Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases

ObjectiveTo develop a machine learning-based clinical and/or radiomics model for predicting the primary site of brain metastases using multiparametric magnetic resonance imaging (MRI).Materials and methodsA total of 202 patients (87 males, 115 females) with 439 brain metastases were retrospectively...

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Main Authors: W. L. Yang, X. R. Su, S. Li, K. Y. Zhao, Q. Yue
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-01-01
Series:Frontiers in Neurology
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Online Access:https://www.frontiersin.org/articles/10.3389/fneur.2024.1474461/full
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author W. L. Yang
W. L. Yang
X. R. Su
S. Li
K. Y. Zhao
Q. Yue
author_facet W. L. Yang
W. L. Yang
X. R. Su
S. Li
K. Y. Zhao
Q. Yue
author_sort W. L. Yang
collection DOAJ
description ObjectiveTo develop a machine learning-based clinical and/or radiomics model for predicting the primary site of brain metastases using multiparametric magnetic resonance imaging (MRI).Materials and methodsA total of 202 patients (87 males, 115 females) with 439 brain metastases were retrospectively included, divided into training sets (brain metastases of lung cancer [BMLC] n = 194, brain metastases of breast cancer [BMBC] n = 108, brain metastases of gastrointestinal tumor [BMGiT] n = 48) and test sets (BMLC n = 50, BMBC n = 27, BMGiT n = 12). A total of 3,404 quantitative image features were obtained through semi-automatic segmentation from MRI images (T1WI, T2WI, FLAIR, and T1-CE). Intra-class correlation coefficient (ICC) was used to examine segmentation stability between two radiologists. Radiomics features were selected using analysis of variance (ANOVA), recursive feature elimination (RFE), and Kruskal–Wallis test. Three machine learning classifiers were used to build the radiomics model, which was validated using five-fold cross-validation on the training set. A comprehensive model combining radiomics and clinical features was established, and the diagnostic performance was compared by area under the curve (AUC) and evaluated in an independent test set.ResultsThe radiomics model differentiated BMGiT from BMLC (13 features, AUC = 0.915 ± 0.071) or BMBC (20 features, AUC = 0.954 ± 0.064) with high accuracy, while the classification between BMLC and BMBC was unsatisfactory (11 features, AUC = 0.729 ± 0.114). However, the combined model incorporating radiomics and clinical features improved the predictive performance, with AUC values of 0.965 for BMLC vs. BMBC, 0.991 for BMLC vs. BMGiT, and 0.935 for BMBC vs. BMGiT.ConclusionThe machine learning-based radiomics model demonstrates significant potential in distinguishing the primary sites of brain metastases, and may assist screening of primary tumor when brain metastasis is suspected whereas history of primary tumor is absent.
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spelling doaj-art-b7e807a907af48c5a75abb00b6c579172025-01-06T05:13:13ZengFrontiers Media S.A.Frontiers in Neurology1664-22952025-01-011510.3389/fneur.2024.14744611474461Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastasesW. L. Yang0W. L. Yang1X. R. Su2S. Li3K. Y. Zhao4Q. Yue5Department of Radiology, West China Hospital, Sichuan University, Chengdu, Sichuan, ChinaDepartment of Radiology, Key Laboratory of Birth Defects and Related Diseases of Women and Children, Ministry of Education, West China Second University Hospital, Sichuan University, Chengdu, Sichuan, ChinaDepartment of Radiology, West China Hospital of Medicine, Huaxi MR Research Center (HMRRC), Chengdu, Sichuan, ChinaDepartment of Radiology, West China Hospital, Sichuan University, Chengdu, Sichuan, ChinaWest China Hospital of Sichuan University, Chengdu, Sichuan, ChinaDepartment of Radiology, West China Hospital, Sichuan University, Chengdu, Sichuan, ChinaObjectiveTo develop a machine learning-based clinical and/or radiomics model for predicting the primary site of brain metastases using multiparametric magnetic resonance imaging (MRI).Materials and methodsA total of 202 patients (87 males, 115 females) with 439 brain metastases were retrospectively included, divided into training sets (brain metastases of lung cancer [BMLC] n = 194, brain metastases of breast cancer [BMBC] n = 108, brain metastases of gastrointestinal tumor [BMGiT] n = 48) and test sets (BMLC n = 50, BMBC n = 27, BMGiT n = 12). A total of 3,404 quantitative image features were obtained through semi-automatic segmentation from MRI images (T1WI, T2WI, FLAIR, and T1-CE). Intra-class correlation coefficient (ICC) was used to examine segmentation stability between two radiologists. Radiomics features were selected using analysis of variance (ANOVA), recursive feature elimination (RFE), and Kruskal–Wallis test. Three machine learning classifiers were used to build the radiomics model, which was validated using five-fold cross-validation on the training set. A comprehensive model combining radiomics and clinical features was established, and the diagnostic performance was compared by area under the curve (AUC) and evaluated in an independent test set.ResultsThe radiomics model differentiated BMGiT from BMLC (13 features, AUC = 0.915 ± 0.071) or BMBC (20 features, AUC = 0.954 ± 0.064) with high accuracy, while the classification between BMLC and BMBC was unsatisfactory (11 features, AUC = 0.729 ± 0.114). However, the combined model incorporating radiomics and clinical features improved the predictive performance, with AUC values of 0.965 for BMLC vs. BMBC, 0.991 for BMLC vs. BMGiT, and 0.935 for BMBC vs. BMGiT.ConclusionThe machine learning-based radiomics model demonstrates significant potential in distinguishing the primary sites of brain metastases, and may assist screening of primary tumor when brain metastasis is suspected whereas history of primary tumor is absent.https://www.frontiersin.org/articles/10.3389/fneur.2024.1474461/fullradiomicsmachine learningmagnetic resonance imagingbrain metastasessupport vector machine (SVM)logistic regression (LR)
spellingShingle W. L. Yang
W. L. Yang
X. R. Su
S. Li
K. Y. Zhao
Q. Yue
Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
Frontiers in Neurology
radiomics
machine learning
magnetic resonance imaging
brain metastases
support vector machine (SVM)
logistic regression (LR)
title Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
title_full Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
title_fullStr Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
title_full_unstemmed Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
title_short Utilizing machine-learning techniques on MRI radiomics to identify primary tumors in brain metastases
title_sort utilizing machine learning techniques on mri radiomics to identify primary tumors in brain metastases
topic radiomics
machine learning
magnetic resonance imaging
brain metastases
support vector machine (SVM)
logistic regression (LR)
url https://www.frontiersin.org/articles/10.3389/fneur.2024.1474461/full
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