使用机器学习算法预测印尼成年人的高血压

Rico Kurniawan, B. Utomo, K. Siregar, K. Ramli, B. Besral, Ruddy J. Suhatril, Okky Assetya Pratiwi
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引用次数: 3

摘要

早期的风险预测和适当的治疗被认为能够延缓高血压及其伴随疾病的发生。世界各地已经开发了许多高血压预测模型,但它们不能直接推广到所有人群,包括印尼人群。本研究旨在使用机器学习(ML)开发和验证高血压风险预测模型。可修改的风险因素被用作预测因素,而算法上的目标变量是高血压状态。本研究比较了几种机器学习算法,如决策树、随机森林、梯度增强和逻辑回归,以开发高血压预测模型。几个参数,包括受试者特征曲线下面积(AUC)、分类准确度(CA)、F1评分、准确度和召回率,用于评估模型。本研究中使用的大多数预测因子与高血压显著相关。Logistic回归算法显示出更好的参数值,AUC为0.829,CA为89.6%,召回率为0.896,精密度为0.878,F1得分为0.877。ML提供了使用非侵入性因素开发高血压筛查快速预测模型的能力。根据这项研究,我们估计89.6%的家庭血压测量结果显示血压升高的人会出现临床高血压。
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Hypertension prediction using machine learning algorithm among Indonesian adults
Early risk prediction and appropriate treatment are believed to be able to delay the occurrence of hypertension and attendant conditions. Many hypertension prediction models have been developed across the world, but they cannot be generalized directly to all populations, including for Indonesian population. This study aimed to develop and validate a hypertension risk-prediction model using machine learning (ML). The modifiable risk factors are used as the predictor, while the target variable on the algorithm is hypertension status. This study compared several machine-learning algorithms such as decision tree, random forest, gradient boosting, and logistic regression to develop a hypertension prediction model. Several parameters, including the area under the receiver operator characteristic curve (AUC), classification accuracy (CA), F1 score, precision, and recall were used to evaluate the models. Most of the predictors used in this study were significantly correlated with hypertension. Logistic regression algorithm showed better parameter values, with AUC 0.829, CA 89.6%, recall 0.896, precision 0.878, and F1 score 0.877. ML offers the ability to develop a quick prediction model for hypertension screening using non-invasive factors. From this study, we estimate that 89.6% of people with elevated blood pressure obtained on home blood pressure measurement will show clinical hypertension.
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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