Deep learning-based label-free imaging of lymphatics and aqueous veins in the eye using optical coherence tomography

Peijun Gong, Xiaolan Tang, Junying Chen, Haijun You, Yuxing Wang, Paula K. Yu, Dao Yi Yu, Barry Cense

Research output: Contribution to journalArticlepeer-review

Abstract

We demonstrate an adaptation of deep learning for label-free imaging of the micro-scale lymphatic vessels and aqueous veins in the eye using optical coherence tomography (OCT). The proposed deep learning-based OCT lymphangiography (DL-OCTL) method was trained, validated and tested, using OCT scans (23 volumetric scans comprising 19,736 B-scans) from 11 fresh ex vivo porcine eyes with the corresponding vessel labels generated by a conventional OCT lymphangiography (OCTL) method based on thresholding with attenuation compensation. Compared to conventional OCTL, the DL-OCTL method demonstrates comparable results for imaging lymphatics and aqueous veins in the eye, with an Intersection over Union value of 0.79 ± 0.071 (mean ± standard deviation). In addition, DL-OCTL mitigates the imaging artifacts in conventional OCTL where the OCT signal modelling was corrupted by the tissue heterogeneity, provides ~ 10 times faster processing based on a rough comparison and does not require OCT-related knowledge for correct implementation as in conventional OCTL. With these favorable features, DL-OCTL promises to improve the practicality of OCTL for label-free imaging of lymphatics and aqueous veins for preclinical and clinical imaging applications.

Original languageEnglish
Article number6126
Number of pages12
JournalScientific Reports
Volume14
Issue number1
Early online date13 Mar 2024
DOIs
Publication statusPublished - 2024

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