Department of Computing, University of Turku, Turku, FI, Finland.
School of ICT, Faculty of Engineering, Turku University of Applied Sciences, Turku, FI, Finland.
Physiol Meas. 2022 May 25;43(5). doi: 10.1088/1361-6579/ac66ba.
. The purpose of this research is to develop a new deep learning framework for detecting atrial fibrillation (AFib), one of the most common heart arrhythmias, by analyzing the heart's mechanical functioning as reflected in seismocardiography (SCG) and gyrocardiography (GCG) signals. Jointly, SCG and GCG constitute the concept of mechanocardiography (MCG), a method used to measure precordial vibrations with the built-in inertial sensors of smartphones.. We present a modified deep residual neural network model for the classification of sinus rhythm, AFib, and Noise categories from tri-axial SCG and GCG data derived from smartphones. In the model presented, pre-processing including automated early sensor fusion and spatial feature extraction are carried out using attention-based convolutional and residual blocks. Additionally, we use bidirectional long short-term memory layers on top of fully-connected layers to extract both spatial and spatiotemporal features of the multidimensional SCG and GCG signals. The dataset consisted of 728 short measurements recorded from 300 patients. Further, the measurements were divided into disjoint training, validation, and test sets, respectively, of 481 measurements, 140 measurements, and 107 measurements. Prior to ingestion by the model, measurements were split into 10 s segments with 75 percent overlap, pre-processed, and augmented.. On the unseen test set, the model delivered average micro- and macro-F1-score of 0.88 (0.87-0.89; 95% CI) and 0.83 (0.83-0.84; 95% CI) for the segment-wise classification as well as 0.95 (0.94-0.96; 95% CI) and 0.95 (0.94-0.96; 95% CI) for the measurement-wise classification, respectively.. Our method not only can effectively fuse SCG and GCG signals but also can identify heart rhythms and abnormalities in the MCG signals with remarkable accuracy.
. 本研究旨在开发一种新的深度学习框架,用于通过分析心震图(SCG)和心旋图(GCG)信号反映的心脏机械功能来检测心房颤动(AFib),这是最常见的心律失常之一。SCG 和 GCG 共同构成了心动描记术(MCG)的概念,该方法用于使用智能手机内置的惯性传感器测量心前区振动。. 我们提出了一种修改后的深度残差神经网络模型,用于对来自智能手机三轴 SCG 和 GCG 数据分类窦性节律、AFib 和噪声类别。在所提出的模型中,使用基于注意力的卷积和残差块进行自动早期传感器融合和空间特征提取等预处理。此外,我们在全连接层之上使用双向长短期记忆层来提取多维 SCG 和 GCG 信号的空间和时空特征。数据集由 300 名患者的 728 个短测量值组成。进一步,将测量值分别划分为不相交的训练、验证和测试集,分别为 481 个测量值、140 个测量值和 107 个测量值。在模型摄入之前,测量值被分割成 10 秒的片段,重叠率为 75%,经过预处理和扩充。. 在未见过的测试集上,该模型在分段分类方面的平均微观和宏观 F1 分数分别为 0.88(0.87-0.89;95%CI)和 0.83(0.83-0.84;95%CI),在测量分类方面的平均微观和宏观 F1 分数分别为 0.95(0.94-0.96;95%CI)和 0.95(0.94-0.96;95%CI)。. 我们的方法不仅可以有效地融合 SCG 和 GCG 信号,还可以以很高的准确性识别 MCG 信号中的心律和异常。