In medicine, image registration is vital in image-guided interventions and other clinical applications. However, it is a difficult subject to be addressed which by the advent of machine learning, there have been considerable progress in algorithmic performance has recently been achieved for medical image registration in this area. The implementation of deep neural networks provides an opportunity for some medical applications such as conducting image registration in less time with high accuracy, playing a key role in countering tumors during the operation. The current study presents a comprehensive scoping review on the state-of-the-art literature of medical image registration studies based on unsupervised deep neural networks is conducted, encompassing all the related studies published in this field to this date. Here, we have tried to summarize the latest developments and applications of unsupervised deep learning-based registration methods in the medical field. Fundamental and main concepts, techniques, statistical analysis from different viewpoints, novelties, and future directions are elaborately discussed and conveyed in the current comprehensive scoping review. Besides, this review hopes to help those active readers, who are riveted by this field, achieve deep insight into this exciting field.
翻译:在医学方面,图像登记在图像引导干预和其他临床应用中至关重要,然而,这是一个难以解决的问题,由于机器学习的到来,该领域医学图像登记工作最近取得了相当的进展。深神经网络的实施为一些医疗应用提供了机会,例如,在较短的时间内以高精度进行图像登记,在手术期间在防治肿瘤方面发挥着关键作用。本研究报告对以未经监督的深神经网络为基础的医学图像登记研究的最新文献进行了全面范围界定审查,包括迄今为止在这一领域发表的所有相关研究。在这里,我们试图总结医学领域未经监督的深层学习登记方法的最新发展和应用。基本和主要概念、技术、不同观点的统计分析、新奇特和今后的方向在目前的全面范围界定审查中得到了详细讨论和传达。此外,本审查报告希望帮助那些受此领域影响的积极读者深入了解这一令人振奋人心的领域。