残障腰高比和腰臀比的支持向量机分类

E. Severeyn, A. La Cruz, M. Huerta
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引用次数: 0

摘要

肥胖的流行在成人、青少年和儿童中已经达到了很高的患病率。超重和肥胖,加上久坐不动的生活方式和心血管疾病家族史,预示着代谢综合征(MS)、胰岛素抵抗(IR)、动脉粥样硬化和葡萄糖耐受不良等代谢性疾病的高发,增加了2型糖尿病和心血管疾病(CVD)的风险。虽然腰围(WC)是CVD、IR和MS的最佳预测指标之一,但由于诊断的分界点因种族和种族背景而异,这种测量方法也有局限性。腰高比(WHtR)和腰臀比(WHR)是仅因性别而异的通用指标,建议作为较好的预测指标。一些研究使用机器学习技术,如支持向量机(SVM)、聚类技术和随机森林,在腰围、臀围、BMI、腰臀比和腰臀比等人体测量指标中评估代谢功能障碍的诊断,如肥胖、胰岛素抵抗等。这项工作的目的是分类受损WHtR和WHR受试者使用人体测量参数和支持向量机技术作为分类器。本研究使用了一个数据库,包括1978名受试者和26个人体测量变量。结果表明,支持向量机作为一个可接受的分类与异常WHR值和异常WHR值的受试者使用皮肤褶皱和周长的人体测量值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Impaired Waist to Height Ratio and Waist to Hip Ratio Using Support Vector Machine
The obesity epidemic has reached a high prevalence in adults, adolescents, and children. Overweight and obesity, together with a sedentary lifestyle and family history of cardiovascular disease, anticipate a high prevalence of metabolic diseases such as metabolic syndrome (MS), insulin resistance (IR), atherosclerosis, and glucose intolerance, increasing the risk of type 2 diabetes and cardiovascular disease (CVD). Although waist circumference (WC) is one of the best predictors of CVD, IR, and MS, this measure has limits because diagnostic cut-off points vary by ethnicity and race background. The waist to height ratio (WHtR) and waist to hip ratio (WHR) are suggested as better predictors because they are universal indexes that only varied because of gender. Some studies have used machine learning techniques, such as Support vector machine (SVM), clustering techniques, and random forest, in anthropometric measures such as waist circumference, hip circumference, BMI, WHtR, and WHR to evaluate the diagnosis of metabolic dysfunctions, like obesity, insulin resistance, among others. This work aims to classified impaired WHtR and WHR subjects using anthropometric parameters and the SVM technique as a classifier. This study used a database of 1978 subjects with 26 anthropometrics variables. Results showed that the SVM performed as an acceptable classification of subjects with abnormal WHtR values and abnormal WHR values using anthropometric measurements of skinfolds and circumferences.
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