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  4. PADAr: physician-oriented artificial intelligence-facilitating diagnosis aid for retinal diseases
 
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PADAr: physician-oriented artificial intelligence-facilitating diagnosis aid for retinal diseases

Journal
Journal of Medical Imaging
Journal Volume
9
Journal Issue
4
Date Issued
2022-07-01
Author(s)
Lin, Po Kang
Chiu, Yu Hsien
Huang, Chiu Jung
Wang, Chien Yao
Pan, Mei Lien
Wang, Da Wei
Liao, Hong Yuan Mark
Chen, Yong Sheng
CHIEH-HSIUNG KUAN 
Lin, Shih Yen
Chen, Li Fen
DOI
10.1117/1.JMI.9.4.044501
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/633734
URL
https://api.elsevier.com/content/abstract/scopus_id/85142181333
Abstract
Purpose: Retinopathy screening via digital imaging is promising for early detection and timely treatment, and tracking retinopathic abnormality over time can help to reveal the risk of disease progression. We developed an innovative physician-oriented artificial intelligence-facilitating diagnosis aid system for retinal diseases for screening multiple retinopathies and monitoring the regions of potential abnormality over time. Approach: Our dataset contains 4908 fundus images from 304 eyes with image-level annotations, including diabetic retinopathy, age-related macular degeneration, cellophane maculopathy, pathological myopia, and healthy control (HC). The screening model utilized a VGG-based feature extractor and multiple-binary convolutional neural network-based classifiers. Images in time series were aligned via affine transforms estimated through speeded-up robust features. Heatmaps of retinopathy were generated from the feature extractor using gradient-weighted class activation mapping++, and individual candidate retinopathy sites were identified from the heatmaps using clustering algorithm. Nested cross-validation with a train-to-test split of 80% to 20% was used to evaluate the performance of the screening model. Results: Our screening model achieved 99% accuracy, 93% sensitivity, and 97% specificity in discriminating between patients with retinopathy and HCs. For discriminating between types of retinopathy, our model achieved an averaged performance of 80% accuracy, 78% sensitivity, 94% specificity, 79% F1-score, and Cohen's kappa coefficient of 0.70. Moreover, visualization results were also shown to provide reasonable candidate sites of retinopathy. Conclusions: Our results demonstrated the capability of the proposed model for extracting diagnostic information of the abnormality and lesion locations, which allows clinicians to focus on patient-centered treatment and untangles the pathological plausibility hidden in deep learning models.
Subjects
computer-aided diagnosis | lesion-sites visualization | multi-retinopathy classification
SDGs

[SDGs]SDG3

[SDGs]SDG10

Type
journal article

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