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Published in: BMC Ophthalmology 1/2014

Open Access 01-12-2014 | Research article

Computer aided quantification for retinal lesions in patients with moderate and severe non-proliferative diabetic retinopathy: a retrospective cohort study

Authors: Huiqun Wu, Xiaofeng Zhang, Xingyun Geng, Jiancheng Dong, Guomin Zhou

Published in: BMC Ophthalmology | Issue 1/2014

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Abstract

Background

Detection of retinal lesions like micro-aneurysms and exudates are important for the clinical diagnosis of diabetes retinopathy. The traditional subjective judgments by clinicians are dependent on their experience and can be subject to lack of consistency and therefore a quantification method is worthwhile.

Methods

In this study, 10 moderate non-proliferative diabetes retinopathy (NPDR) patients and 10 severe NPDR ones were retrospectively selected as a cohort. Mathematical morphological methods were used for automatic segmentation of lesions. For exudates detection, images were pre-processed with adaptive histogram equalization to enhance contrast, then binary images for area calculation were obtained by threshold classification. For micro-aneurysms detection, the images were pre-processed by top-hat and bottom-hat transformation, then Otsu method and Hough transform were used to classify micro-aneurysms. Post-processing morphological methods were used to preclude the false positive noise.

Results

After segmentation, the area of exuduates divided by optic disk area (exudates/disk ratio) and counts of microaneurysms were quantified and compared between the moderate and severe non-proliferative diabetic retinopathy groups, which had significant difference(P < 0.05).

Conclusions

In conclusion, morphological features of lesion might be an image marker for NPDR grading and computer aided quantification of retinal lesion could be a practical way for clinicians to better investigates diabetic retinopathy.
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Metadata
Title
Computer aided quantification for retinal lesions in patients with moderate and severe non-proliferative diabetic retinopathy: a retrospective cohort study
Authors
Huiqun Wu
Xiaofeng Zhang
Xingyun Geng
Jiancheng Dong
Guomin Zhou
Publication date
01-12-2014
Publisher
BioMed Central
Published in
BMC Ophthalmology / Issue 1/2014
Electronic ISSN: 1471-2415
DOI
https://doi.org/10.1186/1471-2415-14-126

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