The remarkable performance of the Transformer architecture in natural language processing has recently also triggered broad interest in Computer Vision. Among other merits, Transformers are witnessed as capable of learning long-range dependencies and spatial correlations, which is a clear advantage over convolutional neural networks (CNNs), which have been the de facto standard in Computer Vision problems so far. Thus, Transformers have become an integral part of modern medical image analysis. In this review, we provide an encyclopedic review of the applications of Transformers in medical imaging. Specifically, we present a systematic and thorough review of relevant recent Transformer literature for different medical image analysis tasks, including classification, segmentation, detection, registration, synthesis, and clinical report generation. For each of these applications, we investigate the novelty, strengths and weaknesses of the different proposed strategies and develop taxonomies highlighting key properties and contributions. Further, if applicable, we outline current benchmarks on different datasets. Finally, we summarize key challenges and discuss different future research directions. In addition, we have provided cited papers with their corresponding implementations in https://github.com/mindflow-institue/Awesome-Transformer.
翻译:在自然语言处理中,变异器结构的显著表现最近也引起了人们对计算机视野的广泛兴趣,除其他优点外,变异器被证明能够学习远距离依赖性和空间相关性,这明显优于迄今计算机视觉问题的实际标准,因此,变异器已成为现代医学图像分析的一个组成部分。在这次审查中,我们对变异器在医学成像中的应用进行了百科全书审查。具体地说,我们对最近不同医学图像分析任务的变异器相关文献进行了系统和彻底的审查,包括分类、分解、检测、登记、合成和临床报告生成。对于所有这些应用,我们调查了拟议不同战略的新颖性、长处和弱点,并制定了突出关键属性和贡献的分类。此外,如果适用的话,我们概述了不同数据集的当前基准。最后,我们总结了关键的挑战,并讨论了不同的未来研究方向。此外,我们提供了一些文件及其相应的实施情况,并在 https://github.com/mindtraction-instime/Awesometraxy中引用了这些文件。