| Literature DB >> 35154862 |
Thitiya Seesan1,2, Ibrahim Abd El-Sadek1,3, Pradipta Mukherjee1, Lida Zhu1, Kensuke Oikawa1, Arata Miyazawa1,4, Larina Tzu-Wei Shen5, Satoshi Matsusaka5, Prathan Buranasiri2, Shuichi Makita1, Yoshiaki Yasuno1.
Abstract
We present deep convolutional neural network (DCNN)-based estimators of the tissue scatterer density (SD), lateral and axial resolutions, signal-to-noise ratio (SNR), and effective number of scatterers (ENS, the number of scatterers within a resolution volume). The estimators analyze the speckle pattern of an optical coherence tomography (OCT) image in estimating these parameters. The DCNN is trained by a large number (1,280,000) of image patches that are fully numerically generated in OCT imaging simulation. Numerical and experimental validations were performed. The numerical validation shows good estimation accuracy as the root mean square errors were 0.23%, 3.65%, 3.58%, 3.79%, and 6.15% for SD, lateral and axial resolutions, SNR, and ENS, respectively. The experimental validation using scattering phantoms (Intralipid emulsion) shows reasonable estimations. Namely, the estimated SDs were proportional to the Intralipid concentrations, and the average estimation errors of lateral and axial resolutions were 1.36% and 0.68%, respectively. The scatterer density estimator was also applied to an in vitro tumor cell spheroid, and a reduction in the scatterer density during cell necrosis was found.Entities:
Year: 2021 PMID: 35154862 PMCID: PMC8803045 DOI: 10.1364/BOE.443343
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732