» Articles » PMID: 34253799

An Interpretable Multiple-instance Approach for the Detection of Referable Diabetic Retinopathy in Fundus Images

Overview
Journal Sci Rep
Specialty Science
Date 2021 Jul 13
PMID 34253799
Citations 5
Authors
Affiliations
Soon will be listed here.
Abstract

Diabetic retinopathy (DR) is one of the leading causes of vision loss across the world. Yet despite its wide prevalence, the majority of affected people lack access to the specialized ophthalmologists and equipment required for monitoring their condition. This can lead to delays in the start of treatment, thereby lowering their chances for a successful outcome. Machine learning systems that automatically detect the disease in eye fundus images have been proposed as a means of facilitating access to retinopathy severity estimates for patients in remote regions or even for complementing the human expert's diagnosis. Here we propose a machine learning system for the detection of referable diabetic retinopathy in fundus images, which is based on the paradigm of multiple-instance learning. Our method extracts local information independently from multiple rectangular image patches and combines it efficiently through an attention mechanism that focuses on the abnormal regions of the eye (i.e. those that contain DR-induced lesions), thus resulting in a final image representation that is suitable for classification. Furthermore, by leveraging the attention mechanism our algorithm can seamlessly produce informative heatmaps that highlight the regions where the lesions are located. We evaluate our approach on the publicly available Kaggle, Messidor-2 and IDRiD retinal image datasets, in which it exhibits near state-of-the-art classification performance (AUC of 0.961 in Kaggle and 0.976 in Messidor-2), while also producing valid lesion heatmaps (AUPRC of 0.869 in the 81 images of IDRiD that contain pixel-level lesion annotations). Our results suggest that the proposed approach provides an efficient and interpretable solution against the problem of automated diabetic retinopathy grading.

Citing Articles

In-depth analysis of research hotspots and emerging trends in AI for retinal diseases over the past decade.

Guo M, Gong D, Yang W Front Med (Lausanne). 2024; 11:1489139.

PMID: 39635592 PMC: 11614663. DOI: 10.3389/fmed.2024.1489139.


A comprehensive review of machine learning algorithms and their application in geriatric medicine: present and future.

Woodman R, Mangoni A Aging Clin Exp Res. 2023; 35(11):2363-2397.

PMID: 37682491 PMC: 10627901. DOI: 10.1007/s40520-023-02552-2.


Attention-Based Deep Learning System for Classification of Breast Lesions-Multimodal, Weakly Supervised Approach.

Bobowicz M, Rygusik M, Buler J, Buler R, Ferlin M, Kwasigroch A Cancers (Basel). 2023; 15(10).

PMID: 37345041 PMC: 10216803. DOI: 10.3390/cancers15102704.


Deceptive Tricks in Artificial Intelligence: Adversarial Attacks in Ophthalmology.

Zbrzezny A, Grzybowski A J Clin Med. 2023; 12(9).

PMID: 37176706 PMC: 10179065. DOI: 10.3390/jcm12093266.


Fractal dimension of retinal vasculature as an image quality metric for automated fundus image analysis systems.

Lyu X, Jajal P, Tahir M, Zhang S Sci Rep. 2022; 12(1):11868.

PMID: 35831401 PMC: 9279448. DOI: 10.1038/s41598-022-16089-3.

References
1.
Krause J, Gulshan V, Rahimy E, Karth P, Widner K, Corrado G . Grader Variability and the Importance of Reference Standards for Evaluating Machine Learning Models for Diabetic Retinopathy. Ophthalmology. 2018; 125(8):1264-1272. DOI: 10.1016/j.ophtha.2018.01.034. View

2.
Congdon N, Friedman D, Lietman T . Important causes of visual impairment in the world today. JAMA. 2003; 290(15):2057-60. DOI: 10.1001/jama.290.15.2057. View

3.
Olson J, Strachan F, Hipwell J, Goatman K, McHardy K, Forrester J . A comparative evaluation of digital imaging, retinal photography and optometrist examination in screening for diabetic retinopathy. Diabet Med. 2003; 20(7):528-34. DOI: 10.1046/j.1464-5491.2003.00969.x. View

4.
Stolte S, Fang R . A survey on medical image analysis in diabetic retinopathy. Med Image Anal. 2020; 64:101742. DOI: 10.1016/j.media.2020.101742. View

5.
Nayak J, Bhat P, Acharya R, Lim C, Kagathi M . Automated identification of diabetic retinopathy stages using digital fundus images. J Med Syst. 2008; 32(2):107-15. DOI: 10.1007/s10916-007-9113-9. View