IEEE Trans Image Process. 2022;31:3463-3478. doi: 10.1109/TIP.2022.3172220. Epub 2022 May 18.
The electrical property (EP) of human tissues is a quantitative biomarker that facilitates early diagnosis of cancerous tissues. Magnetic resonance electrical properties tomography (MREPT) is an imaging modality that reconstructs EPs by the radio-frequency field in an MRI system. MREPT reconstructs EPs by solving analytic models numerically based on Maxwell's equations. Most MREPT methods suffer from artifacts caused by inaccuracy of the hypotheses behind the models, and/or numerical errors. These artifacts can be mitigated by adding coefficients to stabilize the models, however, the selection of such coefficient has been empirical, which limit its medical application. Alternatively, end-to-end Neural networks-based MREPT (NN-MREPT) learns to reconstruct the EPs from training samples, circumventing Maxwell's equations. However, due to its pattern-matching nature, it is difficult for NN-MREPT to produce accurate reconstructions for new samples. In this work, we proposed a physics-coupled NN for MREPT (PCNN-MREPT), in which an analytic model, cr-MREPT, works with diffusion and convection coefficients, learned by NNs from the difference between the reconstructed and ground-truth EPs to reduce artifacts. With two simulated datasets, three generalization experiments in which test samples deviate gradually from the training samples, and one noise-robustness experiment were conducted. The results show that the proposed PCNN-MREPT achieves higher accuracy than two representative analytic methods. Moreover, compared with an end-to-end NN-MREPT, the proposed method attained higher accuracy in two critical generalization tests. This is an important step to practical MREPT medical diagnoses.
人体组织的电学特性(EP)是一种定量生物标志物,有助于早期诊断癌组织。磁共振电学特性层析成像(MREPT)是一种通过 MRI 系统中的射频场重建 EP 的成像方式。MREPT 通过基于麦克斯韦方程的解析模型数值求解来重建 EP。大多数 MREPT 方法都受到模型背后假设不准确和/或数值误差引起的伪影的影响。这些伪影可以通过添加系数来稳定模型来减轻,但是,这种系数的选择一直是经验性的,这限制了其在医学上的应用。或者,基于端到端神经网络的 MREPT(NN-MREPT)从训练样本中学习重建 EP,避免了麦克斯韦方程。然而,由于其模式匹配的性质,NN-MREPT 很难为新样本产生准确的重建。在这项工作中,我们提出了一种用于 MREPT 的物理耦合神经网络(PCNN-MREPT),其中一个解析模型 cr-MREPT 与扩散和对流系数相结合,这些系数由神经网络从重建和真实 EP 之间的差异中学习,以减少伪影。通过两个模拟数据集、三个测试样本逐渐偏离训练样本的泛化实验和一个抗噪实验进行了实验。结果表明,所提出的 PCNN-MREPT 比两种代表性的解析方法具有更高的准确性。此外,与端到端的 NN-MREPT 相比,该方法在两个关键的泛化测试中达到了更高的准确性。这是实现实用 MREPT 医学诊断的重要一步。