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Predicting hypertension onset using logistic regression models with labs and/or easily accessible variables: the role of blood pressure measurements

机译:使用实验室和/或易于访问的变量使用Logistic回归模型预测高血压发作:血压测量的作用

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Hypertension is a critical condition that represents a leading risk factor for mortality. The identification of subjects at risk of developing hypertension is important to improve life expectancy and reduce the burden of healthcare systems. Available models to predict hypertension onset in some years in the future mainly include blood pressure (BP) measurements as well as blood test and lifestyle variables. However, systolic and diastolic BP are inevitably strong predictors of the disease and their presence in such models may hide a possible key role of other covariates. The aim of this work is to develop predictive models of hypertension onset both with and without the use of BP measurements to investigate if and how BP variables influence the feature selection process. By involving a large dataset on individuals socio-economic status, demographics, wellbeing, lifestyle, medical history and blood exams, logistic regression models (w/ and w/o BP) have been trained using a stepwise selection procedure to select only highly predictive variables. The model with systolic and diastolic BP selected as important variables HDL cholesterol, hemoglobin, marital status, depression scale and alcohol drinking, achieving an area under the receiver-operating characteristic curve (AU-ROC) of 0.80. The model without BP variables exploits heart rate, waist, age and marital status, and achieves AU-ROC=0.74. As expected, the model employing BP measurements performs better than the one that does not consider them. However, also without BP, it was possible to develop a model with satisfactory performance involving only easily accessible information that do not require laboratory tests.
机译:高血压是一种临界条件,代表死亡率的主要危险因素。有患有高血压风险的受试者的鉴定对于改善预期寿命并减少医疗保健系统的负担很重要。未来几年的可用模型预测高血压发作主要包括血压(BP)测量以及验血和生活方式变量。然而,收缩性和舒张性BP是不可避免的疾病的强烈预测因子,它们在这些模型中的存在可能隐藏其他协变量的可能关键作用。这项工作的目的是在不使用BP测量的情况下开发高血压发作的预测模型,以研究IF和如何如何影响特征选择过程。通过涉及对个人社会经济地位的大型数据集,人口统计数据,福祉,生活方式,病史和血液检查,使用逐步选择过程训练了逻辑回归模型(W /和W / O BP),以选择高度预测变量。具有收缩性和舒张性BP的模型选择重要变量HDL胆固醇,血红蛋白,婚姻状况,抑郁尺度和酒精饮用,在0.80的接收器操作特性曲线(Au-Roc)下实现了一个区域。没有BP变量的模型利用心率,腰部,年龄和婚姻状况,并实现Au-Roc = 0.74。正如预期的那样,采用BP测量的模型比不考虑它们的模型更好地执行。然而,也没有BP,可以开发一种令人满意的模型,涉及不需要实验室测试的易于访问信息。

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