Document Type
Article
Publication Date
8-1-2024
Abstract
PURPOSE: This study aims to investigate the prevalence of artifacts in optical coherence tomography (OCT) images with acceptable signal strength and evaluate the performance of supervised deep learning models in improving OCT image quality assessment.
METHODS: We conducted a retrospective study on 4555 OCT images from 546 patients, with each image having an acceptable signal strength (≥6). A comprehensive analysis of prevalent OCT artifacts was performed, and five pretrained convolutional neural network models were trained and tested to infer images based on quality.
RESULTS: Our results showed a high prevalence of artifacts in OCT images with acceptable signal strength. Approximately 21% of images were labeled as nonacceptable quality. The EfficientNetV2 model demonstrated superior performance in classifying OCT image quality, achieving an area under the receiver operating characteristic curve of 0.950 ± 0.007 and an area under the precision recall curve of 0.985 ± 0.002.
CONCLUSIONS: The findings highlight the limitations of relying solely on signal strength for OCT image quality assessment and the potential of deep learning models in accurately classifying image quality.
TRANSLATIONAL RELEVANCE: Application of the deep learning-based OCT image quality assessment models may improve the OCT image data quality for both clinical applications and research.
Recommended Citation
Lin, Wei-Chun; Coyner, Aaron; Amankwa, Charles; Lucero, Abigail; Wollstein, Gadi; Schuman, Joel; and Ishikawa, Hiroshi, "High Prevalence of Artifacts in Optical Coherence Tomography With Adequate Signal Strength" (2024). Wills Eye Hospital Papers. Paper 228.
https://jdc.jefferson.edu/willsfp/228
Creative Commons License
This work is licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 4.0 License.
PubMed ID
39196579
Language
English
Included in
Artificial Intelligence and Robotics Commons, Diagnosis Commons, Eye Diseases Commons, Investigative Techniques Commons
Comments
This article is the author's final published version in Translational vision science & technology, Volume 13, Issue 8, August 2024, Article number 43.
The published version is available at https://doi.org/10.1167/tvst.13.8.43.
Copyright © 2024 The Authors