Literature DB >> 31344328

Accurate prediction of glaucoma from colour fundus images with a convolutional neural network that relies on active and transfer learning.

Ruben Hemelings1,2, Bart Elen2, João Barbosa-Breda1, Sophie Lemmens1, Maarten Meire3, Sayeh Pourjavan4, Evelien Vandewalle1,5, Sara Van de Veire6, Matthew B Blaschko7, Patrick De Boever2,8, Ingeborg Stalmans1,5.   

Abstract

PURPOSE: To assess the use of deep learning (DL) for computer-assisted glaucoma identification, and the impact of training using images selected by an active learning strategy, which minimizes labelling cost. Additionally, this study focuses on the explainability of the glaucoma classifier.
METHODS: This original investigation pooled 8433 retrospectively collected and anonymized colour optic disc-centred fundus images, in order to develop a deep learning-based classifier for glaucoma diagnosis. The labels of the various deep learning models were compared with the clinical assessment by glaucoma experts. Data were analysed between March and October 2018. Sensitivity, specificity, area under the receiver operating characteristic curve (AUC), and amount of data used for discriminating between glaucomatous and non-glaucomatous fundus images, on both image and patient level.
RESULTS: Trained using 2072 colour fundus images, representing 42% of the original training data, the trained DL model achieved an AUC of 0.995, sensitivity and specificity of, respectively, 98.0% (CI 95.5%-99.4%) and 91% (CI 84.0%-96.0%), for glaucoma versus non-glaucoma patient referral.
CONCLUSIONS: These results demonstrate the benefits of deep learning for automated glaucoma detection based on optic disc-centred fundus images. The combined use of transfer and active learning in the medical community can optimize performance of DL models, while minimizing the labelling cost of domain-specific mavens. Glaucoma experts are able to make use of heat maps generated by the deep learning classifier to assess its decision, which seems to be related to inferior and superior neuroretinal rim (within ONH), and RNFL in superotemporal and inferotemporal zones (outside ONH).
© 2019 Acta Ophthalmologica Scandinavica Foundation. Published by John Wiley & Sons Ltd.

Entities:  

Keywords:  artificial intelligence; deep learning; fundus image; glaucoma detection

Year:  2019        PMID: 31344328     DOI: 10.1111/aos.14193

Source DB:  PubMed          Journal:  Acta Ophthalmol        ISSN: 1755-375X            Impact factor:   3.761


  8 in total

1.  Comparison between Deep-Learning-Based Ultra-Wide-Field Fundus Imaging and True-Colour Confocal Scanning for Diagnosing Glaucoma.

Authors:  Younji Shin; Hyunsoo Cho; Yong Un Shin; Mincheol Seong; Jun Won Choi; Won June Lee
Journal:  J Clin Med       Date:  2022-06-02       Impact factor: 4.964

Review 2.  Transfer learning for medical image classification: a literature review.

Authors:  Mate E Maros; Thomas Ganslandt; Hee E Kim; Alejandro Cosa-Linan; Nandhini Santhanam; Mahboubeh Jannesari
Journal:  BMC Med Imaging       Date:  2022-04-13       Impact factor: 1.930

3.  Deep learning on fundus images detects glaucoma beyond the optic disc.

Authors:  Ruben Hemelings; Bart Elen; João Barbosa-Breda; Matthew B Blaschko; Patrick De Boever; Ingeborg Stalmans
Journal:  Sci Rep       Date:  2021-10-13       Impact factor: 4.379

4.  COVID-DAI: A novel framework for COVID-19 detection and infection growth estimation using computed tomography images.

Authors:  Tahira Nazir; Marriam Nawaz; Ali Javed; Khalid Mahmood Malik; Abdul Khader Jilani Saudagar; Muhammad Badruddin Khan; Mozaherul Hoque Abul Hasanat; Abdullah AlTameem; Mohammad AlKathami
Journal:  Microsc Res Tech       Date:  2022-02-23       Impact factor: 2.893

5.  Artificial Intelligence for Screening of Multiple Retinal and Optic Nerve Diseases.

Authors:  Li Dong; Wanji He; Ruiheng Zhang; Zongyuan Ge; Ya Xing Wang; Jinqiong Zhou; Jie Xu; Lei Shao; Qian Wang; Yanni Yan; Ying Xie; Lijian Fang; Haiwei Wang; Yenan Wang; Xiaobo Zhu; Jinyuan Wang; Chuan Zhang; Heng Wang; Yining Wang; Rongtian Chen; Qianqian Wan; Jingyan Yang; Wenda Zhou; Heyan Li; Xuan Yao; Zhiwen Yang; Jianhao Xiong; Xin Wang; Yelin Huang; Yuzhong Chen; Zhaohui Wang; Ce Rong; Jianxiong Gao; Huiliang Zhang; Shouling Wu; Jost B Jonas; Wen Bin Wei
Journal:  JAMA Netw Open       Date:  2022-05-02

6.  Microvascular damage assessed by optical coherence tomography angiography for glaucoma diagnosis: a systematic review of the most discriminative regions.

Authors:  Amerens Bekkers; Noor Borren; Vera Ederveen; Ella Fokkinga; Danilo Andrade De Jesus; Luisa Sánchez Brea; Stefan Klein; Theo van Walsum; João Barbosa-Breda; Ingeborg Stalmans
Journal:  Acta Ophthalmol       Date:  2020-03-16       Impact factor: 3.761

7.  An Artificial-Intelligence- and Telemedicine-Based Screening Tool to Identify Glaucoma Suspects from Color Fundus Imaging.

Authors:  Alauddin Bhuiyan; Arun Govindaiah; R Theodore Smith
Journal:  J Ophthalmol       Date:  2021-05-28       Impact factor: 1.909

8.  An Efficient Deep Learning Approach to Automatic Glaucoma Detection Using Optic Disc and Optic Cup Localization.

Authors:  Marriam Nawaz; Tahira Nazir; Ali Javed; Usman Tariq; Hwan-Seung Yong; Muhammad Attique Khan; Jaehyuk Cha
Journal:  Sensors (Basel)       Date:  2022-01-07       Impact factor: 3.576

  8 in total

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