Litcius/Paper detail

Retina-TransNet: A Gradient-Guided Few-Shot Retinal Vessel Segmentation Net

Hao-Chiang Shao, Chih‐Ying Chen, Meng-Hsuan Chang, Chih-Han Yu, Chia‐Wen Lin, Ju‐Wen Yang

2023IEEE Journal of Biomedical and Health Informatics22 citationsDOI

Abstract

Due to the high labor cost of physicians, it is difficult to collect a rich amount of manually-labeled medical images for developing learning-based computer-aided diagnosis (CADx) systems or segmentation algorithms. To tackle this issue, we reshape the image segmentation task as an image-to-image (I2I) translation problem and propose a retinal vascular segmentation network, which can achieve good cross-domain generalizability even with a small amount of training data. We devise primarily two components to facilitate this I2I-based segmentation method. The first is the constraints provided by the proposed gradient-vector-flow (GVF) loss, and, the second is a two-stage Unet (2Unet) generator with a skip connection. This configuration makes 2Unet's first-stage play a role similar to conventional Unet, but forces 2Unet's second stage to learn to be a refinement module. Extensive experiments show that by re-casting retinal vessel segmentation as an image-to-image translation problem, our I2I translator-based segmentation subnetwork achieves better cross-domain generalizability than existing segmentation methods. Our model, trained on one dataset, e.g., DRIVE, can produce segmentation results stably on datasets of other domains, e.g., CHASE-DB1, STARE, HRF, and DIARETDB1, even in low-shot circumstances.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceGeneralizability theorySubnetworkImage segmentationComputer visionTranslation (biology)Scale-space segmentationPattern recognition (psychology)BiochemistryGeneStatisticsMessenger RNAMathematicsComputer securityChemistryRetinal Imaging and AnalysisDigital Imaging for Blood DiseasesMedical Image Segmentation Techniques