Punn Narinder Singh, Agarwal Sonali
IIIT Allahabad, Prayagraj, 211015 India.
Artif Intell Rev. 2022;55(7):5845-5889. doi: 10.1007/s10462-022-10152-1. Epub 2022 Mar 1.
With the advent of advancements in deep learning approaches, such as deep convolution neural network, residual neural network, adversarial network; U-Net architectures are most widely utilized in biomedical image segmentation to address the automation in identification and detection of the target regions or sub-regions. In recent studies, U-Net based approaches have illustrated state-of-the-art performance in different applications for the development of computer-aided diagnosis systems for early diagnosis and treatment of diseases such as brain tumor, lung cancer, alzheimer, breast cancer, etc., using various modalities. This article contributes in presenting the success of these approaches by describing the U-Net framework, followed by the comprehensive analysis of the U-Net variants by performing (1) inter-modality, and (2) intra-modality categorization to establish better insights into the associated challenges and solutions. Besides, this article also highlights the contribution of U-Net based frameworks in the ongoing pandemic, severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) also known as COVID-19. Finally, the strengths and similarities of these U-Net variants are analysed along with the challenges involved in biomedical image segmentation to uncover promising future research directions in this area.
随着深度学习方法的进步,如深度卷积神经网络、残差神经网络、对抗网络的出现;U-Net架构在生物医学图像分割中得到了最广泛的应用,以解决目标区域或子区域识别与检测的自动化问题。在最近的研究中,基于U-Net的方法在利用各种模态开发用于脑肿瘤、肺癌、阿尔茨海默病、乳腺癌等疾病早期诊断和治疗的计算机辅助诊断系统的不同应用中展示了最先进的性能。本文通过描述U-Net框架来介绍这些方法的成功之处,随后通过进行(1)跨模态和(2)模态内分类对U-Net变体进行全面分析,以更好地洞察相关挑战和解决方案。此外,本文还强调了基于U-Net的框架在当前大流行的严重急性呼吸综合征冠状病毒2(SARS-CoV-2)(也称为COVID-19)中的贡献。最后,分析了这些U-Net变体的优势和相似之处以及生物医学图像分割中涉及的挑战,以揭示该领域有前景的未来研究方向。