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Risk Factor Analysis of Bone Mineral Density Based on Feature Selection in Type 2 Diabetes

机译:基于2型糖尿病特征选择的骨密度风险因子分析

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Type 2 diabetes (T2DM), one of the most common chronic diseases, predisposes bone to fragility fracture, which brings the heavy burden of medical care costs and affection on quality of life. Altered bone mineral density (BMD) is closely linked to T2DM-related bone fragility fracture. In this study, we adopt the feature selection technique to learning the most relevant or informative risk factors of BMD based on the clinical data set including general clinical data and glucose metabolic indexes of patients with T2DM. To illustrate the effectiveness and superiority of feature selection technique, eight state-of-the-art feature selection algorithms are exploited to select the subset of risk factors. This study successfully uses machine learning methods to implement risk factor analysis and prediction of BMD in patients with T2DM based on the easily obtained data in community medical institutions, which will be beneficial for the management of T2DM-related bone fracture in the primary healthcare systems.
机译:2型糖尿病(T2DM)是最常见的慢性疾病之一,使骨折易碎骨折,这为医疗费用和对生活质量的感情带来了沉重的负担。改变的骨矿物密度(BMD)与T2DM相关的骨脆性断裂密切相关。在这项研究中,我们采用了特征选择技术,以基于包括T2DM患者的一般临床数据和葡萄糖代谢指标的临床数据集来学习BMD最相关或信息丰富的危险因素。为了说明特征选择技术的有效性和优越性,利用八个最先进的特征选择算法来选择风险因素的子集。本研究成功地利用机器学习方法在社区医疗机构中易于获得的数据,对T2DM患者实施风险因子分析和预测,这将有利于在初级医疗系统中管理T2DM相关的骨折。

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