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AutoMorph: Automated Retinal Vascular Morphology Quantification Via a Deep Learning Pipeline

Authors :
Yukun Zhou
Siegfried K. Wagner
Mark A. Chia
An Zhao
Peter Woodward-Court
Moucheng Xu
Robbert Struyven
Daniel C. Alexander
Pearse A. Keane
Source :
Translational vision sciencetechnology. 11(7)
Publication Year :
2022

Abstract

PurposeTo externally validate a deep learning pipeline (AutoMorph) for automated analysis of retinal vascular morphology on fundus photographs. AutoMorph has been made publicly available (https://github.com/rmaphoh/AutoMorph), facilitating widespread research in ophthalmic and systemic diseases.MethodsAutoMorph consists of four functional modules: image pre-processing, image quality grading, anatomical segmentation (including binary vessel, artery/vein, and optic disc/cup segmentation), and vascular morphology feature measurement. Image quality grading and anatomical segmentation use the most recent deep learning techniques. We employ a model ensemble strategy to achieve robust results and analyse the prediction confidence to rectify false gradable cases in image quality grading. We externally validate each module’s performance on several independent publicly available datasets.ResultsThe EfficientNet-b4 architecture used in the image grading module achieves comparable performance to the state-of-the-art for EyePACS-Q, with an F1-score of 0.86. The confidence analysis reduces the number of images incorrectly assessed as gradable by 76%. Binary vessel segmentation achieves an F1-score of 0.73 on AV-WIDE and 0.78 on DR-HAGIS. Artery/vein scores 0.66 on IOSTAR-AV, and disc segmentation achieves 0.94 in IDRID. Vascular morphology features measured from AutoMorph segmentation map and expert annotation show good to excellent agreement.ConclusionsAutoMorph modules perform well even when external validation data shows domain differences from training data, e.g., with different imaging devices. This fully automated pipeline can thus allow detailed, efficient and comprehensive analysis of retinal vascular morphology on colour fundus photographs.Translational RelevanceBy making AutoMorph publicly available and open source, we hope to facilitate ophthalmic and systemic disease research, particularly in the emerging field of ‘oculomics’.

Details

ISSN :
21642591
Volume :
11
Issue :
7
Database :
OpenAIRE
Journal :
Translational vision sciencetechnology
Accession number :
edsair.doi.dedup.....bcd43e404a83126ce8c9badcd0e5275d