2017
DOI: 10.1109/tbme.2016.2619120
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Automatic Identification of Pathology-Distorted Retinal Layer Boundaries Using SD-OCT Imaging

Abstract: Identification of these boundaries can help to determine the loss of neuroretinal cells or layers and the presence of retinal pathology, which can be used as features for the automatic determination of the stages of retinal diseases.

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Cited by 27 publications
(25 citation statements)
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“…The review indicates many types of preprocessing techniques: dilation and erosion [5], median filter [27,107,111], gaussian filter [11,100,101], wiener filter [11,81,99], binary image [26,100], gradient image [26,114], anisotropic difusion filter [5,97,99], image aligment [19,98,103], attenuation coefficient [101], enhanced contrast [1,105], image flattenig [106,114], resize the image [1,107], edge flow [112], sparse filter [112], normalization [81], green channel [81], greyscale [1], morphological operations [1] and others. In Figure 2 is shown the improvements of preprocessing applied to OCT image.…”
Section: Preprocessingmentioning
confidence: 99%
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“…The review indicates many types of preprocessing techniques: dilation and erosion [5], median filter [27,107,111], gaussian filter [11,100,101], wiener filter [11,81,99], binary image [26,100], gradient image [26,114], anisotropic difusion filter [5,97,99], image aligment [19,98,103], attenuation coefficient [101], enhanced contrast [1,105], image flattenig [106,114], resize the image [1,107], edge flow [112], sparse filter [112], normalization [81], green channel [81], greyscale [1], morphological operations [1] and others. In Figure 2 is shown the improvements of preprocessing applied to OCT image.…”
Section: Preprocessingmentioning
confidence: 99%
“…Some segmentation techniques applied to OCT images are: snakes or active contour, it is a method used to circumvent objects in an image [105]; graph search, this technique starts from a starting point to an ending point, repeating the process, trying to find the best path [5,26,27]; Dijkstra shortest path search, it is an algorithm that seeks to find the shortest path between two nodes [26,99,107]; local gaussian distribution fitting (LGDF), local entropy defines gray level weights [11]; curvature-based surface cutting, it can be flattened into the plane with low metric distortion [11]; ReLayNet, it is an architecture used to segment retinal layers [80,117]; speed-up robust features (SURF), it is a method used in tasks like object recognition, classification etc [115]; adjusted mean arc length (AMAL), it enables to pass the load limit and turning points, and consequently to follow the post-critical equilibrium trajectories [26]; gradient vector flow (GVF), it is an algorithm that locates object edges [96,118,119].…”
Section: Segmentationmentioning
confidence: 99%
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“…To support clinicians with OCT-based diagnosis, numerous automated methods have attempted to segment and identify specific biomarkers from OCT scans. For instance, retinal layer [2,3,4] and fluid [4] segmentation, as well as drusen detection [5] have previously been proposed. While these methods perform well, they are limited in the number of biomarkers they consider at a time and often use pixel-wise annotations to train supervised machine learning frameworks.…”
Section: Introductionmentioning
confidence: 99%
“…Automatic segmentation of 3 layers relevant to age related macular generation and geographic atrophy was proposed [2] by adapting the edge weights used in graph theory and dynamic programming based framework [1]. More recently, information such as slope similarity and nonassociativity of layers as edge weight have been explored to handle pathologies [9].…”
Section: Introductionmentioning
confidence: 99%