CVApr 22, 2017

Deep Learning for Medical Image Processing: Overview, Challenges and Future

arXiv:1704.06825v11169 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental overview for researchers and practitioners in medical imaging, summarizing existing methods and challenges without introducing new techniques.

The paper reviews deep learning architectures and optimizations for medical image segmentation and classification, highlighting their potential to address limitations in human interpretation such as subjectivity and fatigue.

Healthcare sector is totally different from other industry. It is on high priority sector and people expect highest level of care and services regardless of cost. It did not achieve social expectation even though it consume huge percentage of budget. Mostly the interpretations of medical data is being done by medical expert. In terms of image interpretation by human expert, it is quite limited due to its subjectivity, the complexity of the image, extensive variations exist across different interpreters, and fatigue. After the success of deep learning in other real world application, it is also providing exciting solutions with good accuracy for medical imaging and is seen as a key method for future applications in health secotr. In this chapter, we discussed state of the art deep learning architecture and its optimization used for medical image segmentation and classification. In the last section, we have discussed the challenges deep learning based methods for medical imaging and open research issue.

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