| Literature DB >> 31355372 |
Yufan He1, Aaron Carass1,2, Yeyi Yun1, Can Zhao1, Bruno M Jedynak3, Sharon D Solomon4, Shiv Saidha5, Peter A Calabresi5, Jerry L Prince1,2.
Abstract
Optical coherence tomography (OCT) is used to produce high resolution depth images of the retina and is now the standard of care for in-vivo ophthalmological assessment. In particular, OCT is used to study the changes in layer thickness across various pathologies. The automated image analysis of these OCT images has primarily been performed with graph based methods. Despite the preeminence of graph based methods, deep learning based approaches have begun to appear within the literature. Unfortunately, they cannot currently guarantee the strict biological tissue order found in human retinas. We propose a cascaded fully convolutional network (FCN) framework to segment eight retina layers and preserve the topological relationships between the layers. The first FCN serves as a segmentation network which takes retina images as input and outputs the segmentation probability maps of the layers. We next perform a topology check on the segmentation and those patches that do not satisfy the topology criterion are passed to a second FCN for topology correction. The FCNs have been trained on Heidelberg Spectralis images and validated on both Heidelberg Spectralis and Zeiss Cirrus images.Entities:
Keywords: Fully convolutional network; Retina OCT; Topology preserving
Year: 2017 PMID: 31355372 PMCID: PMC6660164 DOI: 10.1007/978-3-319-67561-9_23
Source DB: PubMed Journal: Fetal Infant Ophthalmic Med Image Anal (2017)