|Table of Contents|

The predictive value of CT-based radiomics model for overall survival of radiotherapy in esophageal cancer

Journal Of Modern Oncology[ISSN:1672-4992/CN:61-1415/R]

Issue:
2023 23
Page:
4388-4393
Research Field:
Publishing date:

Info

Title:
The predictive value of CT-based radiomics model for overall survival of radiotherapy in esophageal cancer
Author(s):
JI Ying1BO Huiming1YANG Yu1HUANG Liyou2
1.Department of Radiotherapy,Yancheng Second People's Hospital,Jiangsu Yancheng 224002,China;2.Department of Oncology,Suqian Hospital of Nanjing Drum Tower Hospital Group,Jiangsu Suqian 223800,China.
Keywords:
esophageal cancerradiotherapyradiomicsromographyX-ray computeoverall survival
PACS:
R735.1
DOI:
10.3969/j.issn.1672-4992.2023.23.017
Abstract:
Objective:To investigate the value of CT radiomics features in predicting the overall survival of esophageal cancer patients treated with radical radiotherapy.Methods:A retrospective study was conducted on the clinical,pathological,and imaging data of 133 esophageal cancer patients who received radical radiotherapy.A total of 395 radiomics features were extracted from patient's CT images.The optimal radiomics features were selected using the least absolute shrinkage and selection operator method,and a radiomics score(Radscore) was calculated.Univariate and multivariate analyses were performed to identify independent prognostic factors for esophageal cancer patients undergoing radical radiotherapy,and a Cox regression model was established.The performance of different prediction models was assessed using the C-index,decision curve analysis,and integrated discrimination improvement index.Results:Six optimal radiomics features were selected.Univariate and multivariate analyses revealed that Radscore,chemotherapy,and short-term radiotherapy efficacy were independent prognostic factors.The C-index of the radiomics model in the training and validation sets was 0.746 and 0.721,respectively,higher than that of the clinical model(0.651 and 0.643).Decision curve analysis showed that,within a threshold range of 0.1~0.7,the net clinical benefit of the radiomics model was higher than that of the clinical model.The integrated discrimination improvement index results indicated that the radiomics model outperformed the clinical model in terms of overall discriminative performance for 1-year,3-year,and 5-year overall survival by 11.3%,22.2%,and 45.6%,respectively.Conclusion:The CT radiomics model shows promise in predicting the overall survival of esophageal cancer patients undergoing radical radiotherapy.

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Last Update: 2023-10-31