Seyed Hossein Rasta
1,2*, Shima Nikfarjam
1, Alireza Javadzadeh
31 Department of Medical Bioengineering, Stem Cell Research Center, Tabriz University of Medical Sciences, Tabriz, Iran
2 School of Medical Sciences, University of Aberdeen, Aberdeen, UK
3 Department of Ophthalmology, Tabriz University of Medical Sciences, Tabriz, Iran
Abstract
Introduction: Retinal capillary nonperfusion
(CNP) is one of the retinal vascular diseases in diabetic retinopathy
(DR) patients. As there is no comprehensive detection technique to
recognize CNP areas, we proposed a different method for computing
detection of ischemic retina, non-perfused (NP) regions, in fundus
fluorescein angiogram (FFA) images.
Methods: Whilst major vessels appear as
ridges, non-perfused areas are usually observed as ponds that are
surrounded by healthy capillaries in FFA images. A new technique using
homomorphic filtering to correct light illumination and detect the ponds
surrounded in healthy capillaries on FFA images was designed and
applied on DR fundus images. These images were acquired from the
diabetic patients who had referred to the Nikookari hospital and were
diagnosed for diabetic retinopathy during one year. Our strategy was
screening the whole image with a fixed window size, which is small
enough to enclose areas with identified topographic characteristics. To
discard false nominees, we also performed a thresholding operation on
the screen and marked images. To validate its performance we applied our
detection algorithm on 41 FFA diabetic retinopathy fundus images in
which the CNP areas were manually delineated by three clinical experts.
Results: Lesions were found as smooth regions
with very high uniformity, low entropy, and small intensity variations
in FFA images. The results of automated detection method were compared
with manually marked CNP areas so achieved sensitivity of 81%,
specificity of 78%, and accuracy of 91%.The result was present as a
Receiver operating character (ROC) curve, which has an area under the
curve (AUC) of 0.796 with 95% confidence intervals.
Conclusion: This technique introduced a new
automated detection algorithm to recognize non-perfusion lesions on FFA.
This has potential to assist detecting and managing of ischemic retina
and may be incorporated into automated grading diabetic retinopathy
structures.