Machine-Learning Classification of Pulse Waveform Quality

Author:

Ouyoung Te,Weng Wan-Ling,Hu Ting-Yu,Lee Chia-Chien,Wu Li-WeiORCID,Hsiu HsinORCID

Abstract

Pulse measurements made using wearable devices can aid the monitoring of human physiological condition. Accurate estimation of waveforms is often difficult for nonexperts; motion artifacts may occur during tonometry measurements when the skin–sensor contact pressure is insufficient. An alternative approach is to extract only high-quality pulses for use in index calculations. The present study aimed to determine the effectiveness of using machine-learning analysis in discriminating between high-quality and low-quality pulse waveforms induced by applying different contact pressures. Radial blood pressure waveform (BPW) signals were measured noninvasively in healthy young subjects using a strain-gauge transducer. One-minute-long trains of pulse data were measured when applying the appropriate contact pressure (67.80 ± 1.55 mmHg) and a higher contact pressure (151.80 ± 3.19 mmHg). Eight machine-learning algorithms were employed to evaluate the following 40 harmonic pulse indices: amplitude proportions and their coefficients of variation and phase angles and their standard deviations. Significant differences were noted in BPW indices between applying appropriate and higher skin–surface contact pressures. The present appropriate contact pressure could not only provide a suitable holding force for the wearable device but also helped to maintain the physiological stability of the underlying tissues. Machine-learning analysis provides an effective method for distinguishing between the high-quality and low-quality pulses with excellent discrimination performance (leave-one-subject-out test: random-forest AUC = 0.96). This approach will aid the development of an automatic screening method for waveform quality and thereby improve the noninvasive acquisition reliability. Other possible interfering factors in practical applications can also be systematically studied using a similar procedure.

Funder

Ministry of Science and Technology Taiwan

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference30 articles.

1. Reflectance forehead pulse oximetry: Effects of contact pressure during walking;Conf. Proc. IEEE Eng. Med. Biol. Soc.,2006

2. Relationship between Contact Pressure and Motion Artifacts in ECG Measurement with Electrostatic Flocked Electrodes Fabricated on Textile;Sci. Rep.,2019

3. Pulse wave analysis and arterial stiffness;J. Cardiovasc. Pharmacol.,1998

4. Structure and Function of Systemic Arteries: Reflections on the Arterial Pulse;Am. J. Hypertens.,2018

5. Wearable Millimeter-Wave Device for Contactless Measurement of Arterial Pulses;IEEE Trans. Biomed. Circuits Syst.,2019

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