| Literature DB >> 36187252 |
Quan Zhou1,2, Jingmin Guo3,2, Zhiqi Chen3, Wei Chen3, Chaohua Deng3, Tian Yu3, Fei Li3, Xiaoqin Yan3, Tian Hu3, Linhao Wang3, Yan Rong3, Mingyue Ding1, Junming Wang3,4, Xuming Zhang1,5.
Abstract
In the proposed network, the features were first extracted from the gonioscopically obtained anterior segment photographs using the densely-connected high-resolution network. Then the useful information is further strengthened using the hybrid attention module to improve the classification accuracy. Between October 30, 2020, and January 30, 2021, a total of 146 participants underwent glaucoma screening. One thousand seven hundred eighty original images of the ACA were obtained with the gonioscope and slit lamp microscope. After data augmentation, 4457 images are used for the training and validation of the HahrNet, and 497 images are used to evaluate our algorithm. Experimental results demonstrate that the proposed HahrNet exhibits a good performance of 96.2% accuracy, 99.0% specificity, 96.4% sensitivity, and 0.996 area under the curve (AUC) in classifying the ACA test dataset. Compared with several deep learning-based classification methods and nine human readers of different levels, the HahrNet achieves better or more competitive performance in terms of accuracy, specificity, and sensitivity. Indeed, the proposed ACA classification method will provide an automatic and accurate technology for the grading of glaucoma.Entities:
Year: 2022 PMID: 36187252 PMCID: PMC9484423 DOI: 10.1364/BOE.465286
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.562