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Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis

The morphological changes suggesting peritoneal carcinomatosis are inconsistent and may be visible only at later stages of the disease. However, malignant ascites represents an early sign, and this fluid exhibits specific histological characteristics. This study aimed to quantify the fluid propertie...

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Autores principales: Csutak, Csaba, Ştefan, Paul-Andrei, Lupean, Roxana-Adelina, Lenghel, Lavinia Manuela, Mihu, Carmen Mihaela, Lebovici, Andrei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Association of Basic Medical Sciences of Federation of Bosnia and Herzegovina 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8292869/
https://www.ncbi.nlm.nih.gov/pubmed/33357213
http://dx.doi.org/10.17305/bjbms.2020.5048
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author Csutak, Csaba
Ştefan, Paul-Andrei
Lupean, Roxana-Adelina
Lenghel, Lavinia Manuela
Mihu, Carmen Mihaela
Lebovici, Andrei
author_facet Csutak, Csaba
Ştefan, Paul-Andrei
Lupean, Roxana-Adelina
Lenghel, Lavinia Manuela
Mihu, Carmen Mihaela
Lebovici, Andrei
author_sort Csutak, Csaba
collection PubMed
description The morphological changes suggesting peritoneal carcinomatosis are inconsistent and may be visible only at later stages of the disease. However, malignant ascites represents an early sign, and this fluid exhibits specific histological characteristics. This study aimed to quantify the fluid properties on computed tomography (CT) images of intraperitoneal effusions through texture analysis and evaluate its utility in differentiating benign from malignant collections. Fifty-two patients with histologically proven benign (n=29) and malignant (n=23) intraperitoneal effusions who underwent CT examinations were retrospectively included. Texture analysis of the fluid component was performed on the non-enhanced phase of each examination using dedicated software. Fisher and the probability of classification error and average correlation coefficients were used to select two sets of ten texture features, whose ability to distinguish between the two types of collections were tested using a k-nearest-neighbor classifier. Also, each of the selected feature’s diagnostic power was assessed using univariate and receiver operating characteristics analysis based on the calculation of the area under the curve. The k-nearest-neighbor classifier was able to distinguish between the two entities with 71.15% accuracy, 73.91% sensitivity, and 68.97% specificity. The highest-ranked texture parameter was Inverse Difference Moment (p=0.0023; area under the curve=0.748), based on which malignant collections could be diagnosed with 95.65% sensitivity and 44.83% specificity. Although successful, the texture assessment of benign and malignant collections is less effective in reflecting the cytological differences between the two groups.
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spelling pubmed-82928692021-08-01 Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis Csutak, Csaba Ştefan, Paul-Andrei Lupean, Roxana-Adelina Lenghel, Lavinia Manuela Mihu, Carmen Mihaela Lebovici, Andrei Bosn J Basic Med Sci Research Article The morphological changes suggesting peritoneal carcinomatosis are inconsistent and may be visible only at later stages of the disease. However, malignant ascites represents an early sign, and this fluid exhibits specific histological characteristics. This study aimed to quantify the fluid properties on computed tomography (CT) images of intraperitoneal effusions through texture analysis and evaluate its utility in differentiating benign from malignant collections. Fifty-two patients with histologically proven benign (n=29) and malignant (n=23) intraperitoneal effusions who underwent CT examinations were retrospectively included. Texture analysis of the fluid component was performed on the non-enhanced phase of each examination using dedicated software. Fisher and the probability of classification error and average correlation coefficients were used to select two sets of ten texture features, whose ability to distinguish between the two types of collections were tested using a k-nearest-neighbor classifier. Also, each of the selected feature’s diagnostic power was assessed using univariate and receiver operating characteristics analysis based on the calculation of the area under the curve. The k-nearest-neighbor classifier was able to distinguish between the two entities with 71.15% accuracy, 73.91% sensitivity, and 68.97% specificity. The highest-ranked texture parameter was Inverse Difference Moment (p=0.0023; area under the curve=0.748), based on which malignant collections could be diagnosed with 95.65% sensitivity and 44.83% specificity. Although successful, the texture assessment of benign and malignant collections is less effective in reflecting the cytological differences between the two groups. Association of Basic Medical Sciences of Federation of Bosnia and Herzegovina 2021-08 /pmc/articles/PMC8292869/ /pubmed/33357213 http://dx.doi.org/10.17305/bjbms.2020.5048 Text en Copyright: © The Author(s) (2021) https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License
spellingShingle Research Article
Csutak, Csaba
Ştefan, Paul-Andrei
Lupean, Roxana-Adelina
Lenghel, Lavinia Manuela
Mihu, Carmen Mihaela
Lebovici, Andrei
Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title_full Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title_fullStr Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title_full_unstemmed Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title_short Computed tomography in the diagnosis of intraperitoneal effusions: The role of texture analysis
title_sort computed tomography in the diagnosis of intraperitoneal effusions: the role of texture analysis
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8292869/
https://www.ncbi.nlm.nih.gov/pubmed/33357213
http://dx.doi.org/10.17305/bjbms.2020.5048
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