期刊论文详细信息
Frontiers in Digital Health
Heart rate estimation from ballistocardiogram signals processing via low-cost telemedicine architectures: a comparative performance evaluation
Digital Health
Salvatore Venticinque1  Mario Magliulo2  Salvatore Cioce2  Adriano Tramontano2  Oscar Tamburis3 
[1] Department of Engineering, University of Campania “Luigi Vanvitelli”, Aversa (CE), Italy;Institute of Biostructures and Bioimaging, National Research Council (IBB–CNR), Naples, Italy;Institute of Biostructures and Bioimaging, National Research Council (IBB–CNR), Naples, Italy;Department of Veterinary Medicine and Animal Productions, University of Naples “Federico II”, Naples, Italy;
关键词: eHealth;    bpm;    photoplethysmography;    ballistocardiography;    computer architecture;    signal processing;    neural networks;   
DOI  :  10.3389/fdgth.2023.1222898
 received in 2023-06-01, accepted in 2023-07-10,  发布年份 2023
来源: Frontiers
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【 摘 要 】

Medical devices (MDs) have been designed for monitoring the parameters of patients in many sectors. Nonetheless, despite being high-performing and reliable, they often turn out to be expensive and intrusive. In addition, MDs are almost exclusively used in controlled, hospital-based environments. Paving a path of technological innovation in the clinical field, a very active line of research is currently dealing with the possibility to rely on non-medical-graded low-cost devices, to develop unattended telemedicine (TM) solutions aimed at non-invasively gathering data, signals, and images. In this article, a TM solution is proposed for monitoring the heart rate (HR) of patients during sleep. A remote patient monitoring system (RPMS) featuring a smart belt equipped with pressure sensors for ballistocardiogram (BCG) signals sampling was deployed. A field trial was then conducted over a 2-month period on 24 volunteers, who also agreed to wear a finger pulse oximeter capable of producing a photoplethysmography (PPG) signal as the gold standard, to examine the feasibility of the solution via the estimation of HR values from the collected BCG signals. For this purpose, two of the highest-performing approaches for HR estimation from BCG signals, one algorithmic and the other based on a convolutional neural network (CNN), were retrieved from the literature and updated for a TM-related use case. Finally, HR estimation performances were assessed in terms of patient-wise mean absolute error (MAE). Results retrieved from the literature (controlled environment) outperformed those achieved in the experimentation (TM environment) by 29% (MAE = 4.24 vs. 5.46, algorithmic approach) and 52% (MAE = 2.32 vs. 3.54, CNN-based approach), respectively. Nonetheless, a low packet loss ratio, restrained elaboration time of the collected biomedical big data, low-cost deployment, and positive feedback from the users, demonstrate the robustness, reliability, and applicability of the proposed TM solution. In light of this, further steps will be planned to fulfill new targets, such as evaluation of respiratory rate (RR), and pattern assessment of the movement of the participants overnight.

【 授权许可】

Unknown   
© 2023 Tramontano, Tamburis, Cioce, Venticinque and Magliulo.

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