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用于人工多传感器阻抗心动图信号主动脉病变分类的交叉熵学习

Cross-Entropy Learning for Aortic Pathology Classification of Artificial Multi-Sensor Impedance Cardiography Signals.

作者信息

Spindelböck Tobias, Ranftl Sascha, von der Linden Wolfgang

机构信息

Institute of Theoretical and Computational Physics, Graz University of Technology, Petersgasse 16, 8010 Graz, Austria.

Graz Center of Computational Engineering, Graz University of Technology, Krenngasse 37, 8010 Graz, Austria.

出版信息

Entropy (Basel). 2021 Dec 10;23(12):1661. doi: 10.3390/e23121661.

Abstract

An aortic dissection, a particular aortic pathology, occurs when blood pushes through a tear between the layers of the aorta and forms a so-called false lumen. Aortic dissection has a low incidence compared to other diseases, but a relatively high mortality that increases with disease progression. An early identification and treatment increases patients' chances of survival. State-of-the-art medical imaging techniques have several disadvantages; therefore, we propose the detection of aortic dissections through their signatures in impedance cardiography signals. These signatures arise due to pathological blood flow characteristics and a blood conductivity that strongly depends on the flow field, i.e., the proposed method is, in principle, applicable to any aortic pathology that changes the blood flow characteristics. For the signal classification, we trained a convolutional neural network (CNN) with artificial impedance cardiography data based on a simulation model for a healthy virtual patient and a virtual patient with an aortic dissection. The network architecture was tailored to a multi-sensor, multi-channel time-series classification with a categorical cross-entropy loss function as the training objective. The trained network typically yielded a specificity of (93.9±0.1)% and a sensitivity of (97.5±0.1)%. A study of the accuracy as a function of the size of an aortic dissection yielded better results for a small false lumen with larger noise, which emphasizes the question of the feasibility of detecting aortic dissections in an early state.

摘要

主动脉夹层是一种特殊的主动脉病变,当血液冲破主动脉各层之间的撕裂口并形成所谓的假腔时就会发生。与其他疾病相比,主动脉夹层的发病率较低,但死亡率相对较高,且会随着疾病进展而增加。早期识别和治疗可提高患者的生存几率。目前最先进的医学成像技术存在若干缺点;因此,我们建议通过阻抗心动图信号中的特征来检测主动脉夹层。这些特征是由病理性血流特征和强烈依赖于流场的血液电导率引起的,也就是说,所提出的方法原则上适用于任何改变血流特征的主动脉病变。对于信号分类,我们基于健康虚拟患者和患有主动脉夹层的虚拟患者的模拟模型,用人工阻抗心动图数据训练了一个卷积神经网络(CNN)。网络架构针对多传感器、多通道时间序列分类进行了定制,以分类交叉熵损失函数作为训练目标。训练后的网络通常产生的特异性为(93.9±0.1)%,灵敏度为(97.5±0.1)%。一项关于准确性与主动脉夹层大小关系的研究表明,对于噪声较大的小假腔,结果更好,这突出了在早期状态检测主动脉夹层可行性的问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/99ce/8700029/f897d3b8b7dc/entropy-23-01661-g001.jpg

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