Abstract
Diabetic macular edema (DME) is a common vision threatening complication of diabetic retinopathy. In a large scale screening environment DME can be assessed by detecting exudates (a type of bright lesions) in fundus images. In this work, we introduce a new methodology for diagnosis of DME using a novel set of features based on colour, wavelet decomposition and automatic lesion segmentation. These features are employed to train a classifier able to automatically diagnose DME through the presence of exudation. We present a new publicly available dataset with ground-truth data containing 169 patients from various ethnic groups and levels of DME. This and other two publicly available datasets are employed to evaluate our algorithm. We are able to achieve diagnosis performance comparable to retina experts on the MESSIDOR (an independently labelled dataset with 1200 images) with cross-dataset testing (e.g., the classifier was trained on an independent dataset and tested on MESSIDOR). Our algorithm obtained an AUC between 0.88 and 0.94 depending on the dataset/features used. Additionally, it does not need ground truth at lesion level to reject false positives and is computationally efficient, as it generates a diagnosis on an average of 4.4. s (9.3. s, considering the optic nerve localisation) per image on an 2.6. GHz platform with an unoptimised Matlab implementation.
Original language | English |
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Pages (from-to) | 216-226 |
Number of pages | 11 |
Journal | Medical Image Analysis |
Volume | 16 |
Issue number | 1 |
DOIs | |
State | Published - Jan 2012 |
Funding
These studies were supported in part by grants from Oak Ridge National Laboratory, the National Eye Institute (EY017065), by an unrestricted UTHSC Departmental grant from Research to Prevent Blindness (RPB), New York, NY, Fight for Sight, New York, NY, by The Plough Foundation, Memphis, TN and by the Regional Burgundy Council, France. Dr. Chaum is an RPB Senior Scientist.
Funders | Funder number |
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Plough Foundation | |
Regional Burgundy Council | |
UTHSC | |
National Eye Institute | R01EY017065 |
Research to Prevent Blindness | |
Oak Ridge National Laboratory |
Keywords
- Automatic diagnosis
- Exudates segmentation
- Feature extraction
- Lesion probability
- Wavelets