Multichannel Bed Based Ballistocardiography Heart Rate Estimation Using Continuous Wavelet Transforms and Autocorrelation

Ismail Elnaggar, Tero Hurnanen, Jonas Sandelin, O. Lahdenoja, A. Airola, M. Kaisti, T. Koivisto
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Abstract

Bed based ballistocardiography (BCG) is a prime candidate for at home and nighttime monitoring especially in the growing elderly population because co-operation from the user is not required to be able to record signals. One issue with BCG is that the signal quality has intra-and inter-person variability based on factors such as age, gender, body position, and motion artifacts, making it challenging to accurately measure heart rate. A rule-based algorithm which considers all eight available BCG channels simultaneously from a given time epoch was developed using continuous wavelet transform (CWT) to extract the localized time-frequency representation of each epoch and then an averaging method was applied across the different scales of the CWT to produce a 1-dimensional array. Autocorrelation was then applied to this array to produce a heart rate estimate based on the lag between the autocorrelation maximum and the first side peak. This method does not require identification of individual heart beats to estimate heart rate and does not require annotated training data. This model produces an average mean absolute error (MAE) of 1.09 bpm across 40 subjects when compared to heart rate derived from ECG. This method produces competitive results without the need for annotated training data, which can be challenging to collect.
基于连续小波变换和自相关的多通道床弹道心电图心率估计
基于床上的弹道心动图(BCG)是家庭和夜间监测的首选,特别是在不断增长的老年人口中,因为不需要用户的合作才能记录信号。卡介苗的一个问题是,信号质量有基于年龄、性别、体位和运动伪影等因素的内部和人与人之间的差异,这使得准确测量心率具有挑战性。提出了一种基于规则的连续小波变换(CWT)算法,该算法同时考虑给定时间历元内所有8个可用的BCG信道,利用连续小波变换(CWT)提取每个历元的局域时频表示,然后在CWT的不同尺度上应用平均方法产生一维阵列。然后将自相关应用于该阵列,以产生基于自相关最大值和第一个侧峰之间的滞后的心率估计。该方法不需要识别个人心跳来估计心率,也不需要注释的训练数据。与心电图得出的心率相比,该模型在40名受试者中产生的平均绝对误差(MAE)为1.09 bpm。这种方法产生有竞争力的结果,而不需要带注释的训练数据,这可能很难收集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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