Chitkara University Institute of Engineering and Technology, Chitkara University, Chandigarh, Punjab, India.
Department of Systemics, School of Computer Science, University of Petroleum and Energy Studies, Dehradun, India.
J Healthc Eng. 2022 Mar 10;2022:9580991. doi: 10.1155/2022/9580991. eCollection 2022.
Image segmentation is a branch of digital image processing which has numerous applications in the field of analysis of images, augmented reality, machine vision, and many more. The field of medical image analysis is growing and the segmentation of the organs, diseases, or abnormalities in medical images has become demanding. The segmentation of medical images helps in checking the growth of disease like tumour, controlling the dosage of medicine, and dosage of exposure to radiations. Medical image segmentation is really a challenging task due to the various artefacts present in the images. Recently, deep neural models have shown application in various image segmentation tasks. This significant growth is due to the achievements and high performance of the deep learning strategies. This work presents a review of the literature in the field of medical image segmentation employing deep convolutional neural networks. The paper examines the various widely used medical image datasets, the different metrics used for evaluating the segmentation tasks, and performances of different CNN based networks. In comparison to the existing review and survey papers, the present work also discusses the various challenges in the field of segmentation of medical images and different state-of-the-art solutions available in the literature.
图像分割是数字图像处理的一个分支,在图像分析、增强现实、机器视觉等领域有众多应用。医学图像分析领域正在发展,医学图像中的器官、疾病或异常的分割变得越来越有需求。医学图像分割有助于检查肿瘤等疾病的生长、控制药物剂量和辐射暴露剂量。由于图像中存在各种伪影,医学图像分割确实是一项具有挑战性的任务。最近,深度学习模型在各种图像分割任务中得到了应用。这种显著的增长归因于深度学习策略的成就和高性能。本工作对使用深度卷积神经网络进行医学图像分割的文献进行了综述。本文检查了各种广泛使用的医学图像数据集、用于评估分割任务的不同指标以及基于不同 CNN 的网络的性能。与现有的综述和调查论文相比,本工作还讨论了医学图像分割领域的各种挑战以及文献中提供的不同最新解决方案。