Can Masses of Non-Experts Train Highly Accurate Image Classifiers? - A Crowdsourcing Approach to Instrument Segmentation in Laparoscopic Images

Machine learning algorithms are gaining increasing interest in the context of computer-assisted interventions. One of the bottlenecks so far, however, has been the availability of training data, typically generated by medical experts with very limited resources. Crowdsourcing is a new trend that is based on outsourcing cognitive tasks to many anonymous untrained individuals from an online community. In this work, we investigate the potential of crowdsourcing for segmenting medical instruments in endoscopic image data. Our study suggests that (1) segmentations computed from annotations of multiple anonymous non-experts are comparable to those made by medical experts and (2) training data generated by the crowd is of the same quality as that annotated by medical experts. Given the speed of annotation, scalability and low costs, this implies that the scientific community might no longer need to rely on experts to generate reference or training data for certain applications. To trigger further research in endoscopic image processing, the data used in this study will be made publicly available.

[1]  Gregory D. Hager,et al.  String Motif-Based Description of Tool Motion for Detecting Skill and Gestures in Robotic Surgery , 2013, MICCAI.

[2]  Henning Müller,et al.  Ground truth generation in medical imaging: a crowdsourcing-based iterative approach , 2012, CrowdMM '12.

[3]  Timothy M. Kowalewski,et al.  Crowd-Sourced Assessment of Technical Skills: a novel method to evaluate surgical performance. , 2014, The Journal of surgical research.

[4]  Lena Maier-Hein,et al.  Crowdsourcing for Reference Correspondence Generation in Endoscopic Images , 2014, MICCAI.

[5]  Joachim Hornegger,et al.  Self-gated Radial MRI for Respiratory Motion Compensation on Hybrid PET/MR Systems , 2013, MICCAI.

[6]  Joseph E. Burns,et al.  Note: This Copy Is for Your Personal Non-commercial Use Only. to Order Presentation-ready Copies for Distribution to Your Colleagues or Clients, Contact Us at Www.rsna.org/rsnarights. Distributed Human Intelligence for Colonic Polyp Classification in Computer-aided Detection for Ct Colonography 1 , 2022 .

[7]  Zachary F. Meisel,et al.  Crowdsourcing—Harnessing the Masses to Advance Health and Medicine, a Systematic Review , 2013, Journal of General Internal Medicine.

[8]  Sebastian Bodenstedt,et al.  Context-aware Augmented Reality in laparoscopic surgery , 2013, Comput. Medical Imaging Graph..

[9]  Leo Breiman,et al.  Random Forests , 2001, Machine Learning.

[10]  Jenny Chen,et al.  Opportunities for Crowdsourcing Research on Amazon Mechanical Turk , 2011 .

[11]  Sébastien Ourselin,et al.  Toward Detection and Localization of Instruments in Minimally Invasive Surgery , 2013, IEEE Transactions on Biomedical Engineering.

[12]  Lena Maier-Hein,et al.  Optical techniques for 3D surface reconstruction in computer-assisted laparoscopic surgery , 2013, Medical Image Anal..