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使用机器学习和传统方法进行骨质疏松症风险预测。

Osteoporosis risk prediction using machine learning and conventional methods.

作者信息

Kim Sung Kean, Yoo Tae Keun, Oh Ein, Kim Deok Won

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:188-91. doi: 10.1109/EMBC.2013.6609469.

DOI:10.1109/EMBC.2013.6609469
PMID:24109656
Abstract

A number of clinical decision tools for osteoporosis risk assessment have been developed to select postmenopausal women for the measurement of bone mineral density. We developed and validated machine learning models with the aim of more accurately identifying the risk of osteoporosis in postmenopausal women, and compared with the ability of a conventional clinical decision tool, osteoporosis self-assessment tool (OST). We collected medical records from Korean postmenopausal women based on the Korea National Health and Nutrition Surveys (KNHANES V-1). The training data set was used to construct models based on popular machine learning algorithms such as support vector machines (SVM), random forests (RF), artificial neural networks (ANN), and logistic regression (LR) based on various predictors associated with low bone density. The learning models were compared with OST. SVM had significantly better area under the curve (AUC) of the receiver operating characteristic (ROC) than ANN, LR, and OST. Validation on the test set showed that SVM predicted osteoporosis risk with an AUC of 0.827, accuracy of 76.7%, sensitivity of 77.8%, and specificity of 76.0%. We were the first to perform comparisons of the performance of osteoporosis prediction between the machine learning and conventional methods using population-based epidemiological data. The machine learning methods may be effective tools for identifying postmenopausal women at high risk for osteoporosis.

摘要

已经开发了许多用于骨质疏松症风险评估的临床决策工具,以选择绝经后妇女进行骨密度测量。我们开发并验证了机器学习模型,目的是更准确地识别绝经后妇女患骨质疏松症的风险,并与传统临床决策工具骨质疏松症自我评估工具(OST)的能力进行比较。我们根据韩国国家健康与营养调查(KNHANES V-1)收集了韩国绝经后妇女的医疗记录。训练数据集用于基于支持向量机(SVM)、随机森林(RF)、人工神经网络(ANN)和逻辑回归(LR)等流行机器学习算法,根据与低骨密度相关的各种预测因子构建模型。将这些学习模型与OST进行比较。SVM的受试者操作特征(ROC)曲线下面积(AUC)显著优于ANN、LR和OST。在测试集上的验证表明,SVM预测骨质疏松症风险的AUC为0.827,准确率为76.7%,灵敏度为77.8%,特异性为76.0%。我们首次使用基于人群的流行病学数据对机器学习方法和传统方法在骨质疏松症预测性能方面进行了比较。机器学习方法可能是识别绝经后骨质疏松症高危女性的有效工具。

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