ID | 62310 |
FullText URL | |
Author |
Zhang, Jingjing
Department of Regenerative and Reconstructive Medicine (Ophthalmology), Graduate School of Interdisciplinary Science and Engineering in Health Systems, Okayama University
Liu, Yangyang
Department of Epidemiology, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Mitsuhashi, Toshiharu
Center for Innovative Clinical Medicine, Okayama University Hospital, Okayama University
Matsuo, Toshihiko
Department of Regenerative and Reconstructive Medicine (Ophthalmology), Graduate School of Interdisciplinary Science and Engineering in Health Systems, Okayama University
|
Abstract | Background. Retinopathy of prematurity (ROP) occurs in preterm infants and may contribute to blindness. Deep learning (DL) models have been used for ophthalmologic diagnoses. We performed a systematic review and meta-analysis of published evidence to summarize and evaluate the diagnostic accuracy of DL algorithms for ROP by fundus images.
Methods. We searched PubMed, EMBASE, Web of Science, and Institute of Electrical and Electronics Engineers Xplore Digital Library on June 13, 2021, for studies using a DL algorithm to distinguish individuals with ROP of different grades, which provided accuracy measurements. ,e pooled sensitivity and specificity values and the area under the curve (AUC) of summary receiver operating characteristics curves (SROC) summarized overall test performance. ,e performances in validation and test datasets were assessed together and separately. Subgroup analyses were conducted between the definition and grades of ROP. ,reshold and nonthreshold effects were tested to assess biases and evaluate accuracy factors associated with DL models. Results. Nine studies with fifteen classifiers were included in our meta-analysis. A total of 521,586 objects were applied to DL models. For combined validation and test datasets in each study, the pooled sensitivity and specificity were 0.953 (95% confidence intervals (CI): 0.946–0.959) and 0.975 (0.973–0.977), respectively, and the AUC was 0.984 (0.978–0.989). For the validation dataset and test dataset, the AUC was 0.977 (0.968–0.986) and 0.987 (0.982–0.992), respectively. In the subgroup analysis of ROP vs. normal and differentiation of two ROP grades, the AUC was 0.990 (0.944–0.994) and 0.982 (0.964–0.999), respectively. Conclusions. Our study shows that DL models can play an essential role in detecting and grading ROP with high sensitivity, specificity, and repeatability. ,e application of a DL-based automated system may improve ROP screening and diagnosis in the future. |
Note | This is an open access article distributed under the Creative Commons Attribution License,
which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
|
Published Date | 2021-08-06
|
Publication Title |
Journal of Ophthalmology
|
Volume | volume2021
|
Publisher | Hindawi
|
Start Page | 8883946
|
Content Type |
Journal Article
|
language |
English
|
OAI-PMH Set |
岡山大学
|
Copyright Holders | ©2021 Jingjing Zhang et al.
|
File Version | publisher
|
DOI | |
Related Url | isVersionOf https://doi.org/10.1155/2021/8883946
|
Funder Name |
Okayama Medical Research Association Grant
|
Open Access (Publisher) |
OA
|