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Machine learning classification analysis for a hypertensive population as a function of several risk factors

机译:高血压人群的机器学习分类分析与若干危险因素的关系

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This research presents a prediction model to evaluate the association between gender, race, BMI, age, smoking, kidney disease and diabetes using logistic regression. Data collected from NHANES datasets from 2007 to 2016. An unbalanced sampling dataset of 19.709 with (83%) non-hypertensive individuals and (17%) hypertensive individuals. Some risk factors were categorized, and indicator variables were created to transform the continuous variables to a binary form to have consistent predictors with the outcome. The results show a sensitivity of 77%, a specificity of 68%, precision on the positive predicted value of 32% in the test sample and a calculated AUC of 73% (95% CI[0.70-0.76]). The model also confirms that individuals with obesity, age range between 71 and 80 years old, race non-Hispanic black and male have higher odds of having hypertension. Diabetes, kidney disease and smoking habits do not affect odds of the outcome. In clinical practice, this model can be used to inform patients and guide population health management in detecting patients with high probability of developing a cardiovascular disease. The proposed logistic regression method can be used as an expert system's inference engine to support the experts in the cardiovascular disease field to provide problem analysis for patients in risk of developing hypertension. (C) 2018 Elsevier Ltd. All rights reserved.
机译:这项研究提出了一种预测模型,可通过逻辑回归评估性别,种族,BMI,年龄,吸烟,肾脏疾病和糖尿病之间的关系。从2007年至2016年的NHANES数据集中收集的数据。一个不平衡的采样数据集为19.709,其中(83%)非高血压个体和(17%)高血压个体。对一些风险因素进行了分类,并创建了指标变量,以将连续变量转换为二进制形式,从而使结果具有一致的预测变量。结果显示灵敏度为77%,特异性为68%,对测试样品中32%的阳性预测值的精确度和73%的计算AUC(95%CI [0.70-0.76])。该模型还证实,年龄在71至80岁之间,非西班牙裔黑人和男性的肥胖者,患高血压的几率更高。糖尿病,肾脏疾病和吸烟习惯不影响预后的可能性。在临床实践中,该模型可用于告知患者并指导人群健康管理,以发现患有心血管疾病的可能性较高的患者。所提出的逻辑回归方法可以用作专家系统的推理引擎,以支持心血管疾病领域的专家为有患高血压风险的患者提供问题分析。 (C)2018 Elsevier Ltd.保留所有权利。

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