Causal Inference for Hypertension Prediction With Wearable E lectrocardiogram and P hotoplethysmogram Signals: Feasibility Study.

Q2 Medicine
JMIR Cardio Pub Date : 2025-01-23 DOI:10.2196/60238
Ke Gon G, Yifan Chen, Xinyue Song, Zhizhong Fu, Xiaorong Ding
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引用次数: 0

Abstract

Background: Hypertension is a leading cause of cardiovascular disease and premature death worldwide, and it puts a heavy burden on the healthcare system. Therefore, it is very important to detect and evaluate hypertension and related cardiovascular events to enable early prevention, detection, and management. Hypertension can be detected in a timely manner with cardiac signals, such as through an electrocardiogram (ECG) and photoplethysmogram (PPG) , which can be observed via wearable sensors. Most previous studies predicted hypertension from ECG and PPG signals with extracted features that are correlated with hypertension. However, correlation is sometimes unreliable and may be affected by confounding factors .

Objective: The aim of this study was to investigate the feasibility of predicting the risk of hypertension by exploring features that are causally related to hypertension via causal inference methods. Additionally, we paid special attention to and verified the reliability and effectiveness of causality compared to correlation.

Methods: We used a large public dataset from the Aurora Project , which was conducted by Microsoft Research. The dataset included diverse individuals who were balanced in terms of gender, age, and the condition of hypertension, with their ECG and PPG signals simultaneously acquired with wrist -worn wearable devices. We first extracted 205 features from the ECG and PPG signals, calculated 6 statistical metrics for these 205 features, and selected some valuable features out of the 205 features under each statistical metric. Then, 6 causal graphs of the selected features for each kind of statistical metric and hypertension were constructed with the equivalent greedy search algorithm. We further fused the 6 causal graphs into 1 causal graph and identified features that were causally related to hypertension from the causal graph . Finally, we used these features to detect hypertension via machine learning algorithms.

Results: We validated the proposed method on 405 subjects. We identified 24 causal features that were associated with hypertension. The causal features could detect hypertension with an accuracy of 89%, precision of 92 % , and recall of 82%, which outperformed detection with correlation features (accuracy of 85%, precision of 88 % , and recall of 77%).

Conclusions: The results indicated that the causal inference -based approach can potentially clarify the mechanism of hypertension detection with noninvasive signals and effectively detect hypertension. It also reveal ed that causality can be more reliable and effective than correlation for hypertension detection and other application scenarios.

可穿戴式心电图和P热容积图信号预测高血压的因果推断:可行性研究。
背景:高血压是世界范围内导致心血管疾病和过早死亡的主要原因,它给卫生保健系统带来了沉重的负担。因此,检测和评估高血压及相关心血管事件以实现早期预防、发现和管理是非常重要的。高血压可以通过心脏信号及时检测,例如通过可穿戴传感器观察到的心电图(ECG)和光电容积描记图(PPG)。以往的研究大多通过提取与高血压相关的特征,从ECG和PPG信号中预测高血压。然而,相关性有时是不可靠的,并可能受到混杂因素的影响。目的:本研究的目的是通过因果推理方法探索与高血压相关的特征,探讨预测高血压风险的可行性。此外,我们特别关注并验证了因果关系相对于相关性的可靠性和有效性。方法:我们使用了微软研究院进行的Aurora项目的大型公共数据集。该数据集包括性别、年龄和高血压状况平衡的不同个体,他们的ECG和PPG信号同时通过腕部可穿戴设备获取。我们首先从心电和PPG信号中提取205个特征,对这205个特征计算6个统计度量,并在每个统计度量下从205个特征中选择一些有价值的特征。然后,利用等价贪婪搜索算法,构建了每种统计度量与高血压所选择特征的6个因果图。我们进一步将6个因果图融合为1个因果图,并从因果图中识别出与高血压有因果关系的特征。最后,我们利用这些特征通过机器学习算法检测高血压。结果:我们对405名受试者进行了验证。我们确定了24个与高血压相关的因果特征。因果特征检测高血压的准确率为89%,精密度为92%,召回率为82%,优于相关特征检测(准确率为85%,精密度为88%,召回率为77%)。结论:基于因果推理的方法可以潜在地阐明无创信号检测高血压的机制,有效地检测高血压。在高血压检测等应用场景中,因果关系比相关性更可靠、更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
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