Deformable registration of magnetic resonance images between patients with brain tumors and healthy subjects has been an important tool to specify tumor geometry through location alignment and facilitate pathological analysis. Since tumor region does not match with any ordinary brain tissue, it has been difficult to deformably register a patients brain to a normal one. Many patient images are associated with irregularly distributed lesions, resulting in further distortion of normal tissue structures and complicating registration's similarity measure. In this work, we follow a multi-step context-aware image inpainting framework to generate synthetic tissue intensities in the tumor region. The coarse image-to-image translation is applied to make a rough inference of the missing parts. Then, a feature-level patch-match refinement module is applied to refine the details by modeling the semantic relevance between patch-wise features. A symmetry constraint reflecting a large degree of anatomical symmetry in the brain is further proposed to achieve better structure understanding. Deformable registration is applied between inpainted patient images and normal brains, and the resulting deformation field is eventually used to deform original patient data for the final alignment. The method was applied to the Multimodal Brain Tumor Segmentation (BraTS) 2018 challenge database and compared against three existing inpainting methods. The proposed method yielded results with increased peak signal-to-noise ratio, structural similarity index, inception score, and reduced L1 error, leading to successful patient-to-normal brain image registration.
翻译:脑肿瘤患者和健康对象之间的磁共振图像失常登记是确定肿瘤通过位置对齐和病理分析的一条重要工具。由于肿瘤区域与普通脑组织不匹配,因此很难将病人的大脑与普通脑组织不匹配。许多病人图像与非正常分布的损伤相关,导致正常组织结构进一步扭曲,使注册的相似度测量复杂化。在这项工作中,我们遵循一个多步骤的背景觉悟图像涂色框架,以在肿瘤区域生成合成组织强度。粗略的图像到模拟图象与普通脑组织不匹配,因此很难对正常的大脑组织组织组织进行不匹配。由于肿瘤区域与普通脑组织不匹配,因此很难对正常的大脑组织进行不正规的登记。随后,应用一个特征层次补补补补的改进模块来通过模拟偏差特征特征之间的关联性关联性来完善细节。还进一步提出一个反映大脑中大量解剖性对称性对称的制约,以便更好地了解结构结构结构。在肿瘤区域中应用了不整型的硬性记录,在患者图像和正常大脑结构调整过程中应用了分级的分级记录,最终误判记录,最终的分解后,并用了信号调整字段字段字段字段字段字段的调整法,最终对正对正法,对正法对正法对正。