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.
翻译:随着深层学习方法的发展,例如深卷神经网络、残余神经网络、残余神经网络、对抗性网络;U-Net结构在生物医学图像分割中被最广泛利用,以解决识别和检测目标区域或次区域的自动化;在最近的研究中,基于U-Net的方法展示了在开发计算机辅助诊断系统以早期诊断和治疗诸如脑肿瘤、肺癌、阿尔兹海默、乳癌等疾病的各种应用方面的最新表现,并使用了多种模式。本文章通过描述U-Net框架,然后全面分析U-Net变异体,执行(1) 相互模式和(2) 内部模式分类,以更好地了解相关的挑战和解决办法。此外,本文章还重点介绍了基于U-Net的框架在目前流行的流行病、严重急性呼吸系统综合症冠状病毒2 (SARS-COV-2) (又称COVID-19) 中的贡献。最后,对U-Net变异体的优点和相似性作了介绍,然后对U-Net变体进行了全面分析,并分析了生物医学图段的未来研究方向。