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A review of machine learning in hypertension detection and blood pressure estimation based on clinical and physiological data

机译:基于临床和生理数据的高血压检测和血压估算机器学习述评

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摘要

The use of machine learning techniques in medicine has increased in recent years due to a rise in publicly available datasets. These techniques have been applied in high blood pressure studies following two approaches: hypertension stage classification based on clinical data and blood pressure estimation based on related physiological signals. This paper presents a literature review on such studies. We aimed to identify the best practices, challenges, and opportunities in developing machine learning models to detect hypertension or estimate blood pressure using clinical data and physiological signals. Hence, we identified and examined the machine learning techniques, publicly available datasets, and predictors used in previous studies. The feature selection techniques used to reduce model complexity are also reviewed. We found a lack of studies combining socio-demographic or clinical data with physiological signals, despite the correlation of blood pressure with photoplethysmography waveforms and variables such as age, gender, body mass index, and heart rate. Therefore, there is an opportunity to increase model performance by using both types of data for hypertension detection or blood pressure monitoring.
机译:由于公共数据集中的增长,近年来医学中的机器学习技术已经增加。这些技术已在两种方法后的高血压研究中应用:基于相关生理信号的临床资料和血压估计的高血压阶段分类。本文提出了关于此类研究的文献综述。我们旨在确定开发机器学习模型的最佳实践,挑战和机遇,以使用临床数据和生理信号检测高血压或估计血压。因此,我们确定并检查了先前研究中使用的机器学习技术,公共数据集和预测器。还介绍了用于降低模型复杂性的特征选择技术。尽管血压与摄影波形波形和变量如年龄,性别,体重指数和心率等变量相关,但我们发现缺乏社会人口统计或临床数据与生理信号的研究。因此,有机会通过使用用于高血压检测或血压监测的两种类型的数据来提高模型性能。

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