A Resource-Efficient Time-Domain-Based Algorithm to Estimate Respiration Rate From Single-Lead ECG Signal

G. B. Krishnapriya;R. N. Ponnalagu;Sanket Goel
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Abstract

This study introduces a novel, computationally efficient time-domain (TD) algorithm for accurate breath rate (BR) estimation from single-lead ECG signals, designed for wearable devices. The proposed algorithm uses statistical TD parameters—mean, prominence, and distance (MPD)—to detect valid respiratory peaks in ECG-derived respiration (EDR) signals. The performance of the MPD algorithm was evaluated using two datasets: 1) a benchmark database containing ECG acquired during dynamic activities and 2) a real-time dataset comprising ECG signals from five subjects performing dynamic activities, including standing, jogging, and recovery. Comparative analysis against state-of-the-art TD methods, such as count-orig, zero-crossing detection, peak detection, and adaptive threshold techniques, demonstrates the superiority of MPD in both accuracy and computational efficiency. On the benchmark dataset, MPD achieved a mean absolute error (MAE) of 3.66 bpm and mean absolute percentage error (MAPE) of 23.69%, outperforming the Count-Orig method (MAE = 5.09 bpm, MAPE = 32.76%). For real-time data, MPD further demonstrated robust performance with an MAE of 1.53 bpm and MAPE of 7.25%. The algorithm’s design simplicity, combined with its ability to handle spurious peaks and varying signal conditions, makes it particularly suitable for resource-constrained wearable applications. Its high accuracy, low computational demands, and adaptability across activity conditions underscore its potential for continuous, real-time respiratory monitoring in diverse scenarios.
一种资源高效的基于时域的单导联心电信号呼吸速率估计算法
本研究介绍了一种新颖的、计算效率高的时域(TD)算法,用于从单导联心电信号中准确估计呼吸速率(BR),该算法专为可穿戴设备设计。该算法使用统计TD参数——均值、显著性和距离(MPD)来检测ecg衍生呼吸(EDR)信号中的有效呼吸峰值。使用两个数据集对MPD算法的性能进行了评估:1)包含动态活动期间获得的ECG的基准数据库;2)包含五个受试者进行动态活动(包括站立、慢跑和恢复)的ECG信号的实时数据集。与最先进的TD方法(如计数起源、过零检测、峰值检测和自适应阈值技术)进行比较分析,证明了MPD在精度和计算效率方面的优势。在基准数据集上,MPD的平均绝对误差(MAE)为3.66 bpm,平均绝对百分比误差(MAPE)为23.69%,优于count - origin方法(MAE = 5.09 bpm, MAPE = 32.76%)。对于实时数据,MPD进一步表现出稳健的性能,MAE为1.53 bpm, MAPE为7.25%。该算法设计简单,能够处理杂散峰值和变化的信号条件,因此特别适合资源受限的可穿戴应用。它的高精度、低计算需求和跨活动条件的适应性强调了它在不同场景下连续、实时呼吸监测的潜力。
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