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首页> 外文期刊>Scientific reports. >Combing signal processing methods with algorithm priori information to produce synergetic improvements on continuous imaging of brain electrical impedance tomography
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Combing signal processing methods with algorithm priori information to produce synergetic improvements on continuous imaging of brain electrical impedance tomography

机译:用算法梳理信号处理方法先验信息,在脑电阻抗断层扫描的连续成像中产生协同成果改进

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Dynamic electrical impedance tomography (EIT) promises to be a valuable technique for monitoring the development of brain injury. But in practical long-term monitoring, noise and interferences may cause insufficient image quality. To help unveil intracranial conductivity changes, signal processing methods were introduced to improve EIT data quality and algorithms were optimized to be more robust. However, gains for EIT image reconstruction can be significantly increased if we combine the two techniques properly. The basic idea is to apply the priori information in algorithm to help de-noise EIT data and use signal processing to optimize algorithm. First, we process EIT data with principal component analysis (PCA) and reconstruct an initial CT-EIT image. Then, as the priori that changes in scalp and skull domains are unwanted, we eliminate their corresponding boundary voltages from data sets. After the two-step denoising process, we finally re-select a local optimal regularization parameter and accomplish the reconstruction. To evaluate performances of the signal processing-priori information based reconstruction (SPR) method, we conducted simulation and in-vivo experiments. The results showed SPR could improve brain EIT image quality and recover the intracranial perturbations from certain bad measurements, while for some measurement data the generic reconstruction method failed.
机译:动态电阻断层扫描(EIT)承诺是监测脑损伤发展的宝贵技术。但在实际的长期监测中,噪音和干扰可能导致图像质量不足。为了帮助揭示颅内电导率变化,引入了信号处理方法以提高EIT数据质量,并且优化算法以更加坚固。但是,如果我们正确结合两种技术,则可以显着增加EIT图像重建的收益。基本思想是以算法应用先验信息,以帮助解噪因数据和使用信号处理来优化算法。首先,我们处理具有主成分分析(PCA)的EIT数据,并重建初始CT-EIT图像。然后,作为PROSP和颅骨域的更改的先验,我们消除了来自数据集的相应边界电压。在两步去噪过程之后,我们最终重新选择了本地最佳正则化参数并完成重建。为了评估基于信号处理的信号处理的重建(SPR)方法,我们进行了模拟和体内实验。结果显示SPR可以提高脑EIT图像质量,并从某些不良测量中恢复颅内扰动,而对于一些测量数据,通用重建方法失败。

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