Shuzan Md Nazmul Islam, Chowdhury Moajjem Hossain, Alam Saadia Binte, Reaz Mamun Bin Ibne, Khan Muhammad Salman, Murugappan M, Chowdhury Muhammad E H
Centre of Advanced Electronic and Communication Engineering, Department of Electrical, Electronic and Systems Engineering, Universiti Kebangsaan Malaysia, Bangi, 43600, Malaysia.
Department of Electrical Engineering, Qatar University, Doha, 2713, Qatar.
Phys Eng Sci Med. 2024 Dec;47(4):1705-1722. doi: 10.1007/s13246-024-01482-1. Epub 2024 Sep 17.
Breathing conditions affect a wide range of people, including those with respiratory issues like asthma and sleep apnea. Smartwatches with photoplethysmogram (PPG) sensors can monitor breathing. However, current methods have limitations due to manual parameter tuning and pre-defined features. To address this challenge, we propose the PPG2RespNet deep-learning framework. It draws inspiration from the UNet and UNet + + models. It uses three publicly available PPG datasets (VORTAL, BIDMC, Capnobase) to autonomously and efficiently extract respiratory signals. The datasets contain PPG data from different groups, such as intensive care unit patients, pediatric patients, and healthy subjects. Unlike conventional U-Net architectures, PPG2RespNet introduces layered skip connections, establishing hierarchical and dense connections for robust signal extraction. The bottleneck layer of the model is also modified to enhance the extraction of latent features. To evaluate PPG2RespNet's performance, we assessed its ability to reconstruct respiratory signals and estimate respiration rates. The model outperformed other models in signal-to-signal synthesis, achieving exceptional Pearson correlation coefficients (PCCs) with ground truth respiratory signals: 0.94 for BIDMC, 0.95 for VORTAL, and 0.96 for Capnobase. With mean absolute errors (MAE) of 0.69, 0.58, and 0.11 for the respective datasets, the model exhibited remarkable precision in estimating respiration rates. We used regression and Bland-Altman plots to analyze the predictions of the model in comparison to the ground truth. PPG2RespNet can thus obtain high-quality respiratory signals non-invasively, making it a valuable tool for calculating respiration rates.
呼吸疾病影响着广泛的人群,包括患有哮喘和睡眠呼吸暂停等呼吸系统问题的人。配备光电容积脉搏波描记法(PPG)传感器的智能手表可以监测呼吸。然而,由于手动参数调整和预定义特征,当前方法存在局限性。为应对这一挑战,我们提出了PPG2RespNet深度学习框架。它的灵感来自于UNet和UNet++模型。它使用三个公开可用的PPG数据集(VORTAL、BIDMC、Capnobase)来自动高效地提取呼吸信号。这些数据集包含来自不同群体的PPG数据,如重症监护病房患者、儿科患者和健康受试者。与传统的U-Net架构不同,PPG2RespNet引入了分层跳跃连接,建立了分层和密集连接以进行稳健的信号提取。该模型的瓶颈层也进行了修改,以增强潜在特征的提取。为了评估PPG2RespNet的性能,我们评估了其重建呼吸信号和估计呼吸频率的能力。该模型在信号到信号合成方面优于其他模型,与真实呼吸信号的皮尔逊相关系数(PCC)非常出色:BIDMC为0.94,VORTAL为0.95,Capnobase为0.96。对于各自的数据集,平均绝对误差(MAE)分别为0.69、0.58和0.11,该模型在估计呼吸频率方面表现出了显著的精度。我们使用回归和布兰德-奥特曼图来分析该模型与真实情况相比的预测结果。因此,PPG2RespNet可以无创地获得高质量的呼吸信号,使其成为计算呼吸频率的有价值工具。