Literature DB >> 33707616

A hierarchical deep learning approach with transparency and interpretability based on small samples for glaucoma diagnosis.

Yongli Xu1, Man Hu2, Hanruo Liu3,4, Hao Yang1, Huaizhou Wang3, Shuai Lu1,4, Tianwei Liang2, Xiaoxing Li1, Mai Xu5, Liu Li5, Huiqi Li4, Xin Ji6, Zhijun Wang6, Li Li7, Robert N Weinreb8, Ningli Wang9,10.   

Abstract

The application of deep learning algorithms for medical diagnosis in the real world faces challenges with transparency and interpretability. The labeling of large-scale samples leads to costly investment in developing deep learning algorithms. The application of human prior knowledge is an effective way to solve these problems. Previously, we developed a deep learning system for glaucoma diagnosis based on a large number of samples that had high sensitivity and specificity. However, it is a black box and the specific analytic methods cannot be elucidated. Here, we establish a hierarchical deep learning system based on a small number of samples that comprehensively simulates the diagnostic thinking of human experts. This system can extract the anatomical characteristics of the fundus images, including the optic disc, optic cup, and appearance of the retinal nerve fiber layer to realize automatic diagnosis of glaucoma. In addition, this system is transparent and interpretable, and the intermediate process of prediction can be visualized. Applying this system to three validation datasets of fundus images, we demonstrate performance comparable to that of human experts in diagnosing glaucoma. Moreover, it markedly improves the diagnostic accuracy of ophthalmologists. This system may expedite the screening and diagnosis of glaucoma, resulting in improved clinical outcomes.

Entities:  

Year:  2021        PMID: 33707616     DOI: 10.1038/s41746-021-00417-4

Source DB:  PubMed          Journal:  NPJ Digit Med        ISSN: 2398-6352


  3 in total

Review 1.  Literature Review on Artificial Intelligence Methods for Glaucoma Screening, Segmentation, and Classification.

Authors:  José Camara; Alexandre Neto; Ivan Miguel Pires; María Vanessa Villasana; Eftim Zdravevski; António Cunha
Journal:  J Imaging       Date:  2022-01-20

2.  A Structure-Related Fine-Grained Deep Learning System With Diversity Data for Universal Glaucoma Visual Field Grading.

Authors:  Xiaoling Huang; Kai Jin; Jiazhu Zhu; Ying Xue; Ke Si; Chun Zhang; Sukun Meng; Wei Gong; Juan Ye
Journal:  Front Med (Lausanne)       Date:  2022-03-17

3.  Practical Application of Artificial Intelligence Technology in Glaucoma Diagnosis.

Authors:  Di Gong; Man Hu; Yue Yin; Tong Zhao; Tong Ding; Fan Meng; Yongli Xu; Yi Chen
Journal:  J Ophthalmol       Date:  2022-07-31       Impact factor: 1.974

  3 in total

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