CVHCFeb 25, 2019

A Survey of Crowdsourcing in Medical Image Analysis

arXiv:1902.09159v282 citations
AI Analysis

It tackles the problem of high annotation costs for medical imaging researchers, but it is incremental as a literature review.

This survey addresses the limited availability of large-scale, well-annotated datasets in medical image analysis by reviewing studies that apply crowdsourcing to create such datasets, identifying common approaches, challenges, and providing guidance for researchers.

Rapid advances in image processing capabilities have been seen across many domains, fostered by the application of machine learning algorithms to "big-data". However, within the realm of medical image analysis, advances have been curtailed, in part, due to the limited availability of large-scale, well-annotated datasets. One of the main reasons for this is the high cost often associated with producing large amounts of high-quality meta-data. Recently, there has been growing interest in the application of crowdsourcing for this purpose; a technique that has proven effective for creating large-scale datasets across a range of disciplines, from computer vision to astrophysics. Despite the growing popularity of this approach, there has not yet been a comprehensive literature review to provide guidance to researchers considering using crowdsourcing methodologies in their own medical imaging analysis. In this survey, we review studies applying crowdsourcing to the analysis of medical images, published prior to July 2018. We identify common approaches, challenges and considerations, providing guidance of utility to researchers adopting this approach. Finally, we discuss future opportunities for development within this emerging domain.

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