Thayer School of Engineering, Dartmouth College, Hanover, NH 03755, United States of America.
Physiol Meas. 2019 Jul 30;40(7):074004. doi: 10.1088/1361-6579/ab0d45.
Congestive heart failure is a problem affecting millions of Americans. A continuous, non-invasive, telemonitoring device that can accurately monitor cardiac metrics could greatly help this population, reducing unnecessary hospitalizations and cost.
Machine learning (ML) algorithms trained on electrical-impedance tomography (EIT) data are presented for portable cardiac monitoring. The approach was validated on a simulated thorax and a measured tank experiment. A highly detailed 4D chest model (finite element method mesh and conductivity profiles) was developed utilizing the 4D XCAT phantom to provide realistic data. The ML algorithms were trained using databases that assumed the presence of poorly contacting electrodes without any assumptions of knowing which electrodes would be bad in the experiment. The trained ML algorithms were compared to EIT evaluated with and without removing bad electrodes.
A regression support vector machine and a deep neural network (DNN) were found to be the most accurate and robust to poorly contacting electrodes while not needing to know which electrodes were in poor contact in the simulated and measured experiments, respectively.
Although the ML algorithms are not always better than EIT (with bad electrodes removed), the comparable results without needing a priori knowledge of which electrodes are bad is seen as a very promising feature. An evaluation of computational costs showed that the DNN required comparable computational power to the other methods while requiring less memory, which could make the DNNs an attractive algorithm for a low-power, portable system. This work represents an important validation of the method using measured data, and model development, which is needed to apply this method on real clinical data. Additionally, the developed 4D simulated thorax model could be an important tool within the EIT community.
充血性心力衰竭是影响数百万美国人的问题。一种连续的、非侵入性的远程监测设备,如果能够准确监测心脏指标,将极大地帮助这一人群,减少不必要的住院治疗和费用。
本文提出了一种基于电阻抗断层成像(EIT)数据的机器学习(ML)算法,用于便携式心脏监测。该方法在模拟胸腔和测量罐实验中进行了验证。利用 4D XCAT 体模开发了一个高度详细的 4D 胸部模型(有限元方法网格和电导率分布),以提供真实的数据。ML 算法是使用假设存在接触不良电极的数据库进行训练的,而没有任何关于在实验中哪些电极会出现问题的假设。训练后的 ML 算法与不剔除不良电极的 EIT 进行了比较。
回归支持向量机和深度神经网络(DNN)被发现是最准确和最稳健的,能够处理接触不良的电极,而不需要知道在模拟和测量实验中哪些电极接触不良。
尽管 ML 算法并不总是优于 EIT(剔除不良电极后),但无需事先了解哪些电极不良的可比结果被视为一个非常有前途的特征。对计算成本的评估表明,DNN 所需的计算能力与其他方法相当,但所需的内存较少,这使得 DNN 成为低功耗、便携式系统的一种有吸引力的算法。这项工作使用实测数据对该方法进行了重要验证,并进行了模型开发,这是将该方法应用于真实临床数据所必需的。此外,开发的 4D 模拟胸腔模型可以成为 EIT 社区的一个重要工具。