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Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis

Objective: The study evaluates quantitative ultrasound (QUS) texture features with machine learning (ML) to enhance the sensitivity of B-mode ultrasound (US) for the detection of fibrosis at an early stage and distinguish it from advanced fibrosis. Different ML methods were evaluated to determine th...

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Autores principales: Al-Hasani, Maryam, Sultan, Laith R., Sagreiya, Hersh, Cary, Theodore W., Karmacharya, Mrigendra B., Sehgal, Chandra M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9689042/
https://www.ncbi.nlm.nih.gov/pubmed/36359580
http://dx.doi.org/10.3390/diagnostics12112737
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author Al-Hasani, Maryam
Sultan, Laith R.
Sagreiya, Hersh
Cary, Theodore W.
Karmacharya, Mrigendra B.
Sehgal, Chandra M.
author_facet Al-Hasani, Maryam
Sultan, Laith R.
Sagreiya, Hersh
Cary, Theodore W.
Karmacharya, Mrigendra B.
Sehgal, Chandra M.
author_sort Al-Hasani, Maryam
collection PubMed
description Objective: The study evaluates quantitative ultrasound (QUS) texture features with machine learning (ML) to enhance the sensitivity of B-mode ultrasound (US) for the detection of fibrosis at an early stage and distinguish it from advanced fibrosis. Different ML methods were evaluated to determine the best diagnostic model. Methods: 233 B-mode images of liver lobes with early and advanced-stage fibrosis induced in a rat model were analyzed. Sixteen features describing liver texture were measured from regions of interest (ROIs) drawn on B-mode images. The texture features included a first-order statistics run length (RL) and gray-level co-occurrence matrix (GLCM). The features discriminating between early and advanced fibrosis were used to build diagnostic models with logistic regression (LR), naïve Bayes (nB), and multi-class perceptron (MLP). The diagnostic performances of the models were compared by ROC analysis using different train-test sampling approaches, including leave-one-out, 10-fold cross-validation, and varying percentage splits. METAVIR scoring was used for histological fibrosis staging of the liver. Results: 15 features showed a significant difference between the advanced and early liver fibrosis groups, p < 0.05. Among the individual features, first-order statics features led to the best classification with a sensitivity of 82.1–90.5% and a specificity of 87.1–89.8%. For the features combined, the diagnostic performances of nB and MLP were high, with the area under the ROC curve (AUC) approaching 0.95–0.96. LR also yielded high diagnostic performance (AUC = 0.91–0.92) but was lower than nB and MLP. The diagnostic variability between test-train trials, measured by the coefficient-of-variation (CV), was higher for LR (3–5%) than nB and MLP (1–2%). Conclusion: Quantitative ultrasound with machine learning differentiated early and advanced fibrosis. Ultrasound B-mode images contain a high level of information to enable accurate diagnosis with relatively straightforward machine learning methods like naïve Bayes and logistic regression. Implementing simple ML approaches with QUS features in clinical settings could reduce the user-dependent limitation of ultrasound in detecting early-stage liver fibrosis.
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spelling pubmed-96890422022-11-25 Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis Al-Hasani, Maryam Sultan, Laith R. Sagreiya, Hersh Cary, Theodore W. Karmacharya, Mrigendra B. Sehgal, Chandra M. Diagnostics (Basel) Article Objective: The study evaluates quantitative ultrasound (QUS) texture features with machine learning (ML) to enhance the sensitivity of B-mode ultrasound (US) for the detection of fibrosis at an early stage and distinguish it from advanced fibrosis. Different ML methods were evaluated to determine the best diagnostic model. Methods: 233 B-mode images of liver lobes with early and advanced-stage fibrosis induced in a rat model were analyzed. Sixteen features describing liver texture were measured from regions of interest (ROIs) drawn on B-mode images. The texture features included a first-order statistics run length (RL) and gray-level co-occurrence matrix (GLCM). The features discriminating between early and advanced fibrosis were used to build diagnostic models with logistic regression (LR), naïve Bayes (nB), and multi-class perceptron (MLP). The diagnostic performances of the models were compared by ROC analysis using different train-test sampling approaches, including leave-one-out, 10-fold cross-validation, and varying percentage splits. METAVIR scoring was used for histological fibrosis staging of the liver. Results: 15 features showed a significant difference between the advanced and early liver fibrosis groups, p < 0.05. Among the individual features, first-order statics features led to the best classification with a sensitivity of 82.1–90.5% and a specificity of 87.1–89.8%. For the features combined, the diagnostic performances of nB and MLP were high, with the area under the ROC curve (AUC) approaching 0.95–0.96. LR also yielded high diagnostic performance (AUC = 0.91–0.92) but was lower than nB and MLP. The diagnostic variability between test-train trials, measured by the coefficient-of-variation (CV), was higher for LR (3–5%) than nB and MLP (1–2%). Conclusion: Quantitative ultrasound with machine learning differentiated early and advanced fibrosis. Ultrasound B-mode images contain a high level of information to enable accurate diagnosis with relatively straightforward machine learning methods like naïve Bayes and logistic regression. Implementing simple ML approaches with QUS features in clinical settings could reduce the user-dependent limitation of ultrasound in detecting early-stage liver fibrosis. MDPI 2022-11-09 /pmc/articles/PMC9689042/ /pubmed/36359580 http://dx.doi.org/10.3390/diagnostics12112737 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
Al-Hasani, Maryam
Sultan, Laith R.
Sagreiya, Hersh
Cary, Theodore W.
Karmacharya, Mrigendra B.
Sehgal, Chandra M.
Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title_full Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title_fullStr Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title_full_unstemmed Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title_short Ultrasound Radiomics for the Detection of Early-Stage Liver Fibrosis
title_sort ultrasound radiomics for the detection of early-stage liver fibrosis
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9689042/
https://www.ncbi.nlm.nih.gov/pubmed/36359580
http://dx.doi.org/10.3390/diagnostics12112737
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