Automated Quantification of Hyperreflective Foci in SD-OCT With Diabetic Retinopathy
Idowu Paul Okuwobi, Zexuan Ji, Wen Fan, Songtao Yuan, Loza Bekalo, and, Qiang Chen

TL;DR
This paper introduces an automated algorithm for segmenting and quantifying hyperreflective foci in SD-OCT images, aiding in the assessment of diabetic retinopathy progression.
Contribution
The study presents a novel automated method combining ROI generation and HFs estimation for accurate quantification in retinal OCT images.
Findings
Achieved average Dice similarity coefficient around 70%.
Correlation coefficient of 0.99 indicates high accuracy.
Effective in providing quantitative HFs data for clinical use.
Abstract
The presence of hyperreflective foci (HFs) is related to retinal disease progression, and the quantity has proven to be a prognostic factor of visual and anatomical outcome in various retinal diseases. However, lack of efficient quantitative tools for evaluating the HFs has deprived ophthalmologist of assessing the volume of HFs. For this reason, we propose an automated quantification algorithm to segment and quantify HFs in spectral domain optical coherence tomography (SD-OCT). The proposed algorithm consists of two parallel processes namely: region of interest (ROI) generation and HFs estimation. To generate the ROI, we use morphological reconstruction to obtain the reconstructed image and histogram constructed for data distributions and clustering. In parallel, we estimate the HFs by extracting the extremal regions from the connected regions obtained from a component tree. Finally,…
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