hip fractures in older adults are associated with substantial morbidity, functional decline, and high in-hospital mortality. Early identification of patients at increased risk of death may improve clinical decision-making and resource allocation. This study aimed to develop and internally validate supervised machine learning models to predict in-hospital mortality among older adults hospitalized for hip fracture using nationwide administrative data from Chile. Methods: A retrospective cohort study was conducted using anonymized hospital discharge records from the Chilean National Health Fund (FONASA), covering admissions between 1 January 2019 and 31 December 2024, across 72 public hospitals. Demographic, clinical, and care-related variables were included as predictors. Multiple supervised machine learning algorithms were trained and evaluated using stratified train–test partitioning. Model performance was assessed using AUC-ROC, precision, recall, and F1-score. Model interpretability was explored using SHapley Additive exPlanations (SHAP). Results: A total of 40,253 hospitalization episodes were analyzed. The Gradient Boosting model achieved the best overall performance, with an AUC-ROC of 0.885 and a favorable balance between precision and recall. SHAP analysis identified age, comorbidity burden, and surgical treatment as the most influential predictors, revealing nonlinear and clinically meaningful contributions to mortality risk. Conclusions: Supervised machine learning models based on routinely collected administrative data demonstrated strong predictive performance for in-hospital mortality after hip fracture. Interpretable models may support early risk stratification and clinical decision-making at a national healthcare level.

## Linked entities

- **Diseases:** hip fracture (MONDO:0005327)

## Full-text entities

- **Genes:** SHROOM4 (shroom family member 4) [NCBI Gene 57477] {aka MRXSSDS, SHAP, shrm4}
- **Diseases:** Hip fracture (MESH:D006620), loss of mobility (MESH:D014086), Mortality (MESH:D003643), pressure ulcers (MESH:D003668), thrombosis (MESH:D013927), nosocomial infections (MESH:D003428), infection (MESH:D007239), heart disease (MESH:D006331), dementia (MESH:D003704), thromboembolism (MESH:D013923), infectious complications (MESH:D003141), chronic diseases (MESH:D002908), pain (MESH:D010146), fracture (MESH:D050723), sarcopenia (MESH:D055948), injury to (MESH:D014947), cancer (MESH:D009369), renal failure (MESH:D051437), pneumonia (MESH:D011014), delirium (MESH:D003693), femoral neck fracture (MESH:D005265), neurological disorders (MESH:D009461)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

32 references — full list in the complete paper: https://tomesphere.com/paper/PMC12938910/full.md

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Source: https://tomesphere.com/paper/PMC12938910