Uses and opportunities for machine learning in hypertension research

Dhammika Amaratunga , Javier Cabrera , Davit Sargsyan , John B. Kostis , Stavros Zinonos , William J. Kostis
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引用次数: 12

Abstract

Background

Artificial intelligence (AI) promises to provide useful information to clinicians specializing in hypertension. Already, there are some significant AI applications on large validated data sets.

Methods and results

This review presents the use of AI to predict clinical outcomes in big data i.e. data with high volume, variety, veracity, velocity and value. Four examples are included in this review. In the first example, deep learning and support vector machine (SVM) predicted the occurrence of cardiovascular events with 56%–57% accuracy. In the second example, in a data base of 378,256 patients, a neural network algorithm predicted the occurrence of cardiovascular events during 10 year follow up with sensitivity (68%) and specificity (71%). In the third example, a machine learning algorithm classified 1,504,437 patients on the presence or absence of hypertension with 51% sensitivity, 99% specificity and area under the curve 87%. In example four, wearable biosensors and portable devices were used in assessing a person's risk of developing hypertension using photoplethysmography to separate persons who were at risk of developing hypertension with sensitivity higher than 80% and positive predictive value higher than 90%. The results of the above studies were adjusted for demographics and the traditional risk factors for atherosclerotic disease.

Conclusion

These examples describe the use of artificial intelligence methods in the field of hypertension.

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机器学习在高血压研究中的应用和机遇
人工智能(AI)有望为专门研究高血压的临床医生提供有用的信息。已经有一些重要的人工智能应用在大型验证数据集上。方法与结果本文综述了人工智能在大数据(即海量、多样、准确、快速和有价值的数据)中预测临床结果的应用。这篇综述包括四个例子。在第一个例子中,深度学习和支持向量机(SVM)预测心血管事件发生的准确率为56%-57%。在第二个例子中,在378,256例患者的数据库中,神经网络算法预测10年随访期间心血管事件的发生,敏感性(68%)和特异性(71%)。在第三个例子中,机器学习算法以51%的灵敏度、99%的特异性和87%的曲线下面积对1,504,437例患者进行了高血压是否存在的分类。在例四中,使用可穿戴生物传感器和便携式设备,利用光容积脉搏波来评估一个人患高血压的风险,以敏感度高于80%和阳性预测值高于90%来区分患高血压的风险人群。上述研究的结果根据人口统计学和动脉粥样硬化疾病的传统危险因素进行了调整。结论这些例子描述了人工智能方法在高血压领域的应用。
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来源期刊
International Journal of Cardiology: Hypertension
International Journal of Cardiology: Hypertension Medicine-Cardiology and Cardiovascular Medicine
CiteScore
0.40
自引率
0.00%
发文量
0
审稿时长
13 weeks
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