School of Computer Science and Engineering, Central South University, Changsha, Hunan, China.
School of Computer Science and Engineering, Central South University, Changsha, Hunan, China.
Comput Biol Med. 2024 Jun;175:108509. doi: 10.1016/j.compbiomed.2024.108509. Epub 2024 Apr 25.
This paper provides a comprehensive review of deep learning models for ischemic stroke lesion segmentation in medical images. Ischemic stroke is a severe neurological disease and a leading cause of death and disability worldwide. Accurate segmentation of stroke lesions in medical images such as MRI and CT scans is crucial for diagnosis, treatment planning and prognosis. This paper first introduces common imaging modalities used for stroke diagnosis, discussing their capabilities in imaging lesions at different disease stages from the acute to chronic stage. It then reviews three major public benchmark datasets for evaluating stroke segmentation algorithms: ATLAS, ISLES and AISD, highlighting their key characteristics. The paper proceeds to provide an overview of foundational deep learning architectures for medical image segmentation, including CNN-based and transformer-based models. It summarizes recent innovations in adapting these architectures to the task of stroke lesion segmentation across the three datasets, analyzing their motivations, modifications and results. A survey of loss functions and data augmentations employed for this task is also included. The paper discusses various aspects related to stroke segmentation tasks, including prior knowledge, small lesions, and multimodal fusion, and then concludes by outlining promising future research directions. Overall, this comprehensive review covers critical technical developments in the field to support continued progress in automated stroke lesion segmentation.
这篇论文对医学图像中用于缺血性脑卒中病灶分割的深度学习模型进行了全面综述。缺血性脑卒中是一种严重的神经系统疾病,也是全球范围内死亡和残疾的主要原因。在 MRI 和 CT 扫描等医学图像中准确分割脑卒中病灶对于诊断、治疗计划和预后至关重要。本文首先介绍了用于脑卒中诊断的常见成像方式,讨论了它们在从急性期到慢性期不同疾病阶段成像病灶的能力。然后,本文回顾了三个用于评估脑卒中分割算法的主要公共基准数据集:ATLAS、ISLES 和 AISD,突出了它们的关键特征。本文接着提供了用于医学图像分割的基础深度学习架构概述,包括基于 CNN 和基于转换器的模型。总结了最近将这些架构应用于三个数据集的脑卒中病灶分割任务的创新,分析了它们的动机、修改和结果。还包括针对该任务使用的损失函数和数据增强的调查。本文讨论了与脑卒中分割任务相关的各个方面,包括先验知识、小病灶和多模态融合,最后概述了有前景的未来研究方向。总体而言,这篇全面综述涵盖了该领域的关键技术发展,以支持脑卒中病灶自动分割的持续进展。