Qualitative and quantitative comparison of two semi-manual retinal vascular density
analyzing methods on optical coherence tomography angiography images of healthy individuals
The aim of this study was to evaluate qualitative and quantitative differences in
vascular density analysis of an established and a novel alternative for post-processing
on optical coherence tomography angiography (OCTA) images in healthy individuals.
OCTA examinations of 38 subjects were performed. After extracting the images, two
semi-manual post-processing techniques, the already established Mexican hat filtering
(MHF) and an alternative, the Shanbhag thresholding (ST) were applied. We assessed
Vessel Density (VD), Skeleton Density (SkD) and Vessel Diameter Index (VDI). We analyzed
the results in order to establish similarities or potentially relevant differences.
Regarding SkD and VD, MHF generally gave higher values than ST. Simultaneously, mean
values were also predominantly higher by MHF; however, standard deviations (SD) were
higher by ST (range [mean ± SD]: 0.054 ± 0.038 to 0.134 ± 0.01 and 0.134 ± 0.095 to
0.362 ± 0.028 vs 0.012 ± 0.014 to 0.087 ± 0.03 and 0.039 ± 0.047 to 0.4 ± 0.095 for
SkD and VD with MHF vs SkD and VD with ST, respectively). Values of VDI were considerably
higher with ST than with MHF, while standard deviation was still significantly higher
with ST (range [mean ± SD]: 2.459 ± 0.144 to 2.71 ± 0.084 and 2.983 ± 0.929 to 5.19
± 1.064 for VDI with MHF and ST, respectively). The noise level reduction of the two
methods were almost identical (noise levels: 65.8% with MHT and 65.24% with ST). Using
MHF, the vascular network gets more fragmented by an average of 40% compared to ST.
Both methods allow the segmentation of the vascular network and the examination of
vascular density parameters, but they produce largely inconsistent results. To determine
if these inconsistent results are clinically meaningful, and which method is more
suitable for clinical use, our results provide further evidence that detailed understanding
of the image analysis method is essential for reliable decision making for patients
with retinal pathology. For longitudinal monitoring, use of the same image processing
method is recommended.