Background: Clinical management ranges from surveillance or curettage to wide resection for atypical to higher-grade cartilaginous tumours, respectively. Our aim was to investigate the performance of computed tomography (CT) radiomics-based machine learning for classification of atypical cartilaginous tumours and higher-grade chondrosarcomas of long bones.Methods: One-hundred-twenty patients with histology-proven lesions were retrospectively included. The training cohort consisted of 84 CT scans from centre 1 (n=55 G1 or atypical cartilaginous tumours; n=29 G2-G4 chondrosarcomas). The external test cohort consisted of the CT component of 36 positron emission tomography-CT scans from centre 2 (n=16 G1 or atypical cartilaginous tumours; n=20 G2-G4 chondrosarcomas). Bidimensional segmentation was performed on preoperative CT. Radiomic features were extracted. After dimensionality reduction and class balancing in centre 1, the performance of a machine-learning classifier (LogitBoost) was assessed on the training cohort using 10-fold cross-validation and on the external test cohort. In centre 2, its performance was compared with preoperative biopsy and an experienced radiologist using McNemar's test.Findings: The classifier had 81% (AUC=0.89) and 75% (AUC=0.78) accuracy in identifying the lesions in the training and external test cohorts, respectively. Specifically, its accuracy in classifying atypical cartilaginous tumours and higher-grade chondrosarcomas was 84% and 78% in the training cohort, and 81% and 70% in the external test cohort, respectively. Preoperative biopsy had 64% (AUC=0.66) accuracy (p=0.29). The radiologist had 81% accuracy (p=0.75).Interpretation: Machine learning showed good accuracy in classifying atypical and higher-grade cartilaginous tumours of long bones based on preoperative CT radiomic features. (C) 2021 The Author(s). Published by Elsevier B.V.

CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas / Gitto, Salvatore; Cuocolo, Renato; Annovazzi, Alessio; Anelli, Vincenzo; Acquasanta, Marzia; Cincotta, Antonino; Albano, Domenico; Chianca, Vito; Ferraresi, Virginia; Messina, Carmelo; Zoccali, Carmine; Armiraglio, Elisabetta; Parafioriti, Antonina; Sciuto, Rosa; Luzzati, Alessandro; Biagini, Roberto; Imbriaco, Massimo; Sconfienza, Luca Maria. - In: EBIOMEDICINE. - ISSN 2352-3964. - 68:(2021), pp. 1-9. [10.1016/j.ebiom.2021.103407]

CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas

Zoccali, Carmine;
2021

Abstract

Background: Clinical management ranges from surveillance or curettage to wide resection for atypical to higher-grade cartilaginous tumours, respectively. Our aim was to investigate the performance of computed tomography (CT) radiomics-based machine learning for classification of atypical cartilaginous tumours and higher-grade chondrosarcomas of long bones.Methods: One-hundred-twenty patients with histology-proven lesions were retrospectively included. The training cohort consisted of 84 CT scans from centre 1 (n=55 G1 or atypical cartilaginous tumours; n=29 G2-G4 chondrosarcomas). The external test cohort consisted of the CT component of 36 positron emission tomography-CT scans from centre 2 (n=16 G1 or atypical cartilaginous tumours; n=20 G2-G4 chondrosarcomas). Bidimensional segmentation was performed on preoperative CT. Radiomic features were extracted. After dimensionality reduction and class balancing in centre 1, the performance of a machine-learning classifier (LogitBoost) was assessed on the training cohort using 10-fold cross-validation and on the external test cohort. In centre 2, its performance was compared with preoperative biopsy and an experienced radiologist using McNemar's test.Findings: The classifier had 81% (AUC=0.89) and 75% (AUC=0.78) accuracy in identifying the lesions in the training and external test cohorts, respectively. Specifically, its accuracy in classifying atypical cartilaginous tumours and higher-grade chondrosarcomas was 84% and 78% in the training cohort, and 81% and 70% in the external test cohort, respectively. Preoperative biopsy had 64% (AUC=0.66) accuracy (p=0.29). The radiologist had 81% accuracy (p=0.75).Interpretation: Machine learning showed good accuracy in classifying atypical and higher-grade cartilaginous tumours of long bones based on preoperative CT radiomic features. (C) 2021 The Author(s). Published by Elsevier B.V.
2021
artificial intelligence; chondrosarcoma; machine learning; multidetector computed tomography
01 Pubblicazione su rivista::01a Articolo in rivista
CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas / Gitto, Salvatore; Cuocolo, Renato; Annovazzi, Alessio; Anelli, Vincenzo; Acquasanta, Marzia; Cincotta, Antonino; Albano, Domenico; Chianca, Vito; Ferraresi, Virginia; Messina, Carmelo; Zoccali, Carmine; Armiraglio, Elisabetta; Parafioriti, Antonina; Sciuto, Rosa; Luzzati, Alessandro; Biagini, Roberto; Imbriaco, Massimo; Sconfienza, Luca Maria. - In: EBIOMEDICINE. - ISSN 2352-3964. - 68:(2021), pp. 1-9. [10.1016/j.ebiom.2021.103407]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1709319
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