<HashMap><database>biostudies-literature</database><scores><citationCount>0</citationCount><reanalysisCount>0</reanalysisCount><viewCount>50</viewCount><searchCount>0</searchCount></scores><additional><submitter>Zhang Y</submitter><funding>NIBIB NIH HHS</funding><funding>NICHD NIH HHS</funding><funding>Howard Hughes Medical Institute</funding><funding>NHLBI NIH HHS</funding><funding>NIAAA NIH HHS</funding><funding>U.S. Department of Health &amp;amp; Human Services | National Institutes of Health</funding><funding>National Science Foundation</funding><pagination>155</pagination><full_dataset_link>https://www.ebi.ac.uk/biostudies/studies/S-EPMC8322159</full_dataset_link><repository>biostudies-literature</repository><omics_type>Unknown</omics_type><volume>10(1)</volume><pubmed_abstract>Optical coherence tomography (OCT) is a widely used non-invasive biomedical imaging modality that can rapidly provide volumetric images of samples. Here, we present a deep learning-based image reconstruction framework that can generate swept-source OCT (SS-OCT) images using undersampled spectral data, without any spatial aliasing artifacts. This neural network-based image reconstruction does not require any hardware changes to the optical setup and can be easily integrated with existing swept-source or spectral-domain OCT systems to reduce the amount of raw spectral data to be acquired. To show the efficacy of this framework, we trained and blindly tested a deep neural network using mouse embryo samples imaged by an SS-OCT system. Using 2-fold undersampled spectral data (i.e., 640 spectral points per A-line), the trained neural network can blindly reconstruct 512 A-lines in 0.59 ms using multiple graphics-processing units (GPUs), removing spatial aliasing artifacts due to spectral undersampling, also presenting a very good match to the images of the same samples, reconstructed using the full spectral OCT data (i.e., 1280 spectral points per A-line). We also successfully demonstrate that this framework can be further extended to process 3× undersampled spectral data per A-line, with some performance degradation in the reconstructed image quality compared to 2× spectral undersampling. Furthermore, an A-line-optimized undersampling method is presented by jointly optimizing the spectral sampling locations and the corresponding image reconstruction network, which improved the overall imaging performance using less spectral data points per A-line compared to 2× or 3× spectral undersampling results. This deep learning-enabled image reconstruction approach can be broadly used in various forms of spectral-domain OCT systems, helping to increase their imaging speed without sacrificing image resolution and signal-to-noise ratio.</pubmed_abstract><journal>Light, science &amp; applications</journal><pubmed_title>Neural network-based image reconstruction in swept-source optical coherence tomography using undersampled spectral data.</pubmed_title><pmcid>PMC8322159</pmcid><funding_grant_id>R01 HL146745</funding_grant_id><funding_grant_id>R01 EB027099</funding_grant_id><funding_grant_id>R01 HD096335</funding_grant_id><funding_grant_id>R01 AA028406</funding_grant_id><pubmed_authors>Cetintas E</pubmed_authors><pubmed_authors>Larin KV</pubmed_authors><pubmed_authors>Zhang Y</pubmed_authors><pubmed_authors>Singh M</pubmed_authors><pubmed_authors>Rivenson Y</pubmed_authors><pubmed_authors>Luo Y</pubmed_authors><pubmed_authors>Ozcan A</pubmed_authors><pubmed_authors>Liu T</pubmed_authors><view_count>50</view_count></additional><is_claimable>false</is_claimable><name>Neural network-based image reconstruction in swept-source optical coherence tomography using undersampled spectral data.</name><description>Optical coherence tomography (OCT) is a widely used non-invasive biomedical imaging modality that can rapidly provide volumetric images of samples. Here, we present a deep learning-based image reconstruction framework that can generate swept-source OCT (SS-OCT) images using undersampled spectral data, without any spatial aliasing artifacts. This neural network-based image reconstruction does not require any hardware changes to the optical setup and can be easily integrated with existing swept-source or spectral-domain OCT systems to reduce the amount of raw spectral data to be acquired. To show the efficacy of this framework, we trained and blindly tested a deep neural network using mouse embryo samples imaged by an SS-OCT system. Using 2-fold undersampled spectral data (i.e., 640 spectral points per A-line), the trained neural network can blindly reconstruct 512 A-lines in 0.59 ms using multiple graphics-processing units (GPUs), removing spatial aliasing artifacts due to spectral undersampling, also presenting a very good match to the images of the same samples, reconstructed using the full spectral OCT data (i.e., 1280 spectral points per A-line). We also successfully demonstrate that this framework can be further extended to process 3× undersampled spectral data per A-line, with some performance degradation in the reconstructed image quality compared to 2× spectral undersampling. Furthermore, an A-line-optimized undersampling method is presented by jointly optimizing the spectral sampling locations and the corresponding image reconstruction network, which improved the overall imaging performance using less spectral data points per A-line compared to 2× or 3× spectral undersampling results. This deep learning-enabled image reconstruction approach can be broadly used in various forms of spectral-domain OCT systems, helping to increase their imaging speed without sacrificing image resolution and signal-to-noise ratio.</description><dates><release>2021-01-01T00:00:00Z</release><publication>2021 Jul</publication><modification>2024-11-06T18:04:06.163Z</modification><creation>2022-02-11T02:01:51.389Z</creation></dates><accession>S-EPMC8322159</accession><cross_references><pubmed>34326306</pubmed><doi>10.1038/s41377-021-00594-7</doi></cross_references></HashMap>