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一种用于检测心冲击图信号中运动伪影的混合模型。

A hybrid model for detecting motion artifacts in ballistocardiogram signals.

作者信息

Jiang Yuelong, Zhang Han, Zeng Qizheng

机构信息

School of Electronics Science & Engineering (School of Microelectronics), South China Normal University, Foshan, 528200, China.

Guangdong Provincial Research Center for Cardiovascular Individual Medical and Big Data, South China Normal University, Guangzhou, 510006, China.

出版信息

Biomed Eng Online. 2025 Jul 23;24(1):92. doi: 10.1186/s12938-025-01426-0.

Abstract

BACKGROUND

The field of contactless health monitoring has witnessed significant advancements with the advent of piezoelectric sensing technology, which enables the monitoring of vital signs such as heart rate and respiration without requiring direct contact with the subject. This is especially advantageous for home sleep monitoring, where traditional wearable devices may be intrusive. However, the acquisition of piezoelectric signals is often impeded by motion artifacts, which are distortions caused by the subject of movements and can obscure the underlying physiological signals. These artifacts can significantly impair the reliability of signal analysis, necessitating effective identification and mitigation strategies. Various methods, including filtering techniques and machine learning approaches, have been employed to address this issue, but the challenge persists due to the complexity and variability of motion artifacts.

METHODS

This study introduces a hybrid model for detecting motion artifacts in ballistocardiogram (BCG) signals, utilizing a dual-channel approach. The first channel uses a deep learning model, specifically a temporal Bidirectional Gated Recurrent Unit combined with a Fully Convolutional Network (BiGRU-FCN), to identify motion artifacts. The second channel employs multi-scale standard deviation empirical thresholds to detect motion. The model was designed to address the randomness and complexity of motion artifacts by integrating deep learning capabilities with manual feature judgment. The data used for this study were collected from patients with sleep apnea using piezoelectric sensors, and the model's performance was evaluated using a set of predefined metrics.

RESULTS

This paper proposes and confirms through analysis that the proposed hybrid model exhibits exceptional accuracy in detecting motion artifacts in ballistocardiogram (BCG) signals. Employing a dual-channel approach, the model integrates multi-scale feature judgment with a BiGRU-FCN deep learning model. It achieved a classification accuracy of 98.61% and incurred only a 4.61% loss of valid signals in non-motion intervals. When tested on data from ten patients with sleep apnea, the model demonstrated robust performance, highlighting its potential for practical use in home sleep monitoring.

CONCLUSION

The proposed hybrid model presents a significant advancement in the detection of motion artifacts in BCG signals. Compared to existing methods such as the Alivar method [29], Enayati method [22], and Wiard method [20], our hybrid model achieves higher classification accuracy (98.61%) and lower valid signal loss ratio (4.61%). This demonstrates the effectiveness of integrating multi-scale standard deviation empirical thresholds with a deep learning model in enhancing the accuracy and robustness of motion artifact detection. This approach is particularly effective for home sleep monitoring, where motion artifacts can significantly impact the reliability of health monitoring data. The study findings suggest that the proposed hybrid model could serve as a valuable tool for improving the accuracy of motion artifact detection in various health monitoring applications.

摘要

背景

随着压电传感技术的出现,非接触式健康监测领域取得了重大进展,该技术能够在无需直接接触受试者的情况下监测心率和呼吸等生命体征。这对于家庭睡眠监测尤其有利,因为传统的可穿戴设备可能会造成干扰。然而,压电信号的采集常常受到运动伪影的阻碍,运动伪影是由受试者的运动引起的失真,会掩盖潜在的生理信号。这些伪影会显著损害信号分析的可靠性,因此需要有效的识别和缓解策略。已经采用了各种方法,包括滤波技术和机器学习方法来解决这个问题,但由于运动伪影的复杂性和多变性,挑战仍然存在。

方法

本研究引入了一种用于检测心冲击图(BCG)信号中运动伪影的混合模型,采用双通道方法。第一个通道使用深度学习模型,具体是一个时间双向门控循环单元与全卷积网络(BiGRU-FCN)相结合,来识别运动伪影。第二个通道采用多尺度标准差经验阈值来检测运动。该模型旨在通过将深度学习能力与人工特征判断相结合来解决运动伪影的随机性和复杂性。本研究使用的数据是通过压电传感器从睡眠呼吸暂停患者中收集的,并且使用一组预定义的指标对模型的性能进行了评估。

结果

本文提出并通过分析证实,所提出的混合模型在检测心冲击图(BCG)信号中的运动伪影方面表现出卓越的准确性。该模型采用双通道方法,将多尺度特征判断与BiGRU-FCN深度学习模型相结合。它实现了98.61%的分类准确率,并且在非运动区间仅造成4.61%的有效信号损失。当在十名睡眠呼吸暂停患者的数据上进行测试时,该模型表现出强大的性能,突出了其在家庭睡眠监测中的实际应用潜力。

结论

所提出的混合模型在BCG信号中运动伪影的检测方面取得了重大进展。与现有的方法如Alivar方法[29]、Enayati方法[22]和Wiard方法[20]相比,我们的混合模型实现了更高的分类准确率(98.61%)和更低的有效信号损失率(4.61%)。这证明了将多尺度标准差经验阈值与深度学习模型相结合在提高运动伪影检测的准确性和鲁棒性方面的有效性。这种方法对于家庭睡眠监测特别有效,因为运动伪影会显著影响健康监测数据 的可靠性。研究结果表明,所提出的混合模型可以作为一种有价值的工具,用于提高各种健康监测应用中运动伪影检测的准确性

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