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Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system

PURPOSES: This study aimed to establish a predictive model of microvascular invasion (MVI) in hepatocellular carcinoma (HCC) by contrast-enhanced computed tomography (CT), which relied on a combination of machine learning approach and imaging features covering Liver Imaging and Reporting and Data Sy...

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Autores principales: Yang, Xue, Shao, Guoqing, Liu, Jiaojiao, Liu, Bin, Cai, Chao, Zeng, Daobing, Li, Hongjun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9686848/
https://www.ncbi.nlm.nih.gov/pubmed/36439486
http://dx.doi.org/10.3389/fonc.2022.1021570
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author Yang, Xue
Shao, Guoqing
Liu, Jiaojiao
Liu, Bin
Cai, Chao
Zeng, Daobing
Li, Hongjun
author_facet Yang, Xue
Shao, Guoqing
Liu, Jiaojiao
Liu, Bin
Cai, Chao
Zeng, Daobing
Li, Hongjun
author_sort Yang, Xue
collection PubMed
description PURPOSES: This study aimed to establish a predictive model of microvascular invasion (MVI) in hepatocellular carcinoma (HCC) by contrast-enhanced computed tomography (CT), which relied on a combination of machine learning approach and imaging features covering Liver Imaging and Reporting and Data System (LI-RADS) features. METHODS: The retrospective study included 279 patients with surgery who underwent preoperative enhanced CT. They were randomly allocated to training set, validation set, and test set (167 patients vs. 56 patients vs. 56 patients, respectively). Significant imaging findings for predicting MVI were identified through the Least Absolute Shrinkage and Selection Operator (LASSO) logistic regression method. Predictive models were performed by machine learning algorithm, support vector machine (SVM), in the training set and validation set, and evaluated in the test set. Further, a combined model adding clinical findings to the radiologic model was developed. Based on the LI-RADS category, subgroup analyses were conducted. RESULTS: We included 116 patients with MVI which were diagnosed through pathological confirmation. Six imaging features were selected about MVI prediction: four LI-RADS features (corona enhancement, enhancing capsule, non-rim aterial phase hyperehancement, tumor size) and two non-LI-RADS features (internal arteries, non-smooth tumor margin). The radiological feature with the best accuracy was corona enhancement followed by internal arteries and tumor size. The accuracies of the radiological model and combined model were 0.725–0.714 and 0.802–0.732 in the training set, validation set, and test set, respectively. In the LR-4/5 subgroup, a sensitivity of 100% and an NPV of 100% were obtained by the high-sensitivity threshold. A specificity of 100% and a PPV of 100% were acquired through the high specificity threshold in the LR-M subgroup. CONCLUSION: A combination of LI-RADS features and non-LI-RADS features and serum alpha-fetoprotein value could be applied as a preoperative biomarker for predicting MVI by the machine learning approach. Furthermore, its good performance in the subgroup by LI-RADS category may help optimize the management of HCC patients.
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spelling pubmed-96868482022-11-25 Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system Yang, Xue Shao, Guoqing Liu, Jiaojiao Liu, Bin Cai, Chao Zeng, Daobing Li, Hongjun Front Oncol Oncology PURPOSES: This study aimed to establish a predictive model of microvascular invasion (MVI) in hepatocellular carcinoma (HCC) by contrast-enhanced computed tomography (CT), which relied on a combination of machine learning approach and imaging features covering Liver Imaging and Reporting and Data System (LI-RADS) features. METHODS: The retrospective study included 279 patients with surgery who underwent preoperative enhanced CT. They were randomly allocated to training set, validation set, and test set (167 patients vs. 56 patients vs. 56 patients, respectively). Significant imaging findings for predicting MVI were identified through the Least Absolute Shrinkage and Selection Operator (LASSO) logistic regression method. Predictive models were performed by machine learning algorithm, support vector machine (SVM), in the training set and validation set, and evaluated in the test set. Further, a combined model adding clinical findings to the radiologic model was developed. Based on the LI-RADS category, subgroup analyses were conducted. RESULTS: We included 116 patients with MVI which were diagnosed through pathological confirmation. Six imaging features were selected about MVI prediction: four LI-RADS features (corona enhancement, enhancing capsule, non-rim aterial phase hyperehancement, tumor size) and two non-LI-RADS features (internal arteries, non-smooth tumor margin). The radiological feature with the best accuracy was corona enhancement followed by internal arteries and tumor size. The accuracies of the radiological model and combined model were 0.725–0.714 and 0.802–0.732 in the training set, validation set, and test set, respectively. In the LR-4/5 subgroup, a sensitivity of 100% and an NPV of 100% were obtained by the high-sensitivity threshold. A specificity of 100% and a PPV of 100% were acquired through the high specificity threshold in the LR-M subgroup. CONCLUSION: A combination of LI-RADS features and non-LI-RADS features and serum alpha-fetoprotein value could be applied as a preoperative biomarker for predicting MVI by the machine learning approach. Furthermore, its good performance in the subgroup by LI-RADS category may help optimize the management of HCC patients. Frontiers Media S.A. 2022-11-08 /pmc/articles/PMC9686848/ /pubmed/36439486 http://dx.doi.org/10.3389/fonc.2022.1021570 Text en Copyright © 2022 Yang, Shao, Liu, Liu, Cai, Zeng and Li https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Yang, Xue
Shao, Guoqing
Liu, Jiaojiao
Liu, Bin
Cai, Chao
Zeng, Daobing
Li, Hongjun
Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title_full Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title_fullStr Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title_full_unstemmed Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title_short Predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the LI-RADS system
title_sort predictive machine learning model for microvascular invasion identification in hepatocellular carcinoma based on the li-rads system
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9686848/
https://www.ncbi.nlm.nih.gov/pubmed/36439486
http://dx.doi.org/10.3389/fonc.2022.1021570
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