Since its renaissance, deep learning has been widely used in various medical imaging tasks and has achieved remarkable success in many medical imaging applications, thereby propelling us into the so-called artificial intelligence (AI) era. It is known that the success of AI is mostly attributed to the availability of big data with annotations for a single task and the advances in high performance computing. However, medical imaging presents unique challenges that confront deep learning approaches. In this survey paper, we first present traits of medical imaging, highlight both clinical needs and technical challenges in medical imaging, and describe how emerging trends in deep learning are addressing these issues. We cover the topics of network architecture, sparse and noisy labels, federating learning, interpretability, uncertainty quantification, etc. Then, we present several case studies that are commonly found in clinical practice, including digital pathology and chest, brain, cardiovascular, and abdominal imaging. Rather than presenting an exhaustive literature survey, we instead describe some prominent research highlights related to these case study applications. We conclude with a discussion and presentation of promising future directions.
翻译:自复兴以来,深层次的学习被广泛用于各种医学成像任务,在许多医学成像应用方面取得了显著的成功,从而把我们推入所谓的人工智能时代,众所周知,AI的成功主要归功于大数据的可用性和单一任务的附加说明以及高性能计算的进步。然而,医学成像是深层次学习方法所面临的独特挑战。在本调查文件中,我们首先介绍医学成像的特点,突出医学成像的临床需求和技术挑战,并描述深层次学习的新趋势如何处理这些问题。我们讨论了网络结构、稀疏和吵闹的标签、联合学习、可解释性、不确定性量化等主题。然后,我们介绍了临床实践中常见的几个案例研究,包括数字病理学和胸部、大脑、心血管和腹部成像学。我们不是进行详尽的文献调查,而是描述与这些案例研究应用有关的一些突出的研究重点。我们最后讨论并介绍了有希望的未来方向。