| Literature DB >> 27409494 |
Alice Y Kim1, Zhongdi Chu2, Anoush Shahidzadeh1, Ruikang K Wang2, Carmen A Puliafito1, Amir H Kashani1.
Abstract
PURPOSE: To quantify changes in retinal microvasculature in diabetic retinopathy (DR) by using spectral-domain optical coherence tomography angiography (SD-OCTA).Entities:
Mesh:
Year: 2016 PMID: 27409494 PMCID: PMC4968771 DOI: 10.1167/iovs.15-18904
Source DB: PubMed Journal: Invest Ophthalmol Vis Sci ISSN: 0146-0404 Impact factor: 4.799
Figure 1Representative SD-OCTA and postprocessed images illustrating the semiautomated analysis algorithm. (A) Original, nonsegmented SD-OCTA image. Yellow circles demonstrate the manually selected area that was used as global thresholding. (B) Top-hat filtered image. (C) A binarized image was obtained by using combined adaptive threshold and hessian filter. This image was used for quantification of vessel density. (D) A skeletonized image was obtained by iteratively deleting the pixels in the outer boundary of the binarized image until 1 pixel remained along the width direction of the vessels. This image was used for calculation of skeleton density. The yellow scale bar in (A) shows a distance of 500 μm. This scale applies to (A–D).
Demographics of Healthy and Diabetic Subjects
Figure 2Nonsegmented SD-OCTA images with quantitative image outputs of representative subjects in 3×3-mm areas around the fovea. En face representations of retinal perfusion can be viewed as (A–D) 2D grayscale SD-OCTA images of retinal vasculature, with selection of noise thresholding marked with yellow in the foveal avascular zone. (E–H) Contrast-enhanced binarized and (I–L) skeletonized images of retinal perfusion around the macula corresponding to the group labeled in each column. The yellow scale bar in (A) shows a distance of 500 μm. This scale applies to (A–L).
Quantitative Analysis Results for Each Study Group and Segmentation Scheme
Figure 3Quantitative analysis of microvascular density and morphology on SD-OCTA images. Graphs of mean skeleton density (A), vessel density (B), fractal dimension (C), and vessel diameter index (D) of normal eyes and eyes affected by mild NPDR, severe NPDR, and PDR. Retinal perfusion indices were quantified in a 3×3-mm area over the macula by using MATLAB software and a novel quantitative algorithm as described in the Methods. Comparisons of these indices showed decreases in SD, VD, and FD along with increases in VDI in any stage of DR when compared to normal eyes. *P < 0.05.
Results of ANOVA With Post Hoc Tukey HSD Tests
Quantitative Analysis of Eyes With and Without DME
Power Analysis of Comparisons With Nonsegmented OCTA Images