Yonghan Cha, Jung-Taek Kim, Jin-Woo Kim, Sung Hyo Seo, Sang-Yeob Lee, Jun-Il Yoo
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The purpose of this systematic review is to search for studies that predict the risk of hip fracture using artificial intelligence (AI) or machine learning, organize the results of each study, and analyze the usefulness of this technology.</p><p><strong>Methods: </strong>The PubMed, OVID Medline, Cochrane Collaboration Library, Web of Science, EMBASE, and AHRQ databases were searched including \"hip fractures\" AND \"artificial intelligence\".</p><p><strong>Results: </strong>A total of 7 studies are included in this study. The total number of subjects included in the 7 studies was 330,099. There were 3 studies that included only women, and 4 studies included both men and women. One study conducted AI training after 1:1 matching between fractured and non-fractured patients. The area under the curve of AI prediction model for hip fracture risk was 0.39 to 0.96. The accuracy of AI prediction model for hip fracture risk was 70.26% to 90%.</p><p><strong>Conclusions: </strong>We believe that predicting the risk of hip fracture by the AI model will help select patients with high fracture risk among osteoporosis patients. However, to apply the AI model to the prediction of hip fracture risk in clinical situations, it is necessary to identify the characteristics of the dataset and AI model and use it after performing appropriate validation.</p>","PeriodicalId":15070,"journal":{"name":"Journal of Bone Metabolism","volume":"30 3","pages":"245-252"},"PeriodicalIF":0.0000,"publicationDate":"2023-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://ftp.ncbi.nlm.nih.gov/pub/pmc/oa_pdf/e5/06/jbm-2023-30-3-245.PMC10509025.pdf","citationCount":"0","resultStr":"{\"title\":\"Effect of Artificial Intelligence or Machine Learning on Prediction of Hip Fracture Risk: Systematic Review.\",\"authors\":\"Yonghan Cha, Jung-Taek Kim, Jin-Woo Kim, Sung Hyo Seo, Sang-Yeob Lee, Jun-Il Yoo\",\"doi\":\"10.11005/jbm.2023.30.3.245\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Dual energy X-ray absorptiometry (DXA) is a preferred modality for screening or diagnosis of osteoporosis and can predict the risk of hip fracture. However, the DXA test is difficult to implement easily in some developing countries, and fractures have been observed before patients underwent DXA. The purpose of this systematic review is to search for studies that predict the risk of hip fracture using artificial intelligence (AI) or machine learning, organize the results of each study, and analyze the usefulness of this technology.</p><p><strong>Methods: </strong>The PubMed, OVID Medline, Cochrane Collaboration Library, Web of Science, EMBASE, and AHRQ databases were searched including \\\"hip fractures\\\" AND \\\"artificial intelligence\\\".</p><p><strong>Results: </strong>A total of 7 studies are included in this study. The total number of subjects included in the 7 studies was 330,099. There were 3 studies that included only women, and 4 studies included both men and women. One study conducted AI training after 1:1 matching between fractured and non-fractured patients. 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引用次数: 0
摘要
背景:双能X线骨密度仪(DXA)是筛查或诊断骨质疏松症的首选方法,可以预测髋部骨折的风险。然而,DXA测试在一些发展中国家很难轻易实施,在患者接受DXA之前就已经观察到骨折。这篇系统综述的目的是寻找使用人工智能(AI)或机器学习预测髋部骨折风险的研究,组织每项研究的结果,并分析这项技术的有用性。方法:检索PubMed、OVID Medline、Cochrane协作图书馆、Web of Science、EMBASE和AHRQ数据库,包括“髋部骨折”和“人工智能”。结果:本研究共纳入7项研究。纳入7项研究的受试者总数为330099人。有3项研究只包括女性,4项研究同时包括男性和女性。一项研究在骨折和非骨折患者1:1匹配后进行AI训练。人工智能髋关节骨折风险预测模型的曲线下面积为0.39至0.96。人工智能髋关节骨折风险预测模型的准确率为70.26%~90%。结论:我们相信,通过AI模型预测髋部骨折的风险将有助于在骨质疏松症患者中选择骨折风险较高的患者。然而,要将人工智能模型应用于临床情况下髋部骨折风险的预测,有必要确定数据集和人工智能模型的特征,并在进行适当验证后使用。
Effect of Artificial Intelligence or Machine Learning on Prediction of Hip Fracture Risk: Systematic Review.
Background: Dual energy X-ray absorptiometry (DXA) is a preferred modality for screening or diagnosis of osteoporosis and can predict the risk of hip fracture. However, the DXA test is difficult to implement easily in some developing countries, and fractures have been observed before patients underwent DXA. The purpose of this systematic review is to search for studies that predict the risk of hip fracture using artificial intelligence (AI) or machine learning, organize the results of each study, and analyze the usefulness of this technology.
Methods: The PubMed, OVID Medline, Cochrane Collaboration Library, Web of Science, EMBASE, and AHRQ databases were searched including "hip fractures" AND "artificial intelligence".
Results: A total of 7 studies are included in this study. The total number of subjects included in the 7 studies was 330,099. There were 3 studies that included only women, and 4 studies included both men and women. One study conducted AI training after 1:1 matching between fractured and non-fractured patients. The area under the curve of AI prediction model for hip fracture risk was 0.39 to 0.96. The accuracy of AI prediction model for hip fracture risk was 70.26% to 90%.
Conclusions: We believe that predicting the risk of hip fracture by the AI model will help select patients with high fracture risk among osteoporosis patients. However, to apply the AI model to the prediction of hip fracture risk in clinical situations, it is necessary to identify the characteristics of the dataset and AI model and use it after performing appropriate validation.