Automated segmentation tool for brain infusions.

This study presents a computational tool for auto-segmenting the distribution of brain infusions observed by magnetic resonance imaging. Clinical usage of direct infusion is increasing as physicians recognize the need to attain high drug concentrations in the target structure with minimal off-target...

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Main Authors: Kathryn Hammond Rosenbluth, Francisco Gimenez, Adrian P Kells, Ernesto A Salegio, Gabriele M Mittermeyer, Kevin Modera, Anmol Kohal, Krystof S Bankiewicz
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3673979?pdf=render
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spelling doaj-c9c08fa091204c18a652820f8b68016c2020-11-25T01:46:40ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0186e6445210.1371/journal.pone.0064452Automated segmentation tool for brain infusions.Kathryn Hammond RosenbluthFrancisco GimenezAdrian P KellsErnesto A SalegioGabriele M MittermeyerKevin ModeraAnmol KohalKrystof S BankiewiczThis study presents a computational tool for auto-segmenting the distribution of brain infusions observed by magnetic resonance imaging. Clinical usage of direct infusion is increasing as physicians recognize the need to attain high drug concentrations in the target structure with minimal off-target exposure. By co-infusing a Gadolinium-based contrast agent and visualizing the distribution using real-time using magnetic resonance imaging, physicians can make informed decisions about when to stop or adjust the infusion. However, manual segmentation of the images is tedious and affected by subjective preferences for window levels, image interpolation and personal biases about where to delineate the edge of the sloped shoulder of the infusion. This study presents a computational technique that uses a Gaussian Mixture Model to efficiently classify pixels as belonging to either the high-intensity infusate or low-intensity background. The algorithm was implemented as a distributable plug-in for the widely used imaging platform OsiriX®. Four independent operators segmented fourteen anonymized datasets to validate the tool's performance. The datasets were intra-operative magnetic resonance images of infusions into the thalamus or putamen of non-human primates. The tool effectively reproduced the manual segmentation volumes, while significantly reducing intra-operator variability by 67±18%. The tool will be used to increase efficiency and reduce variability in upcoming clinical trials in neuro-oncology and gene therapy.http://europepmc.org/articles/PMC3673979?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Kathryn Hammond Rosenbluth
Francisco Gimenez
Adrian P Kells
Ernesto A Salegio
Gabriele M Mittermeyer
Kevin Modera
Anmol Kohal
Krystof S Bankiewicz
spellingShingle Kathryn Hammond Rosenbluth
Francisco Gimenez
Adrian P Kells
Ernesto A Salegio
Gabriele M Mittermeyer
Kevin Modera
Anmol Kohal
Krystof S Bankiewicz
Automated segmentation tool for brain infusions.
PLoS ONE
author_facet Kathryn Hammond Rosenbluth
Francisco Gimenez
Adrian P Kells
Ernesto A Salegio
Gabriele M Mittermeyer
Kevin Modera
Anmol Kohal
Krystof S Bankiewicz
author_sort Kathryn Hammond Rosenbluth
title Automated segmentation tool for brain infusions.
title_short Automated segmentation tool for brain infusions.
title_full Automated segmentation tool for brain infusions.
title_fullStr Automated segmentation tool for brain infusions.
title_full_unstemmed Automated segmentation tool for brain infusions.
title_sort automated segmentation tool for brain infusions.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description This study presents a computational tool for auto-segmenting the distribution of brain infusions observed by magnetic resonance imaging. Clinical usage of direct infusion is increasing as physicians recognize the need to attain high drug concentrations in the target structure with minimal off-target exposure. By co-infusing a Gadolinium-based contrast agent and visualizing the distribution using real-time using magnetic resonance imaging, physicians can make informed decisions about when to stop or adjust the infusion. However, manual segmentation of the images is tedious and affected by subjective preferences for window levels, image interpolation and personal biases about where to delineate the edge of the sloped shoulder of the infusion. This study presents a computational technique that uses a Gaussian Mixture Model to efficiently classify pixels as belonging to either the high-intensity infusate or low-intensity background. The algorithm was implemented as a distributable plug-in for the widely used imaging platform OsiriX®. Four independent operators segmented fourteen anonymized datasets to validate the tool's performance. The datasets were intra-operative magnetic resonance images of infusions into the thalamus or putamen of non-human primates. The tool effectively reproduced the manual segmentation volumes, while significantly reducing intra-operator variability by 67±18%. The tool will be used to increase efficiency and reduce variability in upcoming clinical trials in neuro-oncology and gene therapy.
url http://europepmc.org/articles/PMC3673979?pdf=render
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