Crowdsourcing human-based computation for medical image analysis: A systematic literature review

Computer-assisted algorithms for the analysis of medical images require human interactions to achieve satisfying results. Human-based computation and crowdsourcing offer a solution to this problem. We performed a systematic literature review of studies on crowdsourcing human-based computation for medical image analysis based on the guidelines proposed by Kitchenham and Charters. We identified 43 studies relevant to the objective of this research. We determined three primary purposes and problems that crowdsourcing human-based computation systems can solve. We found that the users provided five information types. We compared systems that use pre-, post-evaluation and quality control methods to select and filter the user inputs. We analyzed the metrics used for the evaluation of the crowdsourcing human-based computation system performance. Finally, we identified the most popular crowdsourcing human-based computation platforms with their advantages and disadvantages.Crowdsourcing human-based computation systems can successfully solve medical image analysis problems. However, the application of crowdsourcing human-based computation systems in this research area is still limited and more studies should be conducted to obtain generalizable results. We provided guidelines to practitioners and researchers based on the results obtained in this research.

[1]  Neeraj Sharma,et al.  Automated medical image segmentation techniques , 2010, Journal of medical physics.

[2]  Takeo Kanade,et al.  Computer Vision – ECCV 2012. Workshops and Demonstrations , 2012, Lecture Notes in Computer Science.

[3]  Jerry L Prince,et al.  Current methods in medical image segmentation. , 2000, Annual review of biomedical engineering.

[4]  Benjamin B. Bederson,et al.  Human computation: a survey and taxonomy of a growing field , 2011, CHI.

[5]  Maruf Pasha,et al.  Survey of Machine Learning Algorithms for Disease Diagnostic , 2017 .

[6]  Luis von Ahn Games with a Purpose , 2006, Computer.

[7]  Tore Dybå,et al.  Empirical studies of agile software development: A systematic review , 2008, Inf. Softw. Technol..

[8]  Zhuowen Tu,et al.  Weakly supervised histopathology cancer image segmentation and classification , 2014, Medical Image Anal..

[9]  François Bry,et al.  Human computation , 2018, it Inf. Technol..

[10]  Manuel Blum,et al.  reCAPTCHA: Human-Based Character Recognition via Web Security Measures , 2008, Science.

[11]  Noel E. O'Connor,et al.  A comparative evaluation of interactive segmentation algorithms , 2010, Pattern Recognit..

[12]  Xiangjian He,et al.  Deep Learning Techniques for Medical Image Segmentation: Achievements and Challenges , 2019, Journal of Digital Imaging.

[13]  Laura A. Dabbish,et al.  Labeling images with a computer game , 2004, AAAI Spring Symposium: Knowledge Collection from Volunteer Contributors.

[14]  Noel E. O'Connor,et al.  Toward automated evaluation of interactive segmentation , 2011, Comput. Vis. Image Underst..

[15]  Kunio Doi,et al.  Computer-aided diagnosis in medical imaging: Historical review, current status and future potential , 2007, Comput. Medical Imaging Graph..

[16]  Arnold W. M. Smeulders,et al.  Interaction in the segmentation of medical images: A survey , 2001, Medical Image Anal..

[17]  Vladimir Vezhnevets,et al.  “GrowCut”-Interactive Multi-Label N-D Image Segmentation By Cellular Automata , 2005 .

[18]  Guillermo Sapiro,et al.  Interactive Image Segmentation via Adaptive Weighted Distances , 2007, IEEE Transactions on Image Processing.

[19]  Panagiotis G. Ipeirotis,et al.  Running Experiments on Amazon Mechanical Turk , 2010, Judgment and Decision Making.

[20]  Benjamin M. Good,et al.  Crowdsourcing for bioinformatics , 2013, Bioinform..

[21]  Christoph Meinel,et al.  Deep Learning for Medical Image Analysis , 2018, Journal of Pathology Informatics.

[22]  Bram van Ginneken,et al.  A survey on deep learning in medical image analysis , 2017, Medical Image Anal..

[23]  Philippe Ravaud,et al.  Mapping of Crowdsourcing in Health: Systematic Review , 2018, Journal of medical Internet research.

[24]  Adrien Treuille,et al.  Predicting protein structures with a multiplayer online game , 2010, Nature.

[25]  Abdul Rahman Ramli,et al.  Review of brain MRI image segmentation methods , 2010, Artificial Intelligence Review.

[26]  Brendan T. O'Connor,et al.  Cheap and Fast – But is it Good? Evaluating Non-Expert Annotations for Natural Language Tasks , 2008, EMNLP.

[27]  Vincent Charvillat,et al.  Ask'nSeek: A New Game for Object Detection and Labeling , 2012, ECCV Workshops.

[28]  Jerry L. Prince,et al.  A Survey of Current Methods in Medical Image Segmentation , 1999 .