A Complete Pipeline for Heart Rate Extraction from Infant ECGs

Signals Pub Date : 2024-03-13 DOI:10.3390/signals5010007
Harry T. Mason, A. P. Martinez-Cedillo, Q. Vuong, Maria Carmen Garcia-de-Soria, Stephen Smith, Elena Geangu, Marina I. Knight
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Abstract

Infant electrocardiograms (ECGs) and heart rates (HRs) are very useful biosignals for psychological research and clinical work, but can be hard to analyse properly, particularly longform (≥5 min) recordings taken in naturalistic environments. Infant HRs are typically much faster than adult HRs, and so some of the underlying frequency assumptions made about adult ECGs may not hold for infants. However, the bulk of publicly available ECG approaches focus on adult data. Here, existing open source ECG approaches are tested on infant datasets. The best-performing open source method is then modified to maximise its performance on infant data (e.g., including a 15 Hz high-pass filter, adding local peak correction). The HR signal is then subsequently analysed, developing an approach for cleaning data with separate sets of parameters for the analysis of cleaner and noisier HRs. A Signal Quality Index (SQI) for HR is also developed, providing insights into where a signal is recoverable and where it is not, allowing for more confidence in the analysis performed on naturalistic recordings. The tools developed and reported in this paper provide a base for the future analysis of infant ECGs and related biophysical characteristics. Of particular importance, the proposed solutions outlined here can be efficiently applied to real-world, large datasets.
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从婴儿心电图提取心率的完整管道
婴儿心电图(ECGs)和心率(HRs)是对心理研究和临床工作非常有用的生物信号,但却很难进行正确分析,尤其是在自然环境中进行的长格式(≥5 分钟)记录。婴儿的心率通常比成人快得多,因此对成人心电图的一些基本频率假设可能对婴儿不适用。然而,大部分公开的心电图方法都集中在成人数据上。在此,我们在婴儿数据集上测试了现有的开源心电图方法。然后对表现最好的开源方法进行修改,以最大限度地提高其在婴儿数据上的表现(例如,加入 15 Hz 高通滤波器,增加局部峰值校正)。随后对心率信号进行分析,开发出一种清理数据的方法,并为分析较干净和较嘈杂的心率信号分别设置了不同的参数。此外,还开发了心率信号质量指数(SQI),可深入了解哪些信号可恢复,哪些不可恢复,从而提高对自然记录分析的信心。本文开发和报告的工具为今后分析婴儿心电图和相关生物物理特征奠定了基础。尤其重要的是,本文提出的解决方案可有效地应用于现实世界的大型数据集。
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CiteScore
3.20
自引率
0.00%
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0
审稿时长
11 weeks
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