DeepOpht: Medical report generation for retinal images via deep models and visual explanation
Journal
Proceedings - 2021 IEEE Winter Conference on Applications of Computer Vision, WACV 2021
Pages
2441-2451
Date Issued
2021
Author(s)
Chang H
Abstract
In this work, we propose an AI-based method that intends to improve the conventional retinal disease treatment procedure and help ophthalmologists increase diagnosis efficiency and accuracy. The proposed method is composed of a deep neural networks-based (DNN-based) module, including a retinal disease identifier and clinical description generator, and a DNN visual explanation module. To train and validate the effectiveness of our DNN-based module, we propose a large-scale retinal disease image dataset. Also, as ground truth, we provide a retinal image dataset manually labeled by ophthalmologists to qualitatively show the proposed AI-based method is effective. With our experimental results, we show that the proposed method is quantitatively and qualitatively effective. Our method is capable of creating meaningful retinal image descriptions and visual explanations that are clinically relevant.https://github.com/Jhhuangkay/DeepOpht-Medical-Report-Generation-for-Retinal-Images-via-Deep-Models-and-Visual-Explanation. ? 2021 IEEE.
Subjects
Aldehydes
Computer vision
Deep neural networks
Diagnosis
Large dataset
Medical imaging
Disease treatment
Ground truth
Image datasets
Image descriptions
Large-scales
Network-based
Report generation
Retinal disease
Retinal image
Ophthalmology
Type
conference paper