A1 Vertaisarvioitu alkuperäisartikkeli tieteellisessä lehdessä
An energy-efficient semi-supervised approach for on-device photoplethysmogram signal quality assessment
Tekijät: Feli Mohammad, Azimi Iman, Anzanpour Arman, Rahmani Amir M., Liljeberg Pasi
Kustantaja: Elsevier Ltd
Julkaisuvuosi: 2023
Journal: Smart Health
Artikkelin numero: 100390
Vuosikerta: 28
DOI: https://doi.org/10.1016/j.smhl.2023.100390
Verkko-osoite: https://doi.org/10.1016/j.smhl.2023.100390
Rinnakkaistallenteen osoite: https://research.utu.fi/converis/portal/detail/Publication/178986785
Photoplethysmography (PPG) is a non-invasive technique used in wearable devices to measure vital signs (e.g., heart rate). The method is, however, highly susceptible to motion artifacts, which are inevitable in remote health monitoring. Noise reduces signal quality, leading to inaccurate decision-making. In addition, unreliable data collection and transmission waste a massive amount of energy on battery-powered devices. Studies in the literature have proposed PPG signal quality assessment (SQA) enabled by rule-based and machine learning (ML)-based methods. However, rule-based techniques were designed according to certain specifications, resulting in lower accuracy with unseen noise and artifacts. ML methods have mainly been developed to ensure high accuracy without considering execution time and device’s energy consumption. In this paper, we propose a lightweight and energy-efficient PPG SQA method enabled by a semi-supervised learning strategy for edge devices. We first extract a wide range of features from PPG and then select the best features in terms of accuracy and latency. Second, we train a one-class support vector machine model to classify PPG signals into “Reliable” and “Unreliable” classes. We evaluate the proposed method in terms of accuracy, execution time, and energy consumption on two embedded devices, in comparison to five state-of-the-art PPG SQA methods. The methods are assessed using a PPG dataset collected via smartwatches from 46 individuals in free-living conditions. The proposed method outperforms the other methods by achieving an accuracy of 0.97 and a false positive rate of 0.01. It also provides the lowest latency and energy consumption compared to other ML-based methods.
Ladattava julkaisu This is an electronic reprint of the original article. |