Cargando…

CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma

PURPOSE: MYCN amplification plays a critical role in defining high-risk subgroup of patients with neuroblastoma. We aimed to develop and validate the CT-based machine learning models for predicting MYCN amplification in pediatric abdominal neuroblastoma. METHODS: A total of 172 patients with MYCN am...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Xin, Wang, Haoru, Huang, Kaiping, Liu, Huan, Ding, Hao, Zhang, Li, Zhang, Ting, Yu, Wenqing, He, Ling
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8181422/
https://www.ncbi.nlm.nih.gov/pubmed/34109133
http://dx.doi.org/10.3389/fonc.2021.687884
_version_ 1783704092791537664
author Chen, Xin
Wang, Haoru
Huang, Kaiping
Liu, Huan
Ding, Hao
Zhang, Li
Zhang, Ting
Yu, Wenqing
He, Ling
author_facet Chen, Xin
Wang, Haoru
Huang, Kaiping
Liu, Huan
Ding, Hao
Zhang, Li
Zhang, Ting
Yu, Wenqing
He, Ling
author_sort Chen, Xin
collection PubMed
description PURPOSE: MYCN amplification plays a critical role in defining high-risk subgroup of patients with neuroblastoma. We aimed to develop and validate the CT-based machine learning models for predicting MYCN amplification in pediatric abdominal neuroblastoma. METHODS: A total of 172 patients with MYCN amplified (n = 47) and non-amplified (n = 125) were enrolled. The cohort was randomly stratified sampling into training and testing groups. Clinicopathological parameters and radiographic features were selected to construct the clinical predictive model. The regions of interest (ROIs) were segmented on three-phrase CT images to extract first-, second- and higher-order radiomics features. The ICCs, mRMR and LASSO methods were used for dimensionality reduction. The selected features from the training group were used to establish radiomics models using Logistic regression, Support Vector Machine (SVM), Bayes and Random Forest methods. The performance of four different radiomics models was evaluated according to the area under the receiver operator characteristic (ROC) curve (AUC), and then compared by Delong test. The nomogram incorporated of clinicopathological parameters, radiographic features and radiomics signature was developed through multivariate logistic regression. Finally, the predictive performance of the clinical model, radiomics models, and nomogram was evaluated in both training and testing groups. RESULTS: In total, 1,218 radiomics features were extracted from the ROIs on three-phrase CT images, and then 14 optimal features, including one original first-order feature and eight wavelet-transformed features and five LoG-transformed features, were identified and selected to construct the radiomics models. In the training group, the AUC of the Logistic, SVM, Bayes and Random Forest model was 0.940, 0.940, 0.780 and 0.927, respectively, and the corresponding AUC in the testing group was 0.909, 0.909, 0.729, 0.851, respectively. There was no significant difference among the Logistic, SVM and Random Forest model, but all better than the Bayes model (p <0.005). The predictive performance of the Logistic radiomics model based on three-phrase is similar to nomogram, but both better than the clinical model and radiomics model based on single venous phase. CONCLUSION: The CT-based radiomics signature is able to predict MYCN amplification of pediatric abdominal NB with high accuracy based on SVM, Logistic and Random Forest classifiers, while Bayes classifier yields lower predictive performance. When combined with clinical and radiographic qualitative features, the clinics-radiomics nomogram can improve the performance of predicting MYCN amplification.
format Online
Article
Text
id pubmed-8181422
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-81814222021-06-08 CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma Chen, Xin Wang, Haoru Huang, Kaiping Liu, Huan Ding, Hao Zhang, Li Zhang, Ting Yu, Wenqing He, Ling Front Oncol Oncology PURPOSE: MYCN amplification plays a critical role in defining high-risk subgroup of patients with neuroblastoma. We aimed to develop and validate the CT-based machine learning models for predicting MYCN amplification in pediatric abdominal neuroblastoma. METHODS: A total of 172 patients with MYCN amplified (n = 47) and non-amplified (n = 125) were enrolled. The cohort was randomly stratified sampling into training and testing groups. Clinicopathological parameters and radiographic features were selected to construct the clinical predictive model. The regions of interest (ROIs) were segmented on three-phrase CT images to extract first-, second- and higher-order radiomics features. The ICCs, mRMR and LASSO methods were used for dimensionality reduction. The selected features from the training group were used to establish radiomics models using Logistic regression, Support Vector Machine (SVM), Bayes and Random Forest methods. The performance of four different radiomics models was evaluated according to the area under the receiver operator characteristic (ROC) curve (AUC), and then compared by Delong test. The nomogram incorporated of clinicopathological parameters, radiographic features and radiomics signature was developed through multivariate logistic regression. Finally, the predictive performance of the clinical model, radiomics models, and nomogram was evaluated in both training and testing groups. RESULTS: In total, 1,218 radiomics features were extracted from the ROIs on three-phrase CT images, and then 14 optimal features, including one original first-order feature and eight wavelet-transformed features and five LoG-transformed features, were identified and selected to construct the radiomics models. In the training group, the AUC of the Logistic, SVM, Bayes and Random Forest model was 0.940, 0.940, 0.780 and 0.927, respectively, and the corresponding AUC in the testing group was 0.909, 0.909, 0.729, 0.851, respectively. There was no significant difference among the Logistic, SVM and Random Forest model, but all better than the Bayes model (p <0.005). The predictive performance of the Logistic radiomics model based on three-phrase is similar to nomogram, but both better than the clinical model and radiomics model based on single venous phase. CONCLUSION: The CT-based radiomics signature is able to predict MYCN amplification of pediatric abdominal NB with high accuracy based on SVM, Logistic and Random Forest classifiers, while Bayes classifier yields lower predictive performance. When combined with clinical and radiographic qualitative features, the clinics-radiomics nomogram can improve the performance of predicting MYCN amplification. Frontiers Media S.A. 2021-05-24 /pmc/articles/PMC8181422/ /pubmed/34109133 http://dx.doi.org/10.3389/fonc.2021.687884 Text en Copyright © 2021 Chen, Wang, Huang, Liu, Ding, Zhang, Zhang, Yu and He 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
Chen, Xin
Wang, Haoru
Huang, Kaiping
Liu, Huan
Ding, Hao
Zhang, Li
Zhang, Ting
Yu, Wenqing
He, Ling
CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title_full CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title_fullStr CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title_full_unstemmed CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title_short CT-Based Radiomics Signature With Machine Learning Predicts MYCN Amplification in Pediatric Abdominal Neuroblastoma
title_sort ct-based radiomics signature with machine learning predicts mycn amplification in pediatric abdominal neuroblastoma
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8181422/
https://www.ncbi.nlm.nih.gov/pubmed/34109133
http://dx.doi.org/10.3389/fonc.2021.687884
work_keys_str_mv AT chenxin ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT wanghaoru ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT huangkaiping ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT liuhuan ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT dinghao ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT zhangli ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT zhangting ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT yuwenqing ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma
AT heling ctbasedradiomicssignaturewithmachinelearningpredictsmycnamplificationinpediatricabdominalneuroblastoma