Cargando…

A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study

BACKGROUND: Identifying persons with a high risk of developing osteoporosis and preventing the occurrence of the first fracture is a health care priority. Most existing osteoporosis screening tools have high sensitivity but relatively low specificity. OBJECTIVE: We aimed to develop an easily accessi...

Descripción completa

Detalles Bibliográficos
Autores principales: Yang, Qingling, Cheng, Huilin, Qin, Jing, Loke, Alice Yuen, Ngai, Fei Wan, Chong, Ka Chun, Zhang, Dexing, Gao, Yang, Wang, Harry Haoxiang, Liu, Zhaomin, Hao, Chun, Xie, Yao Jie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications Inc 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10686208/
https://www.ncbi.nlm.nih.gov/pubmed/37986117
http://dx.doi.org/10.2196/46791
_version_ 1785151749734006784
author Yang, Qingling
Cheng, Huilin
Qin, Jing
Loke, Alice Yuen
Ngai, Fei Wan
Chong, Ka Chun
Zhang, Dexing
Gao, Yang
Wang, Harry Haoxiang
Liu, Zhaomin
Hao, Chun
Xie, Yao Jie
author_facet Yang, Qingling
Cheng, Huilin
Qin, Jing
Loke, Alice Yuen
Ngai, Fei Wan
Chong, Ka Chun
Zhang, Dexing
Gao, Yang
Wang, Harry Haoxiang
Liu, Zhaomin
Hao, Chun
Xie, Yao Jie
author_sort Yang, Qingling
collection PubMed
description BACKGROUND: Identifying persons with a high risk of developing osteoporosis and preventing the occurrence of the first fracture is a health care priority. Most existing osteoporosis screening tools have high sensitivity but relatively low specificity. OBJECTIVE: We aimed to develop an easily accessible and high-performance preclinical risk screening tool for osteoporosis using a machine learning–based method among the Hong Kong Chinese population. METHODS: Participants aged 45 years or older were enrolled from 6 clinics in the 3 major districts of Hong Kong. The potential risk factors for osteoporosis were collected through a validated, self-administered questionnaire and then filtered using a machine learning–based method. Bone mineral density was measured with dual-energy x-ray absorptiometry at the clinics; osteoporosis was defined as a t score of −2.5 or lower. We constructed machine learning models, including gradient boosting machines, support vector machines, and naive Bayes, as well as the commonly used logistic regression models, for the prediction of osteoporosis. The best-performing model was chosen as the final tool, named the Preclinical Osteoporosis Screening Tool (POST). Model performance was evaluated by the area under the receiver operating characteristic curve (AUC) and other metrics. RESULTS: Among the 800 participants enrolled in this study, the prevalence of osteoporosis was 10.6% (n=85). The machine learning–based Boruta algorithm identified 15 significantly important predictors from the 113 potential risk factors. Seven variables were further selected based on their accessibility and convenience for daily self-assessment and health care practice, including age, gender, education level, decreased body height, BMI, number of teeth lost, and the intake of vitamin D supplements, to construct the POST. The AUC of the POST was 0.86 and the sensitivity, specificity, and accuracy were all 0.83. The positive predictive value, negative predictive value, and F(1)-score were 0.41, 0.98, and 0.56, respectively. CONCLUSIONS: The machine learning–based POST was conveniently accessible and exhibited accurate discriminative capabilities for the prediction of osteoporosis; it might be useful to guide population-based preclinical screening of osteoporosis and clinical decision-making.
format Online
Article
Text
id pubmed-10686208
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher JMIR Publications Inc
record_format MEDLINE/PubMed
spelling pubmed-106862082023-11-30 A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study Yang, Qingling Cheng, Huilin Qin, Jing Loke, Alice Yuen Ngai, Fei Wan Chong, Ka Chun Zhang, Dexing Gao, Yang Wang, Harry Haoxiang Liu, Zhaomin Hao, Chun Xie, Yao Jie JMIR Aging Original Paper BACKGROUND: Identifying persons with a high risk of developing osteoporosis and preventing the occurrence of the first fracture is a health care priority. Most existing osteoporosis screening tools have high sensitivity but relatively low specificity. OBJECTIVE: We aimed to develop an easily accessible and high-performance preclinical risk screening tool for osteoporosis using a machine learning–based method among the Hong Kong Chinese population. METHODS: Participants aged 45 years or older were enrolled from 6 clinics in the 3 major districts of Hong Kong. The potential risk factors for osteoporosis were collected through a validated, self-administered questionnaire and then filtered using a machine learning–based method. Bone mineral density was measured with dual-energy x-ray absorptiometry at the clinics; osteoporosis was defined as a t score of −2.5 or lower. We constructed machine learning models, including gradient boosting machines, support vector machines, and naive Bayes, as well as the commonly used logistic regression models, for the prediction of osteoporosis. The best-performing model was chosen as the final tool, named the Preclinical Osteoporosis Screening Tool (POST). Model performance was evaluated by the area under the receiver operating characteristic curve (AUC) and other metrics. RESULTS: Among the 800 participants enrolled in this study, the prevalence of osteoporosis was 10.6% (n=85). The machine learning–based Boruta algorithm identified 15 significantly important predictors from the 113 potential risk factors. Seven variables were further selected based on their accessibility and convenience for daily self-assessment and health care practice, including age, gender, education level, decreased body height, BMI, number of teeth lost, and the intake of vitamin D supplements, to construct the POST. The AUC of the POST was 0.86 and the sensitivity, specificity, and accuracy were all 0.83. The positive predictive value, negative predictive value, and F(1)-score were 0.41, 0.98, and 0.56, respectively. CONCLUSIONS: The machine learning–based POST was conveniently accessible and exhibited accurate discriminative capabilities for the prediction of osteoporosis; it might be useful to guide population-based preclinical screening of osteoporosis and clinical decision-making. JMIR Publications Inc 2023-11-08 /pmc/articles/PMC10686208/ /pubmed/37986117 http://dx.doi.org/10.2196/46791 Text en © Qingling Yang, Huilin Cheng, Jing Qin, Alice Yuen Loke, Fei Wan Ngai, Ka Chun Chong, Dexing Zhang, Yang Gao, Harry Haoxiang Wang, Zhaomin Liu, Chun Hao, Yao Jie Xie. Originally published in JMIR Aging (https://aging.jmir.org), 8.11.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Aging, is properly cited. The complete bibliographic information, a link to the original publication on https://aging.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Yang, Qingling
Cheng, Huilin
Qin, Jing
Loke, Alice Yuen
Ngai, Fei Wan
Chong, Ka Chun
Zhang, Dexing
Gao, Yang
Wang, Harry Haoxiang
Liu, Zhaomin
Hao, Chun
Xie, Yao Jie
A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title_full A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title_fullStr A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title_full_unstemmed A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title_short A Machine Learning–Based Preclinical Osteoporosis Screening Tool (POST): Model Development and Validation Study
title_sort machine learning–based preclinical osteoporosis screening tool (post): model development and validation study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10686208/
https://www.ncbi.nlm.nih.gov/pubmed/37986117
http://dx.doi.org/10.2196/46791
work_keys_str_mv AT yangqingling amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT chenghuilin amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT qinjing amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT lokealiceyuen amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT ngaifeiwan amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT chongkachun amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT zhangdexing amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT gaoyang amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT wangharryhaoxiang amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT liuzhaomin amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT haochun amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT xieyaojie amachinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT yangqingling machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT chenghuilin machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT qinjing machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT lokealiceyuen machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT ngaifeiwan machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT chongkachun machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT zhangdexing machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT gaoyang machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT wangharryhaoxiang machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT liuzhaomin machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT haochun machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy
AT xieyaojie machinelearningbasedpreclinicalosteoporosisscreeningtoolpostmodeldevelopmentandvalidationstudy