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Prediction of the severity of obstructive sleep apnea by anthropometric features via support vector machine

机译:通过支持向量机的人体测量学功能预测阻塞性睡眠呼吸暂停的严重程度

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摘要

To develop an applicable prediction for obstructive sleep apnea (OSA) is still a challenge in clinical practice. We apply a modern machine learning method, the support vector machine to establish a predicting model for the severity of OSA. The support vector machine was applied to build up a prediction model based on three anthropometric features (neck circumference, waist circumference, and body mass index) and age on the first database. The established model was then valided independently on the second database. The anthropometric features and age were combined to generate powerful predictors for OSA. Following the common practice, we predict if a subject has the apnea-hypopnea index greater then 15 or not as well as 30 or not. Dividing by genders and age, for the AHI threhosld 15 (respectively 30), the cross validation and testing accuracy for the prediction were 85.3% and 76.7% (respectively 83.7% and 75.5%) in young female, while the negative likelihood ratio for the AHI threhosld 15 (respectively 30) for the cross validation and testing were 0.2 and 0.32 (respectively 0.06 and 0.1) in young female. The more accurate results with lower negative likelihood ratio in the younger patients, especially the female subgroup, reflect the potential of the proposed model for the screening purpose and the importance of approaching by different genders and the effects of aging.
机译:制定阻塞性睡眠呼吸暂停(OSA)的适用预测仍是临床实践中的挑战。我们应用了一种现代的机器学习方法,即支持向量机,为OSA的严重性建立了预测模型。应用支持向量机在第一个数据库上基于三个人体测量特征(颈围,腰围和体重指数)和年龄建立预测模型。然后在第二个数据库上独立验证建立的模型。人体测量学特征和年龄相结合,为OSA生成了强大的预测指标。按照通常的做法,我们可以预测受试者的呼吸暂停-呼吸不足指数是否大于15,以及是否大于30。按性别和年龄划分,对于AHI thhosld 15(分别为30),交叉预测和测试准确度在年轻女性中分别为85.3%和76.7%(分别为83.7%和75.5%),而对于交叉验证和测试的AHI threhosld 15(分别为30)在年轻女性中分别为0.2和0.32(分别为0.06和0.1)。在较年轻的患者中,尤其是在女性亚组中,具有较低的阴性可能性比,结果更准确,反映了所提出模型用于筛查目的的潜力以及不同性别接触的重要性和衰老的影响。

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