研究目的
To systematically visualize the convolutional neural networks of 2 validated deep learning models for the detection of referable diabetic retinopathy (DR) and glaucomatous optic neuropathy (GON).
研究成果
Our findings suggest that the presented visualization method can highlight traditional regions in ophthalmic disease diagnosis, substantiating the validity of the deep learning models investigated. To promote the clinical adoption of these models, future work will focus on designing a fully automated visualization tool to enable clinicians to understand important exposure variables in real time.
研究不足
A potential limitation of the present study is that only a small, random sample of true-positive DR and GON images (100 images per group) were selected to be analyzed. Analysis of a larger data set may be required to substantiate reliability and reproducibility of the visualization tool.
1:Experimental Design and Method Selection:
The study used an adaptive kernel visualization technique to visualize the learning procedure of the networks. The original fundus images were preprocessed using a sliding window (28 × 28 pixels, with a stride of 3 pixels) to crop images into smaller subimages and produce a feature map.
2:Sample Selection and Data Sources:
A random sample of 100 true-positive photographs and all false-positive cases from each of the GON and DR validation data sets were selected. The data were derived from a third-party database (LabelMe) containing deidentified photographs from various clinical settings in China.
3:List of Experimental Equipment and Materials:
The study utilized retinal photographs and a deep learning model for visualization.
4:Experimental Procedures and Operational Workflow:
The images were preprocessed and then processed using the visualization technique to generate heat maps highlighting highly prognostic regions in the input image.
5:Data Analysis Methods:
A single optometrist allocated each image to predefined categories based on the generated heat map.
独家科研数据包,助您复现前沿成果,加速创新突破
获取完整内容