Pregled bibliografske jedinice broj: 978772
Deep Neural Network Based Quantification of Retinal Optical Coherence Tomography Images
Deep Neural Network Based Quantification of Retinal Optical Coherence Tomography Images // Proceedings of the Annual Meeting of the Association-for-Research- in-Vision-and-Ophthalmology (ARVO)
Honolulu (HI): ASSOC RESEARCH VISION OPHTHALMOLOGY INC, 2018. str. 1221-1221 (poster, međunarodna recenzija, sažetak, znanstveni)
CROSBI ID: 978772 Za ispravke kontaktirajte CROSBI podršku putem web obrasca
Naslov
Deep Neural Network Based Quantification of Retinal Optical Coherence Tomography Images
Autori
Heisler, Morgan ; Ju, Myeong Jin ; Lu, Donghuan ; Athwal, Arman ; Docherty, Gavin ; Martens, Rosanna ; Mammo, Zaid ; Prentasic, Pavle ; Lee, Sieun ; Chan, Forson ; Bhalla, Mahadev ; Jian, Yifan ; Lončarić, Sven ; Beg, Mirza ; Navajas, Eduardo Vitor ; Sarunic, Marinko
Vrsta, podvrsta i kategorija rada
Sažeci sa skupova, sažetak, znanstveni
Izvornik
Proceedings of the Annual Meeting of the Association-for-Research- in-Vision-and-Ophthalmology (ARVO)
/ - Honolulu (HI) : ASSOC RESEARCH VISION OPHTHALMOLOGY INC, 2018, 1221-1221
Skup
The Association for Research in Vision & Ophthalmology 2022 Annual Meeting
Mjesto i datum
Honolulu (HI), Sjedinjene Američke Države, 29.04.2018. - 03.05.2018
Vrsta sudjelovanja
Poster
Vrsta recenzije
Međunarodna recenzija
Ključne riječi
deep neural networks ; ophthalmology
Sažetak
Purpose: Fully automated and accurate quantification of retinal images is emerging as a necessary tool for the clinical utility of optical coherence tomography (OCT) images. The purpose of this study is to investigate machine learning, in particular Deep Neural Networks (DNN), to perform the classification and segmentation necessary for quantification of microvasculature in OCT Angiography images, fluid in OCT Bscans, and photoreceptors in Adaptive Optics (AO) OCT images. Methods: Each of the automated processing networks required different methods. For microvasculature segmentation, OCTA images of both healthy and diabetic eyes were acquired with a prototype and two commercial systems. The DNN was trained on expert segmentations, and the output was used to calculate vessel density as well as four foveal avascular zone morphometric parameters (area, maximum and minimum diameter, and eccentricity). For the segmentation and classification of retinal fluid, the images used were acquired from commercially available systems. The processing included layer segmentation, fluid detection, and classification as intraretinal fluid (IRF), subretinal fluid (SRF) and pigment epithelial detachment (PED). Lastly, the images used for quantification of photoreceptors were acquired with a recently developed Sensorless AO-OCT with a 200kHz swept source OCT engine. Results: For the microvasculature segmentation, the average pixel- wise accuracy was 0.823 across all systems. Additionally, no significant difference between the means of the measurements from automated and manual segmentations were found for any of the clinical outcome measures on any system. The proposed fluid segmentation network achieved a Dice index of 0.767 for segmentation and an Area Under the Curve (AUC) measure of 1.00 for detection tasks. For the cone counting algorithm, the accuracy of the DNN segmented output was found to be 0.981. Representative OCT images before and after segmentation Figure 1 (a) – (f). Figure 1 (d) is the probability map output of the DNN. Figure 1 (e) shows the fluid segmentations and classification as IRF (red), SRF (yellow) and PED (blue) along with the anterior and posterior segmentations of the retina. Figure 1 (f) shows the result of the DNN where each cyan mark is noted as a center of a cone. Conclusions: Machine learning based segmentation enables reliable quantification of retinal OCT scans.
Izvorni jezik
Engleski
Znanstvena područja
Elektrotehnika, Računarstvo
POVEZANOST RADA
Ustanove:
Fakultet elektrotehnike i računarstva, Zagreb