QMCVIVMar 5, 2019

Deep Learning in Medical Image Registration: A Survey

arXiv:1903.02026v2679 citations
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive summary for researchers and practitioners in medical imaging, but is incremental as it reviews existing work.

This survey outlines the evolution of deep learning in medical image registration, highlighting its adoption and state-of-the-art achievements in clinical applications like image fusion and tumor monitoring.

The establishment of image correspondence through robust image registration is critical to many clinical tasks such as image fusion, organ atlas creation, and tumor growth monitoring, and is a very challenging problem. Since the beginning of the recent deep learning renaissance, the medical imaging research community has developed deep learning based approaches and achieved the state-of-the-art in many applications, including image registration. The rapid adoption of deep learning for image registration applications over the past few years necessitates a comprehensive summary and outlook, which is the main scope of this survey. This requires placing a focus on the different research areas as well as highlighting challenges that practitioners face. This survey, therefore, outlines the evolution of deep learning based medical image registration in the context of both research challenges and relevant innovations in the past few years. Further, this survey highlights future research directions to show how this field may be possibly moved forward to the next level.

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