Wide Range MRI Artifact Removal with Transformers

Lennart Alexander Van der Goten, Kevin Smith
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引用次数: 3

Abstract

Artifacts on magnetic resonance scans are a serious challenge for both radiologists and computer-aided diagnosis systems. Most commonly, artifacts are caused by motion of the patients, but can also arise from device-specific abnormalities such as noise patterns. Irrespective of the source, artifacts can not only render a scan useless, but can potentially induce misdiagnoses if left unnoticed. For instance, an artifact may masquerade as a tumor or other abnormality. Retrospective artifact correction (RAC) is concerned with removing artifacts after the scan has already been taken. In this work, we propose a method capable of retrospectively removing eight common artifacts found in native-resolution MR imagery. Knowledge of the presence or location of a specific artifact is not assumed and the system is, by design, capable of undoing interactions of multiple artifacts. Our method is realized through the design of a novel volumetric transformer-based neural network that generalizes a \emph{window-centered} approach popularized by the Swin transformer. Unlike Swin, our method is (i) natively volumetric, (ii) geared towards dense prediction tasks instead of classification, and (iii), uses a novel and more global mechanism to enable information exchange between windows. Our experiments show that our reconstructions are considerably better than those attained by ResNet, V-Net, MobileNet-v2, DenseNet, CycleGAN and BicycleGAN. Moreover, we show that the reconstructed images from our model improves the accuracy of FSL BET, a standard skull-stripping method typically applied in diagnostic workflows.
变压器的大范围MRI伪影去除
磁共振扫描上的伪影对放射科医生和计算机辅助诊断系统都是一个严峻的挑战。最常见的是,伪影是由患者的运动引起的,但也可能由设备特定的异常(如噪声模式)引起。无论来源如何,伪影不仅会使扫描无效,而且如果不被注意,还可能导致误诊。例如,藏物可以伪装成肿瘤或其他异常。回溯性伪影校正(RAC)关注的是在扫描完成后移除伪影。在这项工作中,我们提出了一种能够回顾性地去除原生分辨率MR图像中发现的八种常见伪影的方法。不假设特定工件的存在或位置的知识,并且通过设计,系统能够撤销多个工件的交互。我们的方法是通过设计一种新的基于体积变压器的神经网络来实现的,该神经网络将Swin变压器推广的\emph{以窗口}为中心的方法进行了推广。与Swin不同,我们的方法是(i)固有的体积,(ii)面向密集预测任务而不是分类,(iii)使用一种新颖且更全局的机制来实现窗口之间的信息交换。实验表明,我们的重构结果明显优于ResNet、V-Net、MobileNet-v2、DenseNet、CycleGAN和BicycleGAN。此外,我们表明,从我们的模型重建图像提高了FSL BET的准确性,FSL BET是一种标准的颅骨剥离方法,通常应用于诊断工作流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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