Osteoporosis Prediction Using Machine-Learned Optical Bone Densitometry Data

被引:0
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作者
Kaname Miura
Shigeo M. Tanaka
Chanisa Chotipanich
Thanapon Chobpenthai
Attapon Jantarato
Anak Khantachawana
机构
[1] King Mongkut’s University of Technology Thonburi,Biological Engineering Program
[2] Kanazawa University,Graduate School of Natural Science and Technology
[3] Kanazawa University,Institute of Science and Engineering
[4] Chulabhorn Hospital,National Cyclotron and PET Center
[5] Chulabhorn Royal Academy,Faculty of Medicine and Public Health, HRH Princess Chulabhorn College of Medical Science
[6] King Mongkut’s University of Technology Thonburi,Department of Mechanical Engineering
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关键词
Osteoporosis screening; Machine learning; Optics; Demographic data;
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摘要
Optical bone densitometry (OBD) has been developed for the early detection of osteoporosis. In recent years, machine learning (ML) techniques have been actively implemented for the areas of medical diagnosis and screening with the goal of improving diagnostic accuracy. The purpose of this study was to verify the feasibility of using the combination of OBD and ML techniques as a screening tool for osteoporosis. Dual energy X-ray absorptiometry (DXA) and OBD measurements were performed on 203 Thai subjects. From the OBD measurements and readily available demographic data, machine learning techniques were used to predict the T-score measured by the DXA. The T-score predicted using the Ridge regressor had a correlation of r = 0.512 with respect to the reference value. The predicted T-score also showed an AUC of 0.853 for discriminating individuals with osteoporosis. The results obtained suggest that the developed model is reliable enough to be used for screening for osteoporosis.
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页码:396 / 405
页数:9
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