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CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery

The ability of texture analysis (TA) features to discriminate between different types of infected fluid collections, as seen on computed tomography (CT) images, has never been investigated. The study comprised forty patients who had pathological post-operative fluid collections following gastric can...

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Autores principales: Puia, Vlad Radu, Lupean, Roxana Adelina, Ștefan, Paul Andrei, Fetti, Alin Cornel, Vălean, Dan, Zaharie, Florin, Rusu, Ioana, Ciobanu, Lidia, Al-Hajjar, Nadim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9324114/
https://www.ncbi.nlm.nih.gov/pubmed/35885807
http://dx.doi.org/10.3390/healthcare10071280
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author Puia, Vlad Radu
Lupean, Roxana Adelina
Ștefan, Paul Andrei
Fetti, Alin Cornel
Vălean, Dan
Zaharie, Florin
Rusu, Ioana
Ciobanu, Lidia
Al-Hajjar, Nadim
author_facet Puia, Vlad Radu
Lupean, Roxana Adelina
Ștefan, Paul Andrei
Fetti, Alin Cornel
Vălean, Dan
Zaharie, Florin
Rusu, Ioana
Ciobanu, Lidia
Al-Hajjar, Nadim
author_sort Puia, Vlad Radu
collection PubMed
description The ability of texture analysis (TA) features to discriminate between different types of infected fluid collections, as seen on computed tomography (CT) images, has never been investigated. The study comprised forty patients who had pathological post-operative fluid collections following gastric cancer surgery and underwent CT scans. Patients were separated into six groups based on advanced microbiological analysis of the fluid: mono bacterial (n = 16)/multiple-bacterial (n = 24)/fungal (n = 14)/non-fungal (n = 26) infection and drug susceptibility tests into: multiple drug-resistance bacteria (n = 23) and non-resistant bacteria (n = 17). Dedicated software was used to extract the collections’ TA parameters. The parameters obtained were used to compare fungal and non-fungal infections, mono-bacterial and multiple-bacterial infections, and multiresistant and non-resistant infections. Univariate and receiver operating characteristic analyses and the calculation of sensitivity (Se) and specificity (Sp) were used to identify the best-suited parameters for distinguishing between the selected groups. TA parameters were able to differentiate between fungal and non-fungal collections (ATeta3, p = 0.02; 55% Se, 100% Sp), mono and multiple-bacterial (CN2D6AngScMom, p = 0.03); 80% Se, 64.29% Sp) and between multiresistant and non-multiresistant collections (CN2D6Contrast, p = 0.04; 100% Se, 50% Sp). CT-based TA can statistically differentiate between different types of infected fluid collections. However, it is unclear which of the fluids’ micro or macroscopic features are reflected by the texture parameters. In addition, this cohort is used as a training cohort for the imaging algorithm, with further validation cohorts being required to confirm the changes detected by the algorithm.
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spelling pubmed-93241142022-07-27 CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery Puia, Vlad Radu Lupean, Roxana Adelina Ștefan, Paul Andrei Fetti, Alin Cornel Vălean, Dan Zaharie, Florin Rusu, Ioana Ciobanu, Lidia Al-Hajjar, Nadim Healthcare (Basel) Article The ability of texture analysis (TA) features to discriminate between different types of infected fluid collections, as seen on computed tomography (CT) images, has never been investigated. The study comprised forty patients who had pathological post-operative fluid collections following gastric cancer surgery and underwent CT scans. Patients were separated into six groups based on advanced microbiological analysis of the fluid: mono bacterial (n = 16)/multiple-bacterial (n = 24)/fungal (n = 14)/non-fungal (n = 26) infection and drug susceptibility tests into: multiple drug-resistance bacteria (n = 23) and non-resistant bacteria (n = 17). Dedicated software was used to extract the collections’ TA parameters. The parameters obtained were used to compare fungal and non-fungal infections, mono-bacterial and multiple-bacterial infections, and multiresistant and non-resistant infections. Univariate and receiver operating characteristic analyses and the calculation of sensitivity (Se) and specificity (Sp) were used to identify the best-suited parameters for distinguishing between the selected groups. TA parameters were able to differentiate between fungal and non-fungal collections (ATeta3, p = 0.02; 55% Se, 100% Sp), mono and multiple-bacterial (CN2D6AngScMom, p = 0.03); 80% Se, 64.29% Sp) and between multiresistant and non-multiresistant collections (CN2D6Contrast, p = 0.04; 100% Se, 50% Sp). CT-based TA can statistically differentiate between different types of infected fluid collections. However, it is unclear which of the fluids’ micro or macroscopic features are reflected by the texture parameters. In addition, this cohort is used as a training cohort for the imaging algorithm, with further validation cohorts being required to confirm the changes detected by the algorithm. MDPI 2022-07-10 /pmc/articles/PMC9324114/ /pubmed/35885807 http://dx.doi.org/10.3390/healthcare10071280 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Puia, Vlad Radu
Lupean, Roxana Adelina
Ștefan, Paul Andrei
Fetti, Alin Cornel
Vălean, Dan
Zaharie, Florin
Rusu, Ioana
Ciobanu, Lidia
Al-Hajjar, Nadim
CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title_full CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title_fullStr CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title_full_unstemmed CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title_short CT-Based Radiomic Analysis May Predict Bacteriological Features of Infected Intraperitoneal Fluid Collections after Gastric Cancer Surgery
title_sort ct-based radiomic analysis may predict bacteriological features of infected intraperitoneal fluid collections after gastric cancer surgery
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9324114/
https://www.ncbi.nlm.nih.gov/pubmed/35885807
http://dx.doi.org/10.3390/healthcare10071280
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