scholarly journals An Automated CAD System for Accurate Grading of Uveitis Using Optical Coherence Tomography Images

Sensors ◽  
2021 ◽  
Vol 21 (16) ◽  
pp. 5457
Author(s):  
Sayed Haggag ◽  
Fahmi Khalifa ◽  
Hisham Abdeltawab ◽  
Ahmed Elnakib ◽  
Mohammed Ghazal ◽  
...  

Uveitis is one of the leading causes of severe vision loss that can lead to blindness worldwide. Clinical records show that early and accurate detection of vitreous inflammation can potentially reduce the blindness rate. In this paper, a novel framework is proposed for automatic quantification of the vitreous on optical coherence tomography (OCT) with particular application for use in the grading of vitreous inflammation. The proposed pipeline consists of two stages, vitreous region segmentation followed by a neural network classifier. In the first stage, the vitreous region is automatically segmented using a U-net convolutional neural network (U-CNN). For the input of U-CNN, we utilized three novel image descriptors to account for the visual appearance similarity of the vitreous region and other tissues. Namely, we developed an adaptive appearance-based approach that utilizes a prior shape information, which consisted of a labeled dataset of the manually segmented images. This image descriptor is adaptively updated during segmentation and is integrated with the original greyscale image and a distance map image descriptor to construct an input fused image for the U-net segmentation stage. In the second stage, a fully connected neural network (FCNN) is proposed as a classifier to assess the vitreous inflammation severity. To achieve this task, a novel discriminatory feature of the segmented vitreous region is extracted. Namely, the signal intensities of the vitreous are represented by a cumulative distribution function (CDF). The constructed CDFs are then used to train and test the FCNN classifier for grading (grade from 0 to 3). The performance of the proposed pipeline is evaluated on a dataset of 200 OCT images. Our segmentation approach documented a higher performance than related methods, as evidenced by the Dice coefficient of 0.988 ± 0.01 and Hausdorff distance of 0.0003 mm ± 0.001 mm. On the other hand, the FCNN classification is evidenced by its average accuracy of 86%, which supports the benefits of the proposed pipeline as an aid for early and objective diagnosis of uvea inflammation.

2021 ◽  
Vol 137 ◽  
pp. 106861
Author(s):  
Deepa Joshi ◽  
Ankit Butola ◽  
Sheetal Raosaheb Kanade ◽  
Dilip K. Prasad ◽  
S.V. Amitha Mithra ◽  
...  

2021 ◽  
Vol 4 (1) ◽  
Author(s):  
Peter M. Maloca ◽  
Philipp L. Müller ◽  
Aaron Y. Lee ◽  
Adnan Tufail ◽  
Konstantinos Balaskas ◽  
...  

AbstractMachine learning has greatly facilitated the analysis of medical data, while the internal operations usually remain intransparent. To better comprehend these opaque procedures, a convolutional neural network for optical coherence tomography image segmentation was enhanced with a Traceable Relevance Explainability (T-REX) technique. The proposed application was based on three components: ground truth generation by multiple graders, calculation of Hamming distances among graders and the machine learning algorithm, as well as a smart data visualization (‘neural recording’). An overall average variability of 1.75% between the human graders and the algorithm was found, slightly minor to 2.02% among human graders. The ambiguity in ground truth had noteworthy impact on machine learning results, which could be visualized. The convolutional neural network balanced between graders and allowed for modifiable predictions dependent on the compartment. Using the proposed T-REX setup, machine learning processes could be rendered more transparent and understandable, possibly leading to optimized applications.


2021 ◽  
pp. 77-79
Author(s):  
Eric R. Eggenberger ◽  
Marie D. Acierno ◽  
M. Tariq Bhatti ◽  
John J. Chen

A 75-year-old woman with a medical history of mixed connective tissue disease and breast adenocarcinoma sought care for subacute visual “haze” in both eyes characterized by light sensitivity, particularly with commercial fluorescent lighting, progressing over weeks. Visual acuity was 20/40 in each eye. The pupils were equal in size with no relative afferent pupillary defect but were sluggishly reactive to light. Automated perimetry documented peripheral constriction in both eyes. Ocular motility was normal. Ophthalmoscopy showed mild retinal pigment epithelial changes in both maculae with normal optic nerves. Optical coherence tomography showed macular thinning in both eyes. Findings of fundus autofluorescence were normal. Serum testing documented the presence of 3 retinal antibodies, against 30-, 36-, and 46-kDa proteins. A paraneoplastic panel was negative except for low-level ganglionic (alpha 3) acetylcholine receptor autoantibody positivity, which was interpreted as nonspecific autoimmunity. Electroretinography indicated severely decreased scotopic and photopic a and b waves. A diagnosis of paraneoplastic or nonparaneoplastic autoimmune retinopathy was made, consistent with the clinical presentation, optical coherence tomography and electroretinography findings, and the presence of retinal antibodies. There are no established evidence-based guidelines to assist treatment decisions in autoimmune retinopathy, although several lines of therapy have been advocated. No specific immunosuppressive therapy was undertaken in this case. However, if her vision had continued to rapidly worsen over time, empiric immunotherapy would have been instituted. Autoimmune retinopathy includes paraneoplastic and nonparaneoplastic forms. The best-characterized autoimmune retinopathy phenotype is cancer-associated retinopathy. Cancer-associated retinopathy typically presents with subacute, painless, bilateral (although asymmetry has been described) vision loss that is progressive over weeks to months, reflecting both rod and cone dysfunction in most patients. Visual symptoms precede recognition of an underlying cancer in approximately 50% of cases.


Sign in / Sign up

Export Citation Format

Share Document