A hyperspectral vessel image registration method for blood oxygenation mapping.

Blood oxygenation mapping by the means of optical oximetry is of significant importance in clinical trials. This paper uses hyperspectral imaging technology to obtain in vivo images for blood oxygenation detection. The experiment involves dorsal skin fold window chamber preparation which was built o...

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Main Authors: Qian Wang, Qingli Li, Mei Zhou, Zhen Sun, Hongying Liu, Yiting Wang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2017-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5453521?pdf=render
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spelling doaj-25544b09f1c34f9789ea064fe70c2c502020-11-25T01:24:02ZengPublic Library of Science (PLoS)PLoS ONE1932-62032017-01-01126e017849910.1371/journal.pone.0178499A hyperspectral vessel image registration method for blood oxygenation mapping.Qian WangQingli LiMei ZhouZhen SunHongying LiuYiting WangBlood oxygenation mapping by the means of optical oximetry is of significant importance in clinical trials. This paper uses hyperspectral imaging technology to obtain in vivo images for blood oxygenation detection. The experiment involves dorsal skin fold window chamber preparation which was built on adult (8-10 weeks of age) female BALB/c nu/nu mice and in vivo image acquisition which was performed by hyperspectral imaging system. To get the accurate spatial and spectral information of targets, an automatic registration scheme is proposed. An adaptive feature detection method which combines the local threshold method and the level-set filter is presented to extract target vessels. A reliable feature matching algorithm with the correlative information inherent in hyperspectral images is used to kick out the outliers. Then, the registration images are used for blood oxygenation mapping. Registration evaluation results show that most of the false matches are removed and the smooth and concentrated spectra are obtained. This intensity invariant feature detection with outliers-removing feature matching proves to be effective in hyperspectral vessel image registration. Therefore, in vivo hyperspectral imaging system by the assistance of the proposed registration scheme provides a technique for blood oxygenation research.http://europepmc.org/articles/PMC5453521?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Qian Wang
Qingli Li
Mei Zhou
Zhen Sun
Hongying Liu
Yiting Wang
spellingShingle Qian Wang
Qingli Li
Mei Zhou
Zhen Sun
Hongying Liu
Yiting Wang
A hyperspectral vessel image registration method for blood oxygenation mapping.
PLoS ONE
author_facet Qian Wang
Qingli Li
Mei Zhou
Zhen Sun
Hongying Liu
Yiting Wang
author_sort Qian Wang
title A hyperspectral vessel image registration method for blood oxygenation mapping.
title_short A hyperspectral vessel image registration method for blood oxygenation mapping.
title_full A hyperspectral vessel image registration method for blood oxygenation mapping.
title_fullStr A hyperspectral vessel image registration method for blood oxygenation mapping.
title_full_unstemmed A hyperspectral vessel image registration method for blood oxygenation mapping.
title_sort hyperspectral vessel image registration method for blood oxygenation mapping.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2017-01-01
description Blood oxygenation mapping by the means of optical oximetry is of significant importance in clinical trials. This paper uses hyperspectral imaging technology to obtain in vivo images for blood oxygenation detection. The experiment involves dorsal skin fold window chamber preparation which was built on adult (8-10 weeks of age) female BALB/c nu/nu mice and in vivo image acquisition which was performed by hyperspectral imaging system. To get the accurate spatial and spectral information of targets, an automatic registration scheme is proposed. An adaptive feature detection method which combines the local threshold method and the level-set filter is presented to extract target vessels. A reliable feature matching algorithm with the correlative information inherent in hyperspectral images is used to kick out the outliers. Then, the registration images are used for blood oxygenation mapping. Registration evaluation results show that most of the false matches are removed and the smooth and concentrated spectra are obtained. This intensity invariant feature detection with outliers-removing feature matching proves to be effective in hyperspectral vessel image registration. Therefore, in vivo hyperspectral imaging system by the assistance of the proposed registration scheme provides a technique for blood oxygenation research.
url http://europepmc.org/articles/PMC5453521?pdf=render
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