» Articles » PMID: 39001046

A Retinal Vessel Segmentation Method Based on the Sharpness-Aware Minimization Model

Overview
Journal Sensors (Basel)
Publisher MDPI
Specialty Biotechnology
Date 2024 Jul 13
PMID 39001046
Authors
Affiliations
Soon will be listed here.
Abstract

Retinal vessel segmentation is crucial for diagnosing and monitoring various eye diseases such as diabetic retinopathy, glaucoma, and hypertension. In this study, we examine how sharpness-aware minimization (SAM) can improve RF-UNet's generalization performance. RF-UNet is a novel model for retinal vessel segmentation. We focused our experiments on the digital retinal images for vessel extraction (DRIVE) dataset, which is a benchmark for retinal vessel segmentation, and our test results show that adding SAM to the training procedure leads to notable improvements. Compared to the non-SAM model (training loss of 0.45709 and validation loss of 0.40266), the SAM-trained RF-UNet model achieved a significant reduction in both training loss (0.094225) and validation loss (0.08053). Furthermore, compared to the non-SAM model (training accuracy of 0.90169 and validation accuracy of 0.93999), the SAM-trained model demonstrated higher training accuracy (0.96225) and validation accuracy (0.96821). Additionally, the model performed better in terms of sensitivity, specificity, AUC, and F1 score, indicating improved generalization to unseen data. Our results corroborate the notion that SAM facilitates the learning of flatter minima, thereby improving generalization, and are consistent with other research highlighting the advantages of advanced optimization methods. With wider implications for other medical imaging tasks, these results imply that SAM can successfully reduce overfitting and enhance the robustness of retinal vessel segmentation models. Prospective research avenues encompass verifying the model on vaster and more diverse datasets and investigating its practical implementation in real-world clinical situations.

Citing Articles

TW-YOLO: An Innovative Blood Cell Detection Model Based on Multi-Scale Feature Fusion.

Zhang D, Bu Y, Chen Q, Cai S, Zhang Y Sensors (Basel). 2024; 24(19).

PMID: 39409208 PMC: 11478786. DOI: 10.3390/s24196168.

References
1.
Shi D, Lin Z, Wang W, Tan Z, Shang X, Zhang X . A Deep Learning System for Fully Automated Retinal Vessel Measurement in High Throughput Image Analysis. Front Cardiovasc Med. 2022; 9:823436. PMC: 8980780. DOI: 10.3389/fcvm.2022.823436. View

2.
Staal J, Abramoff M, Niemeijer M, Viergever M, van Ginneken B . Ridge-based vessel segmentation in color images of the retina. IEEE Trans Med Imaging. 2004; 23(4):501-9. DOI: 10.1109/TMI.2004.825627. View

3.
Mookiah M, Hogg S, MacGillivray T, Prathiba V, Pradeepa R, Mohan V . A review of machine learning methods for retinal blood vessel segmentation and artery/vein classification. Med Image Anal. 2021; 68:101905. DOI: 10.1016/j.media.2020.101905. View

4.
Abramoff M, Leng T, Ting D, Rhee K, Horton M, Brady C . Automated and Computer-Assisted Detection, Classification, and Diagnosis of Diabetic Retinopathy. Telemed J E Health. 2020; 26(4):544-550. PMC: 7187982. DOI: 10.1089/tmj.2020.0008. View

5.
Wang W, Lo A . Diabetic Retinopathy: Pathophysiology and Treatments. Int J Mol Sci. 2018; 19(6). PMC: 6032159. DOI: 10.3390/ijms19061816. View