Department of Computer Science, Faculty of Information Technology and Electrical Engineering, Norwegian University of Science and Technology, Høgskoleringen 1, 7491 Trondheim, Norway.
Department of Circulation and Medical Imaging, Faculty of Medicine and Health Sciences, Norwegian University of Science and Technology, Norway; Clinic of Cardiology, St. Olavs University Hospital, Trondheim, Norway.
Artif Intell Med. 2023 Oct;144:102646. doi: 10.1016/j.artmed.2023.102646. Epub 2023 Aug 31.
Perioperative monitoring of cardiac function is beneficial for early detection of cardiovascular complications. The standard of care for cardiac monitoring performed by trained cardiologists and anesthesiologists involves a manual and qualitative evaluation of ultrasound imaging, which is a time-demanding and resource-intensive process with intraobserver- and interobserver variability. In practice, such measures can only be performed a limited number of times during the intervention. To overcome these difficulties, this study presents a robust method for automatic and quantitative monitoring of cardiac function based on 3D transesophageal echocardiography (TEE) B-mode ultrasound recordings of the left ventricle (LV). Such an assessment obtains consistent measurements and can produce a near real-time evaluation of ultrasound imagery. Hence, the presented method is time-saving and results in increased accessibility. The mitral annular plane systolic excursion (MAPSE), characterizing global LV function, is estimated by landmark detection and cardiac view classification of two-dimensional images extracted along the long-axis of the ultrasound volume. MAPSE estimation directly from 3D TEE recordings is beneficial since it removes the need for manual acquisition of cardiac views, hence decreasing the need for interference by physicians. Two convolutional neural networks (CNNs) were trained and tested on acquired ultrasound data of 107 patients, and MAPSE estimates were compared to clinically obtained references in a blinded study including 31 patients. The proposed method for automatic MAPSE estimation had low bias and low variability in comparison to clinical reference measures. The method accomplished a mean difference for MAPSE estimates of (-0.16±1.06) mm. Thus, the results did not show significant systematic errors. The obtained bias and variance of the method were comparable to inter-observer variability of clinically obtained MAPSE measures on 2D TTE echocardiography. The novel pipeline proposed in this study has the potential to enhance cardiac monitoring in perioperative- and intensive care settings.
围术期心脏功能监测有利于早期发现心血管并发症。由经过培训的心脏病专家和麻醉师进行的心脏监测的标准护理包括对超声成像进行手动和定性评估,这是一个耗时且资源密集的过程,存在观察者内和观察者间的变异性。在实践中,这种措施在干预过程中只能进行有限次数的测量。为了克服这些困难,本研究提出了一种基于左心室(LV)的三维经食管超声心动图(TEE)B 模式超声记录的心脏功能自动和定量监测的稳健方法。这种评估获得了一致的测量结果,并可以对超声图像进行近乎实时的评估。因此,所提出的方法节省时间,并且提高了可及性。通过二维图像的地标检测和心脏视图分类来估计二尖瓣环平面收缩期位移(MAPSE),二维图像是从超声体积的长轴上提取的,用于表征整体 LV 功能。直接从 3D TEE 记录中估计 MAPSE 是有益的,因为它消除了手动获取心脏视图的需要,从而减少了医生的干扰。在包括 31 名患者的盲法研究中,使用 acquired 超声数据对两个卷积神经网络(CNN)进行了训练和测试,并将 MAPSE 估计值与临床获得的参考值进行了比较。与二维 TTE 超声心动图临床获得的 MAPSE 测量值相比,自动 MAPSE 估计的方法具有较低的偏差和变异性。该方法的 MAPSE 估计平均差值为(-0.16±1.06)mm。因此,结果没有显示出显著的系统误差。该方法的偏差和方差与二维 TTE 超声心动图临床获得的 MAPSE 测量值的观察者间变异性相当。本研究提出的新管道有可能增强围手术期和重症监护环境中的心脏监测。