Dehkordi Parastoo, Bauer Erwin P, Tavakolian Kouhyar, Xiao Zhen G, Blaber Andrew P, Khosrow-Khavar Farzad
Heart Force Medical Inc., Vancouver, BC, Canada.
School of Electrical Engineering and Computer Science, University of North Dakota, Grand Forks, ND, United States.
Front Physiol. 2021 Dec 2;12:758727. doi: 10.3389/fphys.2021.758727. eCollection 2021.
In this study, we present a non-invasive solution to identify patients with coronary artery disease (CAD) defined as ⩾50% stenosis in at least one coronary artery. The solution is based on the analysis of linear acceleration (seismocardiogram, SCG) and angular velocity (gyrocardiogram, GCG) of the heart recorded in the x, y, and z directional axes from an accelerometer/gyroscope sensor mounted on the sternum. The database was collected from 310 individuals through a multicenter study. The time-frequency features extracted from each SCG and GCG data channel were fed to a one-dimensional Convolutional Neural Network (1D CNN) to train six separate classifiers. The results from different classifiers were later fused to estimate the CAD risk for each participant. The predicted CAD risk was validated against related results from angiography. The SCG z and SCG y classifiers showed better performance relative to the other models ( < 0.05) with the area under the curve (AUC) of 91%. The sensitivity range for CAD detection was 92-94% for the SCG models and 73-87% for the GCG models. Based on our findings, the SCG models achieved better performance in predicting the CAD risk compared to the GCG models; the model based on the combination of all SCG and GCG classifiers did not achieve higher performance relative to the other models. Moreover, these findings showed that the performance of the proposed 3-axial SCG/GCG solution based on recordings obtained during rest was comparable, or better than stress ECG. These data may indicate that 3-axial SCG/GCG could be used as a portable at-home CAD screening tool.
在本研究中,我们提出了一种非侵入性解决方案,用于识别冠状动脉疾病(CAD)患者,CAD定义为至少一条冠状动脉狭窄≥50%。该解决方案基于对安装在胸骨上的加速度计/陀螺仪传感器在x、y和z方向轴上记录的心脏线性加速度(心震图,SCG)和角速度(心陀螺图,GCG)的分析。通过一项多中心研究从310名个体中收集了数据库。从每个SCG和GCG数据通道提取的时频特征被输入到一维卷积神经网络(1D CNN)中,以训练六个独立的分类器。不同分类器的结果随后进行融合,以估计每个参与者的CAD风险。预测的CAD风险与血管造影的相关结果进行了验证。SCG z和SCG y分类器相对于其他模型表现出更好的性能(<0.05),曲线下面积(AUC)为91%。SCG模型检测CAD的灵敏度范围为92 - 94%,GCG模型为73 - 87%。基于我们的研究结果,与GCG模型相比,SCG模型在预测CAD风险方面表现更好;基于所有SCG和GCG分类器组合的模型相对于其他模型并未实现更高的性能。此外,这些研究结果表明,基于静息期间记录的所提出 的三轴SCG/GCG解决方案的性能与应激心电图相当,或优于应激心电图。这些数据可能表明,三轴SCG/GCG可作为一种便携式家庭CAD筛查工具。