| Literature DB >> 33747680 |
Mayank Golhar1, Taylor L Bobrow2, Mirmilad Pourmousavi Khoshknab3, Simran Jit3, Saowanee Ngamruengphong3, Nicholas J Durr1,2.
Abstract
While data-driven approaches excel at many image analysis tasks, the performance of these approaches is often limited by a shortage of annotated data available for training. Recent work in semi-supervised learning has shown that meaningful representations of images can be obtained from training with large quantities of unlabeled data, and that these representations can improve the performance of supervised tasks. Here, we demonstrate that an unsupervised jigsaw learning task, in combination with supervised training, results in up to a 9.8% improvement in correctly classifying lesions in colonoscopy images when compared to a fully-supervised baseline. We additionally benchmark improvements in domain adaptation and out-of-distribution detection, and demonstrate that semi-supervised learning outperforms supervised learning in both cases. In colonoscopy applications, these metrics are important given the skill required for endoscopic assessment of lesions, the wide variety of endoscopy systems in use, and the homogeneity that is typical of labeled datasets.Entities:
Keywords: Colonoscopy; deep learning; domain adaptation; endoscopy; jigsaw; lesion classification; out-of-distribution detection; semi-supervised; unsupervised
Year: 2020 PMID: 33747680 PMCID: PMC7978231 DOI: 10.1109/access.2020.3047544
Source DB: PubMed Journal: IEEE Access ISSN: 2169-3536 Impact factor: 3.476