Areen K. Al-Bashir, Duha H. Al-Bataiha, Mariem Hafsa, Mohammad A. Al-Abed, Olfa Kanoun
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引用次数: 0
摘要
电阻抗断层成像(EIT)是一种前景广阔的无创成像技术,它能根据测量到的边界电压,直观地显示解剖结构的电导率。然而,用于图像重建的 EIT 逆问题是非线性的,而且高度难以解决。因此,在这项工作中,根据给定的电导率分布生成了模拟人体胸部的边界电压模拟数据集。为了克服图像重建的挑战,我们提出了一种集合学习方法。该集合方法结合了多个卷积神经网络模型,包括简单的卷积神经网络(CNN)模型、AlexNet、带残差块的 AlexNet 和改进的 AlexNet 模型。集合模型的权重选择基于给出最佳决定系数(R2 分数)的平均技术。重建质量通过计算均方根误差(RMSE)、判定系数(R2 分数)和图像相关系数(ICC)进行定量评估。使用集合模型,建议方法的最佳性能是 RMSE 为 0.09404,R2 得分为 0.926186,ICC 为 0.95783。与之前的研究相比,所提出的方法可以为临床 EIT 应用和测量构建有价值的图像,因此前景广阔。
Electrical impedance tomography image reconstruction for lung monitoring based on ensemble learning algorithms1
Electrical impedance tomography (EIT) is a promising non-invasive imaging technique that visualizes the electrical conductivity of an anatomic structure to form based on measured boundary voltages. However, the EIT inverse problem for the image reconstruction is nonlinear and highly ill-posed. Therefore, in this work, a simulated dataset that mimics the human thorax was generated with boundary voltages based on given conductivity distributions. To overcome the challenges of image reconstruction, an ensemble learning method was proposed. The ensemble method combines several convolutional neural network models, which are the simple Convolutional Neural Network (CNN) model, AlexNet, AlexNet with residual block, and the modified AlexNet model. The ensemble models’ weights selection was based on average technique giving the best coefficient of determination (R2 score). The reconstruction quality is quantitatively evaluated by calculating the root mean square error (RMSE), the coefficient of determination (R2 score), and the image correlation coefficient (ICC). The proposed method's best performance is an RMSE of 0.09404, an R2 score of 0.926186, and an ICC of 0.95783 using an ensemble model. The proposed method is promising as it can construct valuable images for clinical EIT applications and measurements compared to previous studies.
期刊介绍:
Healthcare Technology Letters aims to bring together an audience of biomedical and electrical engineers, physical and computer scientists, and mathematicians to enable the exchange of the latest ideas and advances through rapid online publication of original healthcare technology research. Major themes of the journal include (but are not limited to): Major technological/methodological areas: Biomedical signal processing Biomedical imaging and image processing Bioinstrumentation (sensors, wearable technologies, etc) Biomedical informatics Major application areas: Cardiovascular and respiratory systems engineering Neural engineering, neuromuscular systems Rehabilitation engineering Bio-robotics, surgical planning and biomechanics Therapeutic and diagnostic systems, devices and technologies Clinical engineering Healthcare information systems, telemedicine, mHealth.