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Opening a new window on MR-based Electrical Properties Tomography with deep learning

机译:通过深度学习打开基于MR的电学断层扫描的新窗口

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摘要

In the radiofrequency (RF) range, the electrical properties of tissues (EPs: conductivity and permittivity) are modulated by the ionic and water content, which change for pathological conditions. Information on tissues EPs can be used e.g. in oncology as a biomarker. The inability of MR-Electrical Properties Tomography techniques (MR-EPT) to accurately reconstruct tissue EPs by relating MR measurements of the transmit RF field to the EPs limits their clinical applicability. Instead of employing electromagnetic models posing strict requirements on the measured MRI quantities, we propose a data driven approach where the electrical properties reconstruction problem can be casted as a supervised deep learning task (DL-EPT). DL-EPT reconstructions for simulations and MR measurements at 3 Tesla on phantoms and human brains using a conditional generative adversarial network demonstrate high quality EPs reconstructions and greatly improved precision compared to conventional MR-EPT. The supervised learning approach leverages the strength of electromagnetic simulations, allowing circumvention of inaccessible MR electromagnetic quantities. Since DL-EPT is more noise-robust than MR-EPT, the requirements for MR acquisitions can be relaxed. This could be a major step forward to turn electrical properties tomography into a reliable biomarker where pathological conditions can be revealed and characterized by abnormalities in tissue electrical properties.
机译:在射频(RF)范围内,组织的电特性(EPs:电导率和介电常数)受离子和水含量的调节,离子含量和水含量会随病理状况而变化。可以使用关于组织EP的信息。在肿瘤学上作为生物标志物。 MR-电特性层析成像技术(MR-EPT)无法通过将发射RF场的MR测量值与EP关联来准确地重建组织EP,从而限制了它们的临床适用性。代替采用对测量的MRI量有严格要求的电磁模型,我们提出了一种数据驱动的方法,其中可以将电特性重建问题视为有监督的深度学习任务(DL-EPT)。使用条件生成对抗网络对3特斯拉在幻影和人脑上进行仿真和MR测量的DL-EPT重建与常规MR-EPT相比,展现了高质量的EP重建并大大提高了精度。监督学习方法利用了电磁仿真的优势,可以规避无法访问的MR电磁量。由于DL-EPT比MR-EPT的噪声更强,因此可以放宽对MR采集的要求。这可能是迈出的重要一步,将电学断层扫描变成可靠的生物标记物,可以揭示病理状况并以组织电学性质异常为特征。

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