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Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer

SIMPLE SUMMARY: Computer-aided segmentation and machine learning added values of clinical parameters and diffusion-weighted imaging radiomics for predicting nodal metastasis in endometrial cancer, with a diagnostic performance superior to criteria based on lymph node size or apparent diffusion coeff...

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Autores principales: Yang, Lan-Yan, Siow, Tiing Yee, Lin, Yu-Chun, Wu, Ren-Chin, Lu, Hsin-Ying, Chiang, Hsin-Ju, Ho, Chih-Yi, Huang, Yu-Ting, Huang, Yen-Ling, Pan, Yu-Bin, Chao, Angel, Lai, Chyong-Huey, Lin, Gigin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8003367/
https://www.ncbi.nlm.nih.gov/pubmed/33808691
http://dx.doi.org/10.3390/cancers13061406
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author Yang, Lan-Yan
Siow, Tiing Yee
Lin, Yu-Chun
Wu, Ren-Chin
Lu, Hsin-Ying
Chiang, Hsin-Ju
Ho, Chih-Yi
Huang, Yu-Ting
Huang, Yen-Ling
Pan, Yu-Bin
Chao, Angel
Lai, Chyong-Huey
Lin, Gigin
author_facet Yang, Lan-Yan
Siow, Tiing Yee
Lin, Yu-Chun
Wu, Ren-Chin
Lu, Hsin-Ying
Chiang, Hsin-Ju
Ho, Chih-Yi
Huang, Yu-Ting
Huang, Yen-Ling
Pan, Yu-Bin
Chao, Angel
Lai, Chyong-Huey
Lin, Gigin
author_sort Yang, Lan-Yan
collection PubMed
description SIMPLE SUMMARY: Computer-aided segmentation and machine learning added values of clinical parameters and diffusion-weighted imaging radiomics for predicting nodal metastasis in endometrial cancer, with a diagnostic performance superior to criteria based on lymph node size or apparent diffusion coefficient. ABSTRACT: Precise risk stratification in lymphadenectomy is important for patients with endometrial cancer (EC), to balance the therapeutic benefit against the operation-related morbidity and mortality. We aimed to investigate added values of computer-aided segmentation and machine learning based on clinical parameters and diffusion-weighted imaging radiomics for predicting lymph node (LN) metastasis in EC. This prospective observational study included 236 women with EC (mean age ± standard deviation, 51.2 ± 11.6 years) who underwent magnetic resonance (MR) imaging before surgery during July 2010–July 2018, randomly split into training (n = 165) and test sets (n = 71). A decision-tree model was constructed based on mean apparent diffusion coefficient (ADC) value of the tumor (cutoff, 1.1 × 10(−3) mm(2)/s), skewness of the relative ADC value (cutoff, 1.2), short-axis diameter of LN (cutoff, 1.7 mm) and skewness ADC value of the LN (cutoff, 7.2 × 10(−2)), as well as tumor grade (1 vs. 2 and 3), and clinical tumor size (cutoff, 20 mm). The sensitivity and specificity of the model were 94% and 80% for the training set and 86%, 78% for the independent testing set, respectively. The areas under the receiver operating characteristics curve (AUCs) of the decision-tree was 0.85—significantly higher than the mean ADC model (AUC = 0.54) and LN short-axis diameter criteria (AUC = 0.62) (both p < 0.0001). We concluded that a combination of clinical and MR radiomics generates a prediction model for LN metastasis in EC, with diagnostic performance surpassing the conventional ADC and size criteria.
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spelling pubmed-80033672021-03-28 Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer Yang, Lan-Yan Siow, Tiing Yee Lin, Yu-Chun Wu, Ren-Chin Lu, Hsin-Ying Chiang, Hsin-Ju Ho, Chih-Yi Huang, Yu-Ting Huang, Yen-Ling Pan, Yu-Bin Chao, Angel Lai, Chyong-Huey Lin, Gigin Cancers (Basel) Article SIMPLE SUMMARY: Computer-aided segmentation and machine learning added values of clinical parameters and diffusion-weighted imaging radiomics for predicting nodal metastasis in endometrial cancer, with a diagnostic performance superior to criteria based on lymph node size or apparent diffusion coefficient. ABSTRACT: Precise risk stratification in lymphadenectomy is important for patients with endometrial cancer (EC), to balance the therapeutic benefit against the operation-related morbidity and mortality. We aimed to investigate added values of computer-aided segmentation and machine learning based on clinical parameters and diffusion-weighted imaging radiomics for predicting lymph node (LN) metastasis in EC. This prospective observational study included 236 women with EC (mean age ± standard deviation, 51.2 ± 11.6 years) who underwent magnetic resonance (MR) imaging before surgery during July 2010–July 2018, randomly split into training (n = 165) and test sets (n = 71). A decision-tree model was constructed based on mean apparent diffusion coefficient (ADC) value of the tumor (cutoff, 1.1 × 10(−3) mm(2)/s), skewness of the relative ADC value (cutoff, 1.2), short-axis diameter of LN (cutoff, 1.7 mm) and skewness ADC value of the LN (cutoff, 7.2 × 10(−2)), as well as tumor grade (1 vs. 2 and 3), and clinical tumor size (cutoff, 20 mm). The sensitivity and specificity of the model were 94% and 80% for the training set and 86%, 78% for the independent testing set, respectively. The areas under the receiver operating characteristics curve (AUCs) of the decision-tree was 0.85—significantly higher than the mean ADC model (AUC = 0.54) and LN short-axis diameter criteria (AUC = 0.62) (both p < 0.0001). We concluded that a combination of clinical and MR radiomics generates a prediction model for LN metastasis in EC, with diagnostic performance surpassing the conventional ADC and size criteria. MDPI 2021-03-19 /pmc/articles/PMC8003367/ /pubmed/33808691 http://dx.doi.org/10.3390/cancers13061406 Text en © 2021 by the authors. 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 (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Yang, Lan-Yan
Siow, Tiing Yee
Lin, Yu-Chun
Wu, Ren-Chin
Lu, Hsin-Ying
Chiang, Hsin-Ju
Ho, Chih-Yi
Huang, Yu-Ting
Huang, Yen-Ling
Pan, Yu-Bin
Chao, Angel
Lai, Chyong-Huey
Lin, Gigin
Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title_full Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title_fullStr Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title_full_unstemmed Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title_short Computer-Aided Segmentation and Machine Learning of Integrated Clinical and Diffusion-Weighted Imaging Parameters for Predicting Lymph Node Metastasis in Endometrial Cancer
title_sort computer-aided segmentation and machine learning of integrated clinical and diffusion-weighted imaging parameters for predicting lymph node metastasis in endometrial cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8003367/
https://www.ncbi.nlm.nih.gov/pubmed/33808691
http://dx.doi.org/10.3390/cancers13061406
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