Developing the Temporal Graph Convolutional Neural Network Model to Predict Hip Replacement using Electronic Health Records
Zoe Hancox, Sarah R. Kingsbury, Andrew Clegg, Philip G. Conaghan,, Samuel D. Relton

TL;DR
This study develops a Temporal Graph Convolutional Neural Network model to predict hip replacement surgery one year in advance using electronic health records, aiming to improve patient outcomes and healthcare efficiency.
Contribution
It introduces a novel TG-CNN approach for early prediction of hip replacement using primary care EHR data, validated on multiple datasets.
Findings
Best model achieves AUROC of 0.724 for one-year prediction
Model shows good calibration after recalibration
Outperforms baseline models in predictive accuracy
Abstract
Background: Hip replacement procedures improve patient lives by relieving pain and restoring mobility. Predicting hip replacement in advance could reduce pain by enabling timely interventions, prioritising individuals for surgery or rehabilitation, and utilising physiotherapy to potentially delay the need for joint replacement. This study predicts hip replacement a year in advance to enhance quality of life and health service efficiency. Methods: Adapting previous work using Temporal Graph Convolutional Neural Network (TG-CNN) models, we construct temporal graphs from primary care medical event codes, sourced from ResearchOne EHRs of 40-75-year-old patients, to predict hip replacement risk. We match hip replacement cases to controls by age, sex, and Index of Multiple Deprivation. The model, trained on 9,187 cases and 9,187 controls, predicts hip replacement one year in advance. We…
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Taxonomy
TopicsOrthopaedic implants and arthroplasty · Total Knee Arthroplasty Outcomes
Methodstravel james
