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Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer

SIMPLE SUMMARY: Positron emission tomography is currently considered the non-invasive reference standard for determining whether lung cancer also affects thoracic lymph nodes (staging). However, not all patients can undergo this diagnostic procedure due to high costs, limited availability, and addit...

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Autores principales: Laqua, Fabian Christopher, Woznicki, Piotr, Bley, Thorsten A., Schöneck, Mirjam, Rinneburger, Miriam, Weisthoff, Mathilda, Schmidt, Matthias, Persigehl, Thorsten, Iuga, Andra-Iza, Baeßler, Bettina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10216416/
https://www.ncbi.nlm.nih.gov/pubmed/37345187
http://dx.doi.org/10.3390/cancers15102850
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author Laqua, Fabian Christopher
Woznicki, Piotr
Bley, Thorsten A.
Schöneck, Mirjam
Rinneburger, Miriam
Weisthoff, Mathilda
Schmidt, Matthias
Persigehl, Thorsten
Iuga, Andra-Iza
Baeßler, Bettina
author_facet Laqua, Fabian Christopher
Woznicki, Piotr
Bley, Thorsten A.
Schöneck, Mirjam
Rinneburger, Miriam
Weisthoff, Mathilda
Schmidt, Matthias
Persigehl, Thorsten
Iuga, Andra-Iza
Baeßler, Bettina
author_sort Laqua, Fabian Christopher
collection PubMed
description SIMPLE SUMMARY: Positron emission tomography is currently considered the non-invasive reference standard for determining whether lung cancer also affects thoracic lymph nodes (staging). However, not all patients can undergo this diagnostic procedure due to high costs, limited availability, and additional radiation exposure. This study aimed to predict the positron emission tomography result from traditional contrast-enhanced computed tomography and test new feature extraction strategies. As input, we compared traditional (hand-crafted) imaging biomarkers (radiomics) with novel features derived from pre-trained neural networks. This hybrid approach yielded better performance than using both feature sources alone. In conclusion, both traditional radiomics features and transfer-learning deep radiomics features provide relevant and complementary information for non-invasive lymph nodal staging in lung cancer. ABSTRACT: Objectives: Positron emission tomography (PET) is currently considered the non-invasive reference standard for lymph node (N-)staging in lung cancer. However, not all patients can undergo this diagnostic procedure due to high costs, limited availability, and additional radiation exposure. The purpose of this study was to predict the PET result from traditional contrast-enhanced computed tomography (CT) and to test different feature extraction strategies. Methods: In this study, 100 lung cancer patients underwent a contrast-enhanced (18)F-fluorodeoxyglucose (FDG) PET/CT scan between August 2012 and December 2019. We trained machine learning models to predict FDG uptake in the subsequent PET scan. Model inputs were composed of (i) traditional “hand-crafted” radiomics features from the segmented lymph nodes, (ii) deep features derived from a pretrained EfficientNet-CNN, and (iii) a hybrid approach combining (i) and (ii). Results: In total, 2734 lymph nodes [555 (20.3%) PET-positive] from 100 patients [49% female; mean age 65, SD: 14] with lung cancer (60% adenocarcinoma, 21% plate epithelial carcinoma, 8% small-cell lung cancer) were included in this study. The area under the receiver operating characteristic curve (AUC) ranged from 0.79 to 0.87, and the scaled Brier score (SBS) ranged from 16 to 36%. The random forest model (iii) yielded the best results [AUC 0.871 (0.865–0.878), SBS 35.8 (34.2–37.2)] and had significantly higher model performance than both approaches alone (AUC: p < 0.001, z = 8.8 and z = 22.4; SBS: p < 0.001, z = 11.4 and z = 26.6, against (i) and (ii), respectively). Conclusion: Both traditional radiomics features and transfer-learning deep radiomics features provide relevant and complementary information for non-invasive N-staging in lung cancer.
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spelling pubmed-102164162023-05-27 Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer Laqua, Fabian Christopher Woznicki, Piotr Bley, Thorsten A. Schöneck, Mirjam Rinneburger, Miriam Weisthoff, Mathilda Schmidt, Matthias Persigehl, Thorsten Iuga, Andra-Iza Baeßler, Bettina Cancers (Basel) Article SIMPLE SUMMARY: Positron emission tomography is currently considered the non-invasive reference standard for determining whether lung cancer also affects thoracic lymph nodes (staging). However, not all patients can undergo this diagnostic procedure due to high costs, limited availability, and additional radiation exposure. This study aimed to predict the positron emission tomography result from traditional contrast-enhanced computed tomography and test new feature extraction strategies. As input, we compared traditional (hand-crafted) imaging biomarkers (radiomics) with novel features derived from pre-trained neural networks. This hybrid approach yielded better performance than using both feature sources alone. In conclusion, both traditional radiomics features and transfer-learning deep radiomics features provide relevant and complementary information for non-invasive lymph nodal staging in lung cancer. ABSTRACT: Objectives: Positron emission tomography (PET) is currently considered the non-invasive reference standard for lymph node (N-)staging in lung cancer. However, not all patients can undergo this diagnostic procedure due to high costs, limited availability, and additional radiation exposure. The purpose of this study was to predict the PET result from traditional contrast-enhanced computed tomography (CT) and to test different feature extraction strategies. Methods: In this study, 100 lung cancer patients underwent a contrast-enhanced (18)F-fluorodeoxyglucose (FDG) PET/CT scan between August 2012 and December 2019. We trained machine learning models to predict FDG uptake in the subsequent PET scan. Model inputs were composed of (i) traditional “hand-crafted” radiomics features from the segmented lymph nodes, (ii) deep features derived from a pretrained EfficientNet-CNN, and (iii) a hybrid approach combining (i) and (ii). Results: In total, 2734 lymph nodes [555 (20.3%) PET-positive] from 100 patients [49% female; mean age 65, SD: 14] with lung cancer (60% adenocarcinoma, 21% plate epithelial carcinoma, 8% small-cell lung cancer) were included in this study. The area under the receiver operating characteristic curve (AUC) ranged from 0.79 to 0.87, and the scaled Brier score (SBS) ranged from 16 to 36%. The random forest model (iii) yielded the best results [AUC 0.871 (0.865–0.878), SBS 35.8 (34.2–37.2)] and had significantly higher model performance than both approaches alone (AUC: p < 0.001, z = 8.8 and z = 22.4; SBS: p < 0.001, z = 11.4 and z = 26.6, against (i) and (ii), respectively). Conclusion: Both traditional radiomics features and transfer-learning deep radiomics features provide relevant and complementary information for non-invasive N-staging in lung cancer. MDPI 2023-05-21 /pmc/articles/PMC10216416/ /pubmed/37345187 http://dx.doi.org/10.3390/cancers15102850 Text en © 2023 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
Laqua, Fabian Christopher
Woznicki, Piotr
Bley, Thorsten A.
Schöneck, Mirjam
Rinneburger, Miriam
Weisthoff, Mathilda
Schmidt, Matthias
Persigehl, Thorsten
Iuga, Andra-Iza
Baeßler, Bettina
Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title_full Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title_fullStr Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title_full_unstemmed Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title_short Transfer-Learning Deep Radiomics and Hand-Crafted Radiomics for Classifying Lymph Nodes from Contrast-Enhanced Computed Tomography in Lung Cancer
title_sort transfer-learning deep radiomics and hand-crafted radiomics for classifying lymph nodes from contrast-enhanced computed tomography in lung cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10216416/
https://www.ncbi.nlm.nih.gov/pubmed/37345187
http://dx.doi.org/10.3390/cancers15102850
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