Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.

Surgery for brain cancer is a major problem in neurosurgery. The diffuse infiltration into the surrounding normal brain by these tumors makes their accurate identification by the naked eye difficult. Since surgery is the common treatment for brain cancer, an accurate radical resection of the tumor l...

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Main Authors: Himar Fabelo, Samuel Ortega, Daniele Ravi, B Ravi Kiran, Coralia Sosa, Diederik Bulters, Gustavo M Callicó, Harry Bulstrode, Adam Szolna, Juan F Piñeiro, Silvester Kabwama, Daniel Madroñal, Raquel Lazcano, Aruma J-O'Shanahan, Sara Bisshopp, María Hernández, Abelardo Báez, Guang-Zhong Yang, Bogdan Stanciulescu, Rubén Salvador, Eduardo Juárez, Roberto Sarmiento
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2018-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC5858847?pdf=render
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spelling doaj-85e1a91a186f4ee281c8703ec81177382020-11-25T00:13:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032018-01-01133e019372110.1371/journal.pone.0193721Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.Himar FabeloSamuel OrtegaDaniele RaviB Ravi KiranCoralia SosaDiederik BultersGustavo M CallicóHarry BulstrodeAdam SzolnaJuan F PiñeiroSilvester KabwamaDaniel MadroñalRaquel LazcanoAruma J-O'ShanahanSara BisshoppMaría HernándezAbelardo BáezGuang-Zhong YangBogdan StanciulescuRubén SalvadorEduardo JuárezRoberto SarmientoSurgery for brain cancer is a major problem in neurosurgery. The diffuse infiltration into the surrounding normal brain by these tumors makes their accurate identification by the naked eye difficult. Since surgery is the common treatment for brain cancer, an accurate radical resection of the tumor leads to improved survival rates for patients. However, the identification of the tumor boundaries during surgery is challenging. Hyperspectral imaging is a non-contact, non-ionizing and non-invasive technique suitable for medical diagnosis. This study presents the development of a novel classification method taking into account the spatial and spectral characteristics of the hyperspectral images to help neurosurgeons to accurately determine the tumor boundaries in surgical-time during the resection, avoiding excessive excision of normal tissue or unintentionally leaving residual tumor. The algorithm proposed in this study to approach an efficient solution consists of a hybrid framework that combines both supervised and unsupervised machine learning methods. Firstly, a supervised pixel-wise classification using a Support Vector Machine classifier is performed. The generated classification map is spatially homogenized using a one-band representation of the HS cube, employing the Fixed Reference t-Stochastic Neighbors Embedding dimensional reduction algorithm, and performing a K-Nearest Neighbors filtering. The information generated by the supervised stage is combined with a segmentation map obtained via unsupervised clustering employing a Hierarchical K-Means algorithm. The fusion is performed using a majority voting approach that associates each cluster with a certain class. To evaluate the proposed approach, five hyperspectral images of surface of the brain affected by glioblastoma tumor in vivo from five different patients have been used. The final classification maps obtained have been analyzed and validated by specialists. These preliminary results are promising, obtaining an accurate delineation of the tumor area.http://europepmc.org/articles/PMC5858847?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Himar Fabelo
Samuel Ortega
Daniele Ravi
B Ravi Kiran
Coralia Sosa
Diederik Bulters
Gustavo M Callicó
Harry Bulstrode
Adam Szolna
Juan F Piñeiro
Silvester Kabwama
Daniel Madroñal
Raquel Lazcano
Aruma J-O'Shanahan
Sara Bisshopp
María Hernández
Abelardo Báez
Guang-Zhong Yang
Bogdan Stanciulescu
Rubén Salvador
Eduardo Juárez
Roberto Sarmiento
spellingShingle Himar Fabelo
Samuel Ortega
Daniele Ravi
B Ravi Kiran
Coralia Sosa
Diederik Bulters
Gustavo M Callicó
Harry Bulstrode
Adam Szolna
Juan F Piñeiro
Silvester Kabwama
Daniel Madroñal
Raquel Lazcano
Aruma J-O'Shanahan
Sara Bisshopp
María Hernández
Abelardo Báez
Guang-Zhong Yang
Bogdan Stanciulescu
Rubén Salvador
Eduardo Juárez
Roberto Sarmiento
Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
PLoS ONE
author_facet Himar Fabelo
Samuel Ortega
Daniele Ravi
B Ravi Kiran
Coralia Sosa
Diederik Bulters
Gustavo M Callicó
Harry Bulstrode
Adam Szolna
Juan F Piñeiro
Silvester Kabwama
Daniel Madroñal
Raquel Lazcano
Aruma J-O'Shanahan
Sara Bisshopp
María Hernández
Abelardo Báez
Guang-Zhong Yang
Bogdan Stanciulescu
Rubén Salvador
Eduardo Juárez
Roberto Sarmiento
author_sort Himar Fabelo
title Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
title_short Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
title_full Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
title_fullStr Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
title_full_unstemmed Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
title_sort spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2018-01-01
description Surgery for brain cancer is a major problem in neurosurgery. The diffuse infiltration into the surrounding normal brain by these tumors makes their accurate identification by the naked eye difficult. Since surgery is the common treatment for brain cancer, an accurate radical resection of the tumor leads to improved survival rates for patients. However, the identification of the tumor boundaries during surgery is challenging. Hyperspectral imaging is a non-contact, non-ionizing and non-invasive technique suitable for medical diagnosis. This study presents the development of a novel classification method taking into account the spatial and spectral characteristics of the hyperspectral images to help neurosurgeons to accurately determine the tumor boundaries in surgical-time during the resection, avoiding excessive excision of normal tissue or unintentionally leaving residual tumor. The algorithm proposed in this study to approach an efficient solution consists of a hybrid framework that combines both supervised and unsupervised machine learning methods. Firstly, a supervised pixel-wise classification using a Support Vector Machine classifier is performed. The generated classification map is spatially homogenized using a one-band representation of the HS cube, employing the Fixed Reference t-Stochastic Neighbors Embedding dimensional reduction algorithm, and performing a K-Nearest Neighbors filtering. The information generated by the supervised stage is combined with a segmentation map obtained via unsupervised clustering employing a Hierarchical K-Means algorithm. The fusion is performed using a majority voting approach that associates each cluster with a certain class. To evaluate the proposed approach, five hyperspectral images of surface of the brain affected by glioblastoma tumor in vivo from five different patients have been used. The final classification maps obtained have been analyzed and validated by specialists. These preliminary results are promising, obtaining an accurate delineation of the tumor area.
url http://europepmc.org/articles/PMC5858847?pdf=render
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