CVJul 5, 2019

A Novel Deep Learning Pipeline for Retinal Vessel Detection in Fluorescein Angiography

arXiv:1907.02946v238 citations
Originality Incremental advance
AI Analysis

This work addresses the lack of labeled datasets for FA vessel detection, which is a domain-specific problem in medical imaging, with incremental improvements in efficiency and performance.

The paper tackles the problem of detecting retinal vessels in fluorescein angiography (FA) images by proposing a novel pipeline that reduces manual labeling effort through cross-modality transfer and human-in-the-loop learning, resulting in deep learning methods that outperform prior FA vessel detection methods by a significant margin and introducing a new public dataset, RECOVERY-FA19.

While recent advances in deep learning have significantly advanced the state of the art for vessel detection in color fundus (CF) images, the success for detecting vessels in fluorescein angiography (FA) has been stymied due to the lack of labeled ground truth datasets. We propose a novel pipeline to detect retinal vessels in FA images using deep neural networks that reduces the effort required for generating labeled ground truth data by combining two key components: cross-modality transfer and human-in-the-loop learning. The cross-modality transfer exploits concurrently captured CF and fundus FA images. Binary vessels maps are first detected from CF images with a pre-trained neural network and then are geometrically registered with and transferred to FA images via robust parametric chamfer alignment to a preliminary FA vessel detection obtained with an unsupervised technique. Using the transferred vessels as initial ground truth labels for deep learning, the human-in-the-loop approach progressively improves the quality of the ground truth labeling by iterating between deep-learning and labeling. The approach significantly reduces manual labeling effort while increasing engagement. We highlight several important considerations for the proposed methodology and validate the performance on three datasets. Experimental results demonstrate that the proposed pipeline significantly reduces the annotation effort and the resulting deep learning methods outperform prior existing FA vessel detection methods by a significant margin. A new public dataset, RECOVERY-FA19, is introduced that includes high-resolution ultra-widefield images and accurately labeled ground truth binary vessel maps.

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