CVMay 15, 2018

2sRanking-CNN: A 2-stage ranking-CNN for diagnosis of glaucoma from fundus images using CAM-extracted ROI as an intermediate input

arXiv:1805.05727v22 citations
Originality Incremental advance
AI Analysis

This addresses glaucoma diagnosis for medical imaging, offering an incremental improvement in classification accuracy and sensitivity.

The paper tackled the problem of diagnosing glaucoma from fundus images by proposing a 2-stage ranking-CNN that classifies images as normal, suspicious, or glaucoma, improving average accuracy by about 10% over existing methods and sensitivity for the suspicious class by over 20%.

Glaucoma is a disease in which the optic nerve is chronically damaged by the elevation of the intra-ocular pressure, resulting in visual field defect. Therefore, it is important to monitor and treat suspected patients before they are confirmed with glaucoma. In this paper, we propose a 2-stage ranking-CNN that classifies fundus images as normal, suspicious, and glaucoma. Furthermore, we propose a method of using the class activation map as a mask filter and combining it with the original fundus image as an intermediate input. Our results have improved the average accuracy by about 10% over the existing 3-class CNN and ranking-CNN, and especially improved the sensitivity of suspicious class by more than 20% over 3-class CNN. In addition, the extracted ROI was also found to overlap with the diagnostic criteria of the physician. The method we propose is expected to be efficiently applied to any medical data where there is a suspicious condition between normal and disease.

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