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Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs

OBJECTIVES: Aiming to improve the anatomical resolution of electrical impedance tomography images, we developed a fuzzy model based on electrical impedance tomography’s high temporal resolution and on the functional pulmonary signals of perfusion and ventilation. INTRODUCTION: Electrical impedance t...

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Detalles Bibliográficos
Autores principales: Tanaka, Harki, Ortega, Neli Regina Siqueira, Galizia, Mauricio Stanzione, Borges, João Batista, Amato, Marcelo Britto Passos
Formato: Texto
Lenguaje:English
Publicado: Hospital das Clínicas da Faculdade de Medicina da Universidade de São Paulo 2008
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2664243/
https://www.ncbi.nlm.nih.gov/pubmed/18568247
http://dx.doi.org/10.1590/S1807-59322008000300013
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author Tanaka, Harki
Ortega, Neli Regina Siqueira
Galizia, Mauricio Stanzione
Borges, João Batista
Amato, Marcelo Britto Passos
author_facet Tanaka, Harki
Ortega, Neli Regina Siqueira
Galizia, Mauricio Stanzione
Borges, João Batista
Amato, Marcelo Britto Passos
author_sort Tanaka, Harki
collection PubMed
description OBJECTIVES: Aiming to improve the anatomical resolution of electrical impedance tomography images, we developed a fuzzy model based on electrical impedance tomography’s high temporal resolution and on the functional pulmonary signals of perfusion and ventilation. INTRODUCTION: Electrical impedance tomography images carry information about both ventilation and perfusion. However, these images are difficult to interpret because of insufficient anatomical resolution, such that it becomes almost impossible to distinguish the heart from the lungs. METHODS: Electrical impedance tomography data from an experimental animal model were collected during normal ventilation and apnea while an injection of hypertonic saline was administered. The fuzzy model was elaborated in three parts: a modeling of the heart, the pulmonary ventilation map and the pulmonary perfusion map. Image segmentation was performed using a threshold method, and a ventilation/perfusion map was generated. RESULTS: Electrical impedance tomography images treated by the fuzzy model were compared with the hypertonic saline injection method and computed tomography scan images, presenting good results. The average accuracy index was 0.80 when comparing the fuzzy modeled lung maps and the computed tomography scan lung mask. The average ROC curve area comparing a saline injection image and a fuzzy modeled pulmonary perfusion image was 0.77. DISCUSSION: The innovative aspects of our work are the use of temporal information for the delineation of the heart structure and the use of two pulmonary functions for lung structure delineation. However, robustness of the method should be tested for the imaging of abnormal lung conditions. CONCLUSIONS: These results showed the adequacy of the fuzzy approach in treating the anatomical resolution uncertainties in electrical impedance tomography images.
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spelling pubmed-26642432009-05-13 Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs Tanaka, Harki Ortega, Neli Regina Siqueira Galizia, Mauricio Stanzione Borges, João Batista Amato, Marcelo Britto Passos Clinics Basic Research OBJECTIVES: Aiming to improve the anatomical resolution of electrical impedance tomography images, we developed a fuzzy model based on electrical impedance tomography’s high temporal resolution and on the functional pulmonary signals of perfusion and ventilation. INTRODUCTION: Electrical impedance tomography images carry information about both ventilation and perfusion. However, these images are difficult to interpret because of insufficient anatomical resolution, such that it becomes almost impossible to distinguish the heart from the lungs. METHODS: Electrical impedance tomography data from an experimental animal model were collected during normal ventilation and apnea while an injection of hypertonic saline was administered. The fuzzy model was elaborated in three parts: a modeling of the heart, the pulmonary ventilation map and the pulmonary perfusion map. Image segmentation was performed using a threshold method, and a ventilation/perfusion map was generated. RESULTS: Electrical impedance tomography images treated by the fuzzy model were compared with the hypertonic saline injection method and computed tomography scan images, presenting good results. The average accuracy index was 0.80 when comparing the fuzzy modeled lung maps and the computed tomography scan lung mask. The average ROC curve area comparing a saline injection image and a fuzzy modeled pulmonary perfusion image was 0.77. DISCUSSION: The innovative aspects of our work are the use of temporal information for the delineation of the heart structure and the use of two pulmonary functions for lung structure delineation. However, robustness of the method should be tested for the imaging of abnormal lung conditions. CONCLUSIONS: These results showed the adequacy of the fuzzy approach in treating the anatomical resolution uncertainties in electrical impedance tomography images. Hospital das Clínicas da Faculdade de Medicina da Universidade de São Paulo 2008-06 /pmc/articles/PMC2664243/ /pubmed/18568247 http://dx.doi.org/10.1590/S1807-59322008000300013 Text en Copyright © 2008 Hospital das Clínicas da FMUSP
spellingShingle Basic Research
Tanaka, Harki
Ortega, Neli Regina Siqueira
Galizia, Mauricio Stanzione
Borges, João Batista
Amato, Marcelo Britto Passos
Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title_full Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title_fullStr Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title_full_unstemmed Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title_short Fuzzy Modeling of Electrical Impedance Tomography Images of the Lungs
title_sort fuzzy modeling of electrical impedance tomography images of the lungs
topic Basic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2664243/
https://www.ncbi.nlm.nih.gov/pubmed/18568247
http://dx.doi.org/10.1590/S1807-59322008000300013
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