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CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas
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 cartilagino...
Autores principales: | , , , , , , , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2021
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8170113/ https://www.ncbi.nlm.nih.gov/pubmed/34051442 http://dx.doi.org/10.1016/j.ebiom.2021.103407 |
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author | 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 |
author_facet | 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 |
author_sort | Gitto, Salvatore |
collection | PubMed |
description | 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. FUNDING: ESSR Young Researchers Grant. |
format | Online Article Text |
id | pubmed-8170113 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-81701132021-06-09 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 EBioMedicine Research Paper 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. FUNDING: ESSR Young Researchers Grant. Elsevier 2021-05-26 /pmc/articles/PMC8170113/ /pubmed/34051442 http://dx.doi.org/10.1016/j.ebiom.2021.103407 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Research Paper 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 CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title | CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title_full | CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title_fullStr | CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title_full_unstemmed | CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title_short | CT radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
title_sort | ct radiomics-based machine learning classification of atypical cartilaginous tumours and appendicular chondrosarcomas |
topic | Research Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8170113/ https://www.ncbi.nlm.nih.gov/pubmed/34051442 http://dx.doi.org/10.1016/j.ebiom.2021.103407 |
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