Cargando…

Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma

OBJECTIVE: We aim to establish and validate computed tomography (CT)-based radiomics model for predicting TP53 status in patients with laryngeal squamous cell carcinoma (LSCC). METHODS: We divided all patients into a training set 1 (n=66) and a testing set 1 (n=30) to establish and validate radiomic...

Descripción completa

Detalles Bibliográficos
Autores principales: Tian, Ruxian, Li, Yumei, Jia, Chuanliang, Mou, Yakui, Zhang, Haicheng, Wu, Xinxin, Li, Jingjing, Yu, Guohua, Mao, Ning, Song, Xicheng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9095903/
https://www.ncbi.nlm.nih.gov/pubmed/35574352
http://dx.doi.org/10.3389/fonc.2022.823428
_version_ 1784705854427103232
author Tian, Ruxian
Li, Yumei
Jia, Chuanliang
Mou, Yakui
Zhang, Haicheng
Wu, Xinxin
Li, Jingjing
Yu, Guohua
Mao, Ning
Song, Xicheng
author_facet Tian, Ruxian
Li, Yumei
Jia, Chuanliang
Mou, Yakui
Zhang, Haicheng
Wu, Xinxin
Li, Jingjing
Yu, Guohua
Mao, Ning
Song, Xicheng
author_sort Tian, Ruxian
collection PubMed
description OBJECTIVE: We aim to establish and validate computed tomography (CT)-based radiomics model for predicting TP53 status in patients with laryngeal squamous cell carcinoma (LSCC). METHODS: We divided all patients into a training set 1 (n=66) and a testing set 1 (n=30) to establish and validate radiomics model to predict TP53. Radiomics features were selected by analysis of variance (ANOVA) and the least absolute shrinkage and selection operator (Lasso) regression analysis. Five radiomics models were established by using K-Nearest Neighbor, logistics regressive, linear-support vector machine (SVM), gaussian-SVM, and polynomial-SVM in training set 1. We also divided all patients into a training set 2 and a testing set 2 according to different CT equipment to establish and evaluate the stability of the radiomics models. RESULTS: After ANOVA and subsequent Lasso regression analysis, 22 radiomics features were selected to build the radiomics model in training set 1. The radiomics model based on linear-SVM has the best predictive performance of the five models, and the area under the receiver operating characteristic curve in training set 1 and testing set 1 were 0.831(95% confidence interval [CI] 0.692–0.970) and 0.797(95% CI 0.632–0.957) respectively. The specificity, sensitivity, and accuracy were 0.971(95% CI 0.834–0.999), 0.714(95% CI 0.535–0.848), and 0.843(95% CI 0.657–0.928) in training set 1 and 0.750(95% CI 0.500–0.938), 0.786(95% CI 0.571–1.000), and 0.667(95% CI 0.467–0.720) in testing set 1, respectively. In addition, the radiomics model also achieved stable prediction results even in different CT equipment. Decision curve analysis showed that the radiomics model for predicting TP53 status could benefit LSCC patients. CONCLUSION: We developed and validated a relatively optimal radiomics model for TP53 status prediction by trying five different machine learning methods in patients with LSCC. It shown great potential of radiomics features for predicting TP53 status preoperatively and guiding clinical treatment.
format Online
Article
Text
id pubmed-9095903
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-90959032022-05-13 Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma Tian, Ruxian Li, Yumei Jia, Chuanliang Mou, Yakui Zhang, Haicheng Wu, Xinxin Li, Jingjing Yu, Guohua Mao, Ning Song, Xicheng Front Oncol Oncology OBJECTIVE: We aim to establish and validate computed tomography (CT)-based radiomics model for predicting TP53 status in patients with laryngeal squamous cell carcinoma (LSCC). METHODS: We divided all patients into a training set 1 (n=66) and a testing set 1 (n=30) to establish and validate radiomics model to predict TP53. Radiomics features were selected by analysis of variance (ANOVA) and the least absolute shrinkage and selection operator (Lasso) regression analysis. Five radiomics models were established by using K-Nearest Neighbor, logistics regressive, linear-support vector machine (SVM), gaussian-SVM, and polynomial-SVM in training set 1. We also divided all patients into a training set 2 and a testing set 2 according to different CT equipment to establish and evaluate the stability of the radiomics models. RESULTS: After ANOVA and subsequent Lasso regression analysis, 22 radiomics features were selected to build the radiomics model in training set 1. The radiomics model based on linear-SVM has the best predictive performance of the five models, and the area under the receiver operating characteristic curve in training set 1 and testing set 1 were 0.831(95% confidence interval [CI] 0.692–0.970) and 0.797(95% CI 0.632–0.957) respectively. The specificity, sensitivity, and accuracy were 0.971(95% CI 0.834–0.999), 0.714(95% CI 0.535–0.848), and 0.843(95% CI 0.657–0.928) in training set 1 and 0.750(95% CI 0.500–0.938), 0.786(95% CI 0.571–1.000), and 0.667(95% CI 0.467–0.720) in testing set 1, respectively. In addition, the radiomics model also achieved stable prediction results even in different CT equipment. Decision curve analysis showed that the radiomics model for predicting TP53 status could benefit LSCC patients. CONCLUSION: We developed and validated a relatively optimal radiomics model for TP53 status prediction by trying five different machine learning methods in patients with LSCC. It shown great potential of radiomics features for predicting TP53 status preoperatively and guiding clinical treatment. Frontiers Media S.A. 2022-04-28 /pmc/articles/PMC9095903/ /pubmed/35574352 http://dx.doi.org/10.3389/fonc.2022.823428 Text en Copyright © 2022 Tian, Li, Jia, Mou, Zhang, Wu, Li, Yu, Mao and Song 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
Tian, Ruxian
Li, Yumei
Jia, Chuanliang
Mou, Yakui
Zhang, Haicheng
Wu, Xinxin
Li, Jingjing
Yu, Guohua
Mao, Ning
Song, Xicheng
Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title_full Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title_fullStr Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title_full_unstemmed Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title_short Radiomics Model for Predicting TP53 Status Using CT and Machine Learning Approach in Laryngeal Squamous Cell Carcinoma
title_sort radiomics model for predicting tp53 status using ct and machine learning approach in laryngeal squamous cell carcinoma
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9095903/
https://www.ncbi.nlm.nih.gov/pubmed/35574352
http://dx.doi.org/10.3389/fonc.2022.823428
work_keys_str_mv AT tianruxian radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT liyumei radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT jiachuanliang radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT mouyakui radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT zhanghaicheng radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT wuxinxin radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT lijingjing radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT yuguohua radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT maoning radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma
AT songxicheng radiomicsmodelforpredictingtp53statususingctandmachinelearningapproachinlaryngealsquamouscellcarcinoma