Movement filtered heart rate variability (HRV) data from a chest-worn sensor

Author:

Hanshans Christian1,Broell Lukas M.1,Plischke Herbert1,Offenbaecher Martin2,Zauner Johannes1,Faust Moritz M. R.1,Maisch Bettina1,Kohls Niko3,Toussaint Loren4,Hirsch Jameson5,Siros Fuschia M.6

Affiliation:

1. Munich University for Applied Sciences, Lothstraße 34, Munich , Germany

2. Rehaklinik Bad Gastein, Bad Gastein , Austria

3. University of Applied Sciences Coburg, Coburg , Germany

4. Luther College, Decorah , United States of America

5. East Tennessee State University, Johnson City , United States of America

6. The University of Sheffield, Sheffield , United Kingdom of Great Britain and Northern Ireland

Abstract

Abstract Recording of heart rate variability (HRV) is a noninvasive and continuous measurement method that allows investigating the autonomic nervous system (ANS) and its reaction to environmental influences. For a precise measurement of HRV data, a carefully chosen study design and environment is required to minimize secondary influences. One major influence to be avoided is movement. However, in the daily routine and for some scientific questions, movement can often not be avoided. If so, a manual or automated method to differentiate between artifacts caused by body movement and the actual psychophysiological effect is needed to ensure the data quality. In this approach, a chest-worn sensor was developed, that measures the heart rate using a single lead ECG and filters the measured change of the HRV caused by movement. Data from an integrated accelerometer is used to detect upper body movements that affect the resting heart rate. The movementcorresponding time stamps are then used to filter the Interbeat Intervals (IBI) accordingly. Functionality and effectiveness of the sensor system have been tested against state-of-the art sports- or clinical devices in varying scenarios. As our test series showed, motion filtering has a decisive effect when motion occurs, two-thirds of all cases showed a significant effect of motion filtering, with small to medium effect sizes for the parameters SD2, SD2/SD1, and SDNN. Thereby, automatic filtering of motion artifacts can help to significantly reduce the need for costly post-processing of distorted data sets. The results show a better data quality of HRV measurement, a method that is commonly used for the investigation of physiological processes in the field of chronic pain, psychology, psychiatry, or sports medicine.

Publisher

Walter de Gruyter GmbH

Subject

Biomedical Engineering

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