论文标题
MRI图像的医疗图像分割,缺少模式:评论
Medical Image Segmentation on MRI Images with Missing Modalities: A Review
论文作者
论文摘要
处理磁共振成像(MRI)中缺失的模态并克服其负面影响被认为是生物医学成像的障碍。根据场景和解剖部分的扫描,选择了一组指定的方式的组合,将为医生提供有关人体感兴趣区域的完整信息,因此应偿还缺失的MRI序列。由于缺乏一种或多种方式而丢失有用信息的不利影响的补偿是计算机视觉领域的众所周知挑战,尤其是对于医学图像处理任务,包括肿瘤分割,组织分类和图像产生。随着时间的流逝,已经开发出各种方法来减轻该问题的负面影响,这项文献综述经历了大量寻求这样做的网络。详细审查了这项工作中回顾的方法,包括诸如综合方法等早期技术以及部署深度学习的后期方法,例如常见的潜在空间模型,知识蒸馏网络,相互信息最大化和生成的对抗性网络(GANS)。这项工作讨论了在撰写本文时提供的最重要的方法,研究了每一个的新颖性,力量和弱点。此外,最常用的MRI数据集得到了突出显示和描述。这项研究的主要目的是对缺失的模式补偿网络进行绩效评估,并概述处理此问题的未来策略。
Dealing with missing modalities in Magnetic Resonance Imaging (MRI) and overcoming their negative repercussions is considered a hurdle in biomedical imaging. The combination of a specified set of modalities, which is selected depending on the scenario and anatomical part being scanned, will provide medical practitioners with full information about the region of interest in the human body, hence the missing MRI sequences should be reimbursed. The compensation of the adverse impact of losing useful information owing to the lack of one or more modalities is a well-known challenge in the field of computer vision, particularly for medical image processing tasks including tumour segmentation, tissue classification, and image generation. Various approaches have been developed over time to mitigate this problem's negative implications and this literature review goes through a significant number of the networks that seek to do so. The approaches reviewed in this work are reviewed in detail, including earlier techniques such as synthesis methods as well as later approaches that deploy deep learning, such as common latent space models, knowledge distillation networks, mutual information maximization, and generative adversarial networks (GANs). This work discusses the most important approaches that have been offered at the time of this writing, examining the novelty, strength, and weakness of each one. Furthermore, the most commonly used MRI datasets are highlighted and described. The main goal of this research is to offer a performance evaluation of missing modality compensating networks, as well as to outline future strategies for dealing with this issue.