Author:
Long Shengchun,Chen Jiali,Hu Ante,Liu Haipeng,Chen Zhiqing,Zheng Dingchang
Abstract
Abstract
Background
As one of the major
complications of diabetes, diabetic retinopathy (DR) is a leading
cause of visual impairment and blindness due to delayed diagnosis
and intervention. Microaneurysms appear as the earliest symptom of
DR. Accurate and reliable detection of microaneurysms in color
fundus images has great importance for DR screening.
Methods
A microaneurysms' detection method
using machine learning based on directional local contrast (DLC) is
proposed for the early diagnosis of DR. First, blood vessels were
enhanced and segmented using improved enhancement function based on
analyzing eigenvalues of Hessian matrix. Next, with blood vessels
excluded, microaneurysm candidate regions were obtained using shape
characteristics and connected components analysis. After image
segmented to patches, the features of each microaneurysm candidate
patch were extracted, and each candidate patch was classified into
microaneurysm or non-microaneurysm. The main contributions of our
study are (1) making use of directional local contrast in
microaneurysms' detection for the first time, which does make sense
for better microaneurysms' classification. (2) Applying three
different machine learning techniques for classification and
comparing their performance for microaneurysms' detection. The
proposed algorithm was trained and tested on e-ophtha MA database,
and further tested on another independent DIARETDB1 database.
Results of microaneurysms' detection on the two databases were
evaluated on lesion level and compared with existing algorithms.
Results
The proposed method has achieved better performance compared with existing algorithms on accuracy and computation time. On e-ophtha MA and DIARETDB1 databases, the area under curve (AUC) of receiver operating characteristic (ROC) curve was 0.87 and 0.86, respectively. The free-response ROC (FROC) score on the two databases was 0.374 and 0.210, respectively. The computation time per image with resolution of 2544×1969, 1400×960 and 1500×1152 is 29 s, 3 s and 2.6 s, respectively.
Conclusions
The proposed method
using machine learning based on directional local contrast of image
patches can effectively detect microaneurysms in color fundus images
and provide an effective scientific basis for early clinical DR
diagnosis.
Publisher
Springer Science and Business Media LLC
Subject
Radiology, Nuclear Medicine and imaging,Biomedical Engineering,General Medicine,Biomaterials,Radiological and Ultrasound Technology
Cited by
39 articles.
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