Abstract

Microcystic macular edema (MME) manifests as small, hyporeflective cystic areas within the retina. For reasons that are still largely unknown, a small proportion of patients with multiple sclerosis (MS) develop MME-predominantly in the inner nuclear layer. These cystoid spaces, denoted pseudocysts, can be imaged using optical coherence tomography (OCT) where they appear as small, discrete, low intensity areas with high contrast to the surrounding tissue. The ability to automatically segment these pseudocysts would enable a more detailed study of MME than has been previously possible. Although larger pseudocysts often appear quite clearly in the OCT images, the multi-frame averaging performed by the Spectralis scanner adds a significant amount of variability to the appearance of smaller pseudocysts. Thus, simple segmentation methods only incorporating intensity information do not perform well. In this work, we propose to use a random forest classifier to classify the MME pixels. An assortment of both intensity and spatial features are used to aid the classification. Using a cross-validation evaluation strategy with manual delineation as ground truth, our method is able to correctly identify 79% of pseudocysts with a precision of 85%. Finally, we constructed a classifier from the output of our algorithm to distinguish clinically identified MME from non-MME subjects yielding an accuracy of 92%.

Highlights

  • Multiple sclerosis (MS) is an inflammatory demyelinating disorder of the central nervous system

  • optical coherence tomography (OCT) has been used to show that the thickness of the retinal nerve fiber layer around the optic disc is correlated with visual function in MS [3]

  • The measures are generally lower for the low density subjects with a larger spread as measured by the interquartile range (IQR)

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Summary

Introduction

Multiple sclerosis (MS) is an inflammatory demyelinating disorder of the central nervous system. Microcystic macular edema (MME) is a condition found in a subset of MS patients whereby small cystic changes occur in the inner nuclear layer (INL) of the macula [5,6] These cystic lesions, which are called pseudocysts, appear in approximately 5% of MS patients [5]. The appearance of MME is not restricted to MS patients It has been noticed in eyes of patients suffering from neuromyelitis optica, Leber’s hereditary optic neuropathy, glaucoma, and several other diseases [9]. The primary focus with respect to MME has been on data acquired from a Heidelberg Spectralis scanner which uses multi-frame averaging to improve the quality of each image This feature has the negative impact of averaging away the pseudocysts which reduces the contrast with the surrounding retinal tissue.

OCT data
MME segmentation overview
Intensity normalization
Random forest classifier
Classifier features
Classifier training
Experiments and results
Results
Non-MME data
Rater comparison
Algorithm design
Discussion and conclusion
Results across different probability thresholds
Full Text
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