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Segmentation of vessel structures from photoacoustic images with reliability assessment

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Segmentation of vessel structures from photoacoustic images with reliability assessment. / Raumonen, Pasi; Tarvainen, Tanja.

julkaisussa: Biomedical Optics Express, Vuosikerta 9, Nro 7, 01.07.2018, s. 2887-2904.

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Raumonen, P & Tarvainen, T 2018, 'Segmentation of vessel structures from photoacoustic images with reliability assessment', Biomedical Optics Express, Vuosikerta. 9, Nro 7, Sivut 2887-2904. https://doi.org/10.1364/BOE.9.002887

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Raumonen, Pasi ; Tarvainen, Tanja. / Segmentation of vessel structures from photoacoustic images with reliability assessment. Julkaisussa: Biomedical Optics Express. 2018 ; Vuosikerta 9, Nro 7. Sivut 2887-2904.

Bibtex - Lataa

@article{55940737d9b648639122767fa95852cb,
title = "Segmentation of vessel structures from photoacoustic images with reliability assessment",
abstract = "Photoacoustic imaging enables the imaging of soft biological tissue with combined optical contrast and ultrasound resolution. One of the targets of interest is tissue vasculature. However, the photoacoustic images may not directly provide the information on, for example, vasculature structure. Therefore, the images are improved by reducing noise and artefacts, and processed for better visualisation of the target of interest. In this work, we present a new segmentation method of photoacoustic images that also straightforwardly produces assessments of its reliability. The segmentation depends on parameters which have a natural tendency to increase the reliability as the parameter values monotonically change. The reliability is assessed by counting classifications of image voxels with different parameter values. The resulting segmentation with reliability offers new ways and tools to analyse photoacoustic images and new possibilities for utilising them as anatomical priors in further computations. Our MATLAB implementation of the method is available as an open-source software package [P. Raumonen, Matlab, 2018].",
author = "Pasi Raumonen and Tanja Tarvainen",
year = "2018",
month = "7",
day = "1",
doi = "10.1364/BOE.9.002887",
language = "English",
volume = "9",
pages = "2887--2904",
journal = "Biomedical Optics Express",
issn = "2156-7085",
publisher = "Optical Society of America",
number = "7",

}

RIS (suitable for import to EndNote) - Lataa

TY - JOUR

T1 - Segmentation of vessel structures from photoacoustic images with reliability assessment

AU - Raumonen, Pasi

AU - Tarvainen, Tanja

PY - 2018/7/1

Y1 - 2018/7/1

N2 - Photoacoustic imaging enables the imaging of soft biological tissue with combined optical contrast and ultrasound resolution. One of the targets of interest is tissue vasculature. However, the photoacoustic images may not directly provide the information on, for example, vasculature structure. Therefore, the images are improved by reducing noise and artefacts, and processed for better visualisation of the target of interest. In this work, we present a new segmentation method of photoacoustic images that also straightforwardly produces assessments of its reliability. The segmentation depends on parameters which have a natural tendency to increase the reliability as the parameter values monotonically change. The reliability is assessed by counting classifications of image voxels with different parameter values. The resulting segmentation with reliability offers new ways and tools to analyse photoacoustic images and new possibilities for utilising them as anatomical priors in further computations. Our MATLAB implementation of the method is available as an open-source software package [P. Raumonen, Matlab, 2018].

AB - Photoacoustic imaging enables the imaging of soft biological tissue with combined optical contrast and ultrasound resolution. One of the targets of interest is tissue vasculature. However, the photoacoustic images may not directly provide the information on, for example, vasculature structure. Therefore, the images are improved by reducing noise and artefacts, and processed for better visualisation of the target of interest. In this work, we present a new segmentation method of photoacoustic images that also straightforwardly produces assessments of its reliability. The segmentation depends on parameters which have a natural tendency to increase the reliability as the parameter values monotonically change. The reliability is assessed by counting classifications of image voxels with different parameter values. The resulting segmentation with reliability offers new ways and tools to analyse photoacoustic images and new possibilities for utilising them as anatomical priors in further computations. Our MATLAB implementation of the method is available as an open-source software package [P. Raumonen, Matlab, 2018].

U2 - 10.1364/BOE.9.002887

DO - 10.1364/BOE.9.002887

M3 - Article

VL - 9

SP - 2887

EP - 2904

JO - Biomedical Optics Express

JF - Biomedical Optics Express

SN - 2156-7085

IS - 7

ER -