J Bone Metab.  2023 Aug;30(3):263-273. 10.11005/jbm.2023.30.3.263.

Osteoporosis Feature Selection and Risk Prediction Model by Machine Learning Using a Cross-Sectional Database

Affiliations
  • 1Department of Orthopaedic Surgery, Daejeon Eulji Medical Center, Eulji University School of Medicine, Daejeon, Korea
  • 2Department of Biomedical Research Institute, Gyeongsang National University Hospital, Jinju, Korea
  • 3Department of Orthopedic Surgery, Ajou Medical Center, Ajou University School of Medicine, Suwon, Korea
  • 4Department of Orthopaedic Surgery, Nowon Eulji Medical Center, Eulji University School of Medicine, Seoul, Korea
  • 5Department of Orthopaedic Surgery, Inha University Hospital, Inha University School of Medicine, Incheon, Korea

Abstract

Background
The purpose of this study was to verify the accuracy and validity of using machine learning (ML) to select risk factors, to discriminate differences in feature selection by ML between men and women, and to develop predictive models for patients with osteoporosis in a big database.
Methods
The data on 968 observed features from a total of 3,484 the Korea National Health and Nutrition Examination Survey participants were collected. To find preliminary features that were well-related to osteoporosis, logistic regression, random forest, gradient boosting, adaptive boosting, and support vector machine were used.
Results
In osteoporosis feature selection by 5 ML models in this study, the most selected variables as risk factors in men and women were body mass index, monthly alcohol consumption, and dietary surveys. However, differences between men and women in osteoporosis feature selection by ML models were age, smoking, and blood glucose level. The receiver operating characteristic (ROC) analysis revealed that the area under the ROC curve for each ML model was not significantly different for either gender.
Conclusions
ML performed a feature selection of osteoporosis, considering hidden differences between men and women. The present study considers the preprocessing of input data and the feature selection process as well as the ML technique to be important factors for the accuracy of the osteoporosis prediction model.

Keyword

Machine learning · Osteoporosis · Risk assessment · Risk factors
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