In this paper, we explored the use of deep learning for the prediction of aortic flow metrics obtained using 4D flow MRI using wearable seismocardiography (SCG) devices. 4D flow MRI provides a comprehensive assessment of cardiovascular hemodynamics, but it is costly and time-consuming. We hypothesized that deep learning could be used to identify pathological changes in blood flow, such as elevated peak systolic velocity Vmax in patients with heart valve diseases, from SCG signals. We also investigated the ability of this deep learning technique to differentiate between patients diagnosed with aortic valve stenosis (AS), non-AS patients with a bicuspid aortic valve (BAV), non-AS patients with a mechanical aortic valve (MAV), and healthy subjects with a normal tricuspid aortic valve (TAV). In a study of 77 subjects who underwent same-day 4D flow MRI and SCG, we found that the Vmax values obtained using deep learning and SCGs were in good agreement with those obtained by 4D flow MRI. Additionally, subjects with TAV, BAV, MAV, and AS could be classified with ROC-AUC values of 92%, 95%, 81%, and 83%, respectively. This suggests that SCG obtained using low-cost wearable electronics may be used as a supplement to 4D flow MRI exams or as a screening tool for aortic valve disease.
翻译:在本文中,我们探索了利用4D流流心血管成像仪(SCG)设备,利用磨损性心血管运动器(SCG)设备,预测4D流心血管流量指标的深度学习。 4D流心血管运动MRI对心血管血管动动能(心血管血管动脉动)进行了全面评估,但成本高且耗时。我们假设深层学习可用于确定血液流中的病理变化,例如从SCG信号中,心脏病管病患者的高度峰值交替速度速度超快。我们还研究了这一深层学习技术,以区分被诊断为肛门心血管紧张症(AS)的病人、非AS型心血管动脉动(BAV)的病人、非AS型心血管动动脉动器(MAV)的病人和正常心血管动脉动(TAVV)的健康病人。 在对77个接受同一天4D流流MRI和SCG的病人进行高压检查的科目的研究中,我们发现,通过深度学习和SG获得的VMax值与4D流MRI获得的病人十分一致。 此外,与TAVAVA、83 和SS等级等级等级等级等级等级等级等级等级等级等级为SS的题目为SS-等级为SS-等级为SS-等级为SS-等级为SS-等级为SS-等级为SS-等级的题目为SS-等级为SS-等级为SS-等级为SS-等级为SS-等级为SS-等级为SS-92。