Graduate Institute of Biomedical Engineering, Chang Gung University, Taoyuan 33302, Taiwan.
Center for Biomedical Engineering, Department of Electrical Engineering, Chang Gung University, Taoyuan 33302, Taiwan.
Biosensors (Basel). 2022 May 30;12(6):374. doi: 10.3390/bios12060374.
Accelerometer-based devices have been employed in seismocardiography fiducial point detection with the aid of quasi-synchronous alignment between echocardiography images and seismocardiogram signals. However, signal misalignments have been observed, due to the heartbeat cycle length variation. This paper not only analyzes the misalignments and detection errors but also proposes to mitigate the issues by introducing reference signals and adynamic time warping (DTW) algorithm. Two diagnostic parameters, the ratio of pre-ejection period to left ventricular ejection time (PEP/LVET) and the Tei index, were examined with two statistical verification approaches: (1) the coefficient of determination (R) of the parameters versus the left ventricular ejection fraction (LVEF) assessments, and (2) the receiver operating characteristic (ROC) classification to distinguish the heart failure patients with reduced ejection fraction (HFrEF). Favorable R values were obtained, R = 0.768 for PEP/LVET versus LVEF and R = 0.86 for Tei index versus LVEF. The areas under the ROC curve indicate the parameters that are good predictors to identify HFrEF patients, with an accuracy of more than 92%. The proof-of-concept experiments exhibited the effectiveness of the DTW-based quasi-synchronous alignment in seismocardiography fiducial point detection. The proposed approach may enable the standardization of the fiducial point detection and the signal template generation. Meanwhile, the program-generated annotation data may serve as the labeled training set for the supervised machine learning.
加速度计设备已在心动冲击图基准点检测中得到应用,借助于超声心动图图像和心动冲击图信号之间的准同步对齐。然而,由于心跳周期长度的变化,观察到了信号失准和检测误差。本文不仅分析了这些失准和检测误差,还通过引入参考信号和动态时间规整(DTW)算法来提出解决方案。使用两种统计验证方法检查了两个诊断参数,即射前期与左心室射血时间的比值(PEP/LVET)和 Tei 指数:(1)参数与左心室射血分数(LVEF)评估之间的决定系数(R),以及(2)用于区分射血分数降低心力衰竭(HFrEF)患者的接收器工作特征(ROC)分类。获得了良好的 R 值,PEP/LVET 与 LVEF 的 R = 0.768,Tei 指数与 LVEF 的 R = 0.86。ROC 曲线下的面积表明这些参数是识别 HFrEF 患者的良好预测指标,准确率超过 92%。概念验证实验展示了基于 DTW 的心动冲击图基准点检测准同步对齐的有效性。所提出的方法可以实现基准点检测和信号模板生成的标准化。同时,程序生成的注释数据可以作为有监督机器学习的标记训练集。