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Robust Multiple Sclerosis Lesion Inpainting with Edge Prior

机译:鲁棒多发性硬化病变预测边缘

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摘要

Inpainting lesions is an important preprocessing task for algorithms analyzing brain MRIs of multiple sclerosis (MS) patients, such as tissue segmentation and cortical surface reconstruction. We propose a new deep learning approach for this task. Unlike existing inpainting approaches which ignore the lesion areas of the input image, we leverage the edge information around the lesions as a prior to help the inpainting process. Thus, the input of this network includes the T1-w image, lesion mask and the edge map computed from the T1-w image, and the output is the lesion-free image. The introduction of the edge prior is based on our observation that the edge detection results of the MRI scans will usually contain the contour of white matter (WM) and grey matter (GM), even though some undesired edges appear near the lesions. Instead of losing all the information around the neighborhood of lesions, our approach preserves the local tissue shape (brain/WM/GM) with the guidance of the input edges. The qualitative results show that our pipeline inpaints the lesion areas in a realistic and shape-consistent way. Our quantitative evaluation shows that our approach outperforms the existing state-of-the-art inpainting methods in both image-based metrics and in FreeSurfer segmentation accuracy. Furthermore, our approach demonstrates robustness to inaccurate lesion mask inputs. This is important for practical usability, because it allows for a generous over-segmentation of lesions instead of requiring precise boundaries, while still yielding accurate results.
机译:染色病变是分析多发性硬化症(MS)患者的脑膜脑膜血液血液的重要预处理任务,例如组织分割和皮质表面重建。我们为这项任务提出了一种新的深度学习方法。与忽略输入图像的病变区域的现有染色方法不同,我们在帮助修复过程之前利用病变周围的边缘信息。因此,该网络的输入包括T1-W图像,病变掩模和从T1-W图像计算的边缘图,并且输出是无病变图像。边缘的引入基于我们的观察,即使一些不期望的边缘出现在病变附近,MRI扫描的边缘检测结果通常将包含白质(WM)和灰质(GM)的轮廓。我们的方法而不是丢失病变附近的所有信息,而是将局部组织形状(脑/ WM / GM)与输入边的引导保持。定性结果表明,我们的管道以现实和形状的方式批准病变区域。我们的定量评估表明,我们的方法在基于图像的度量和释放的细分精度中占据了现有的最先进的初始化方法。此外,我们的方法证明了不准确的病变掩模输入的鲁棒性。这对于实际可用性很重要,因为它允许慷慨地过分分割病变而不是需要精确的边界,同时仍然产生准确的结果。

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