SLOctolyzer: Fully automatic analysis toolkit for segmentation and feature extracting in scanning laser ophthalmoscopy images
Jamie Burke, Samuel Gibbon, Justin Engelmann, Adam Threlfall, Ylenia, Giarratano, Charlene Hamid, Stuart King, Ian J.C. MacCormick, Tom, MacGillivray

TL;DR
SLOctolyzer is an open-source, fully automated toolkit for analyzing retinal vessels in scanning laser ophthalmoscopy images, providing reproducible measurements useful for linking retinal features to diseases.
Contribution
It introduces the first open-source tool for converting raw SLO images into clinically relevant retinal vascular parameters using deep learning segmentation.
Findings
High segmentation accuracy on internal test data (Dice > 0.84 for vessels)
Good reproducibility of vascular measurements (mean differences near zero)
Fast processing time under 30 seconds per image
Abstract
Purpose: The purpose of this study was to introduce SLOctolyzer: an open-source analysis toolkit for en face retinal vessels in infrared reflectance scanning laser ophthalmoscopy (SLO) images. Methods: SLOctolyzer includes two main modules: segmentation and measurement. The segmentation module uses deep learning methods to delineate retinal anatomy, and detects the fovea and optic disc, whereas the measurement module quantifies the complexity, density, tortuosity, and calibre of the segmented retinal vessels. We evaluated the segmentation module using unseen data and measured its reproducibility. Results: SLOctolyzer's segmentation module performed well against unseen internal test data (Dice for all-vessels = 0.91; arteries = 0.84; veins = 0.85; optic disc = 0.94; and fovea = 0.88). External validation against severe retinal pathology showed decreased performance (Dice for arteries…
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Taxonomy
TopicsRetinal Imaging and Analysis
