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Conventional and radiomic features to predict pathology in the preoperative assessment of anterior mediastinal masses

•Machine learning analysis of CT features could predict pathology of mediastinal masses.•The diagnostic performance to differentiate benign from malignant lesions was moderate.•The diagnostic performance to differentiate thymomas from thymic carcinomas was good.•The best performance was achieved whe...

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Published in:Lung cancer (Amsterdam, Netherlands) Netherlands), 2023-04, Vol.178, p.206-212
Main Authors: Mayoral, Maria, Pagano, Andrew M., Araujo-Filho, Jose Arimateia Batista, Zheng, Junting, Perez-Johnston, Rocio, Tan, Kay See, Gibbs, Peter, Fernandes Shepherd, Annemarie, Rimner, Andreas, Simone II, Charles B., Riely, Gregory, Huang, James, Ginsberg, Michelle S.
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container_title Lung cancer (Amsterdam, Netherlands)
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creator Mayoral, Maria
Pagano, Andrew M.
Araujo-Filho, Jose Arimateia Batista
Zheng, Junting
Perez-Johnston, Rocio
Tan, Kay See
Gibbs, Peter
Fernandes Shepherd, Annemarie
Rimner, Andreas
Simone II, Charles B.
Riely, Gregory
Huang, James
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description •Machine learning analysis of CT features could predict pathology of mediastinal masses.•The diagnostic performance to differentiate benign from malignant lesions was moderate.•The diagnostic performance to differentiate thymomas from thymic carcinomas was good.•The best performance was achieved when conventional and radiomic features were used.•This approach would benefit therapy planning and allow personalized medicine. The aim of this study was to differentiate benign from malignant tumors in the anterior mediastinum based on computed tomography (CT) imaging characteristics, which could be useful in preoperative planning. Additionally, our secondary aim was to differentiate thymoma from thymic carcinoma, which could guide the use of neoadjuvant therapy. Patients referred for thymectomy were retrospectively selected from our database. Twenty-five conventional characteristics were evaluated by visual analysis, and 101 radiomic features were extracted from each CT. In the step of model training, we applied support vector machines to train classification models. Model performance was assessed using the area under the receiver operating curves (AUC). Our final study sample comprised 239 patients, 59 (24.7 %) with benign mediastinal lesions and 180 (75.3 %) with malignant thymic tumors. Among the malignant masses, there were 140 (58.6 %) thymomas, 23 (9.6 %) thymic carcinomas, and 17 (7.1 %) non-thymic lesions. For the benign versus malignant differentiation, the model that integrated both conventional and radiomic features achieved the highest diagnostic performance (AUC = 0.715), in comparison to the conventional (AUC = 0.605) and radiomic-only (AUC = 0.678) models. Similarly, regarding thymoma versus thymic carcinoma differentiation, the model that integrated both conventional and radiomic features also achieved the highest diagnostic performance (AUC = 0.810), in comparison to the conventional (AUC = 0.558) and radiomic-only (AUC = 0.774) models. CT-based conventional and radiomic features with machine learning analysis could be useful for predicting pathologic diagnoses of anterior mediastinal masses. The diagnostic performance was moderate for differentiating benign from malignant lesions and good for differentiating thymomas from thymic carcinomas. The best diagnostic performance was achieved when both conventional and radiomic features were integrated in the machine learning algorithms.
doi_str_mv 10.1016/j.lungcan.2023.02.014
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The aim of this study was to differentiate benign from malignant tumors in the anterior mediastinum based on computed tomography (CT) imaging characteristics, which could be useful in preoperative planning. Additionally, our secondary aim was to differentiate thymoma from thymic carcinoma, which could guide the use of neoadjuvant therapy. Patients referred for thymectomy were retrospectively selected from our database. Twenty-five conventional characteristics were evaluated by visual analysis, and 101 radiomic features were extracted from each CT. In the step of model training, we applied support vector machines to train classification models. Model performance was assessed using the area under the receiver operating curves (AUC). Our final study sample comprised 239 patients, 59 (24.7 %) with benign mediastinal lesions and 180 (75.3 %) with malignant thymic tumors. Among the malignant masses, there were 140 (58.6 %) thymomas, 23 (9.6 %) thymic carcinomas, and 17 (7.1 %) non-thymic lesions. For the benign versus malignant differentiation, the model that integrated both conventional and radiomic features achieved the highest diagnostic performance (AUC = 0.715), in comparison to the conventional (AUC = 0.605) and radiomic-only (AUC = 0.678) models. Similarly, regarding thymoma versus thymic carcinoma differentiation, the model that integrated both conventional and radiomic features also achieved the highest diagnostic performance (AUC = 0.810), in comparison to the conventional (AUC = 0.558) and radiomic-only (AUC = 0.774) models. CT-based conventional and radiomic features with machine learning analysis could be useful for predicting pathologic diagnoses of anterior mediastinal masses. The diagnostic performance was moderate for differentiating benign from malignant lesions and good for differentiating thymomas from thymic carcinomas. 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The aim of this study was to differentiate benign from malignant tumors in the anterior mediastinum based on computed tomography (CT) imaging characteristics, which could be useful in preoperative planning. Additionally, our secondary aim was to differentiate thymoma from thymic carcinoma, which could guide the use of neoadjuvant therapy. Patients referred for thymectomy were retrospectively selected from our database. Twenty-five conventional characteristics were evaluated by visual analysis, and 101 radiomic features were extracted from each CT. In the step of model training, we applied support vector machines to train classification models. Model performance was assessed using the area under the receiver operating curves (AUC). Our final study sample comprised 239 patients, 59 (24.7 %) with benign mediastinal lesions and 180 (75.3 %) with malignant thymic tumors. Among the malignant masses, there were 140 (58.6 %) thymomas, 23 (9.6 %) thymic carcinomas, and 17 (7.1 %) non-thymic lesions. For the benign versus malignant differentiation, the model that integrated both conventional and radiomic features achieved the highest diagnostic performance (AUC = 0.715), in comparison to the conventional (AUC = 0.605) and radiomic-only (AUC = 0.678) models. Similarly, regarding thymoma versus thymic carcinoma differentiation, the model that integrated both conventional and radiomic features also achieved the highest diagnostic performance (AUC = 0.810), in comparison to the conventional (AUC = 0.558) and radiomic-only (AUC = 0.774) models. CT-based conventional and radiomic features with machine learning analysis could be useful for predicting pathologic diagnoses of anterior mediastinal masses. The diagnostic performance was moderate for differentiating benign from malignant lesions and good for differentiating thymomas from thymic carcinomas. 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source ScienceDirect Journals
subjects Artificial intelligence
Computed tomography
Humans
Lung Neoplasms
Machine learning
Radiomics
Retrospective Studies
Thymic epithelial tumors
Thymoma - diagnostic imaging
Thymoma - surgery
Thymus Neoplasms - diagnostic imaging
Thymus Neoplasms - surgery
Tomography, X-Ray Computed - methods
title Conventional and radiomic features to predict pathology in the preoperative assessment of anterior mediastinal masses
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