A Staged Approach using Machine Learning and Uncertainty Quantification to Predict the Risk of Hip Fracture
Anjum Shaik, Kristoffer Larsen, Nancy E. Lane, Chen Zhao, Kuan-Jui Su,, Joyce H. Keyak, Qing Tian, Qiuying Sha, Hui Shen, Hong-Wen Deng, Weihua Zhou

TL;DR
This paper introduces a staged machine learning model that combines imaging and clinical data with uncertainty quantification to accurately predict hip fracture risk while reducing unnecessary DXA scans.
Contribution
The novel staged approach integrates CNN-extracted imaging features with clinical data and uses uncertainty quantification to optimize prediction and reduce DXA scans.
Findings
Ensemble 2 achieved an AUC of 0.9541, outperforming other models.
The staged model maintained high accuracy with reduced DXA scans.
Significant statistical improvements over baseline models.
Abstract
Despite advancements in medical care, hip fractures impose a significant burden on individuals and healthcare systems. This paper focuses on the prediction of hip fracture risk in older and middle-aged adults, where falls and compromised bone quality are predominant factors. We propose a novel staged model that combines advanced imaging and clinical data to improve predictive performance. By using CNNs to extract features from hip DXA images, along with clinical variables, shape measurements, and texture features, our method provides a comprehensive framework for assessing fracture risk. A staged machine learning-based model was developed using two ensemble models: Ensemble 1 (clinical variables only) and Ensemble 2 (clinical variables and DXA imaging features). This staged approach used uncertainty quantification from Ensemble 1 to decide if DXA features are necessary for further…
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