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Toward Hypertension Prediction Based on PPG-Derived HRV Signals: a Feasibility Study.
Resource
Journal of Medical Systems, Vol.42, No.6, pp.103-110
Date Issued
2020-01-06T01:54:40Z
Date
2018-06
Abstract
Heart rate variability (HRV) is often used to assess the risk of cardiovascular disease, and data on this can be obtained via electrocardiography (ECG). However, collecting heart rate data via photoplethysmography (PPG) is now a lot easier. We investigate the feasibility of using the PPG-based heart rate to estimate HRV and predict diseases. We obtain three months of PPG-based heart rate data from subjects with and without hypertension, and calculate the HRV based on various forms of time and frequency domain analysis. We then apply a data mining technique to this estimated HRV data, to see if it is possible to correctly identify patients with hypertension. We use six HRV parameters to predict hypertension, and find SDNN has the best predictive power. We show that early disease prediction is possible through collecting one’s PPG-based heart rate information.
Subjects
E-health; Home Health Monitoring; Sensor Technology; Telehealth; Heart Rate Monitoring; Wireless Sensor Networks
Publisher
Springer Nature
Type
article
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Size
123 B
Format
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Checksum
(MD5):129bc57fc5086b86e2c9fd580ea57cc2