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Expert-Level Annotation Quality Achieved by Gamified Crowdsourcing for B-line Segmentation in Lung Ultrasound

Authors :
Jin, Mike
Duggan, Nicole M
Bashyakarla, Varoon
Mendicuti, Maria Alejandra Duran
Hallisey, Stephen
Bernier, Denie
Stegeman, Joseph
Duhaime, Erik
Kapur, Tina
Goldsmith, Andrew J
Publication Year :
2023

Abstract

Accurate and scalable annotation of medical data is critical for the development of medical AI, but obtaining time for annotation from medical experts is challenging. Gamified crowdsourcing has demonstrated potential for obtaining highly accurate annotations for medical data at scale, and we demonstrate the same in this study for the segmentation of B-lines, an indicator of pulmonary congestion, on still frames within point-of-care lung ultrasound clips. We collected 21,154 annotations from 214 annotators over 2.5 days, and we demonstrated that the concordance of crowd consensus segmentations with reference standards exceeds that of individual experts with the same reference standards, both in terms of B-line count (mean squared error 0.239 vs. 0.308, p<0.05) as well as the spatial precision of B-line annotations (mean Dice-H score 0.755 vs. 0.643, p<0.05). These results suggest that expert-quality segmentations can be achieved using gamified crowdsourcing.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.10198
Document Type :
Working Paper