학술논문

Multiparametric Radiogenomic Model to Predict Survival in Patients with Glioblastoma.
Document Type
Article
Source
Cancers. Feb2024, Vol. 16 Issue 3, p589. 12p.
Subject
*DIGITAL image processing
*SEQUENCE analysis
*GENETIC mutation
*STAINS & staining (Microscopy)
*MULTIVARIATE analysis
*AGE distribution
*ONE-way analysis of variance
*MULTIPLE regression analysis
*IMMUNOHISTOCHEMISTRY
*GLIOMAS
*MAGNETIC resonance imaging
*RETROSPECTIVE studies
*RADIOMICS
*CANCER patients
*DNA methylation
*SURVIVAL analysis (Biometry)
*GENOMICS
*TUMOR markers
*PREDICTION models
*SENSITIVITY & specificity (Statistics)
*DATA analysis software
*RECEIVER operating characteristic curves
Language
ISSN
2072-6694
Abstract
Simple Summary: The prognosis for patients with glioblastoma (GBM) remains dismal despite advances in tumor detection and treatment. The aim of our retrospective study was to develop a multiparametric model incorporating baseline MRI imaging, histopathological biomarkers, and demographic data to predict prognosis in patients with GBM. A training model was developed with 116 patients and validated with an external cohort of 40 patients. Three significant variables were identified as independent predictors of survival ≥ 18 months: radiomics, age, and MGMT status. Background: Clinical, histopathological, and imaging variables have been associated with prognosis in patients with glioblastoma (GBM). We aimed to develop a multiparametric radiogenomic model incorporating MRI texture features, demographic data, and histopathological tumor biomarkers to predict prognosis in patients with GBM. Methods: In this retrospective study, patients were included if they had confirmed diagnosis of GBM with histopathological biomarkers and pre-operative MRI. Tumor segmentation was performed, and texture features were extracted to develop a predictive radiomic model of survival (<18 months vs. ≥18 months) using multivariate analysis and Least Absolute Shrinkage and Selection Operator (LASSO) regularization to reduce the risk of overfitting. This radiomic model in combination with clinical and histopathological data was inserted into a backward stepwise logistic regression model to assess survival. The diagnostic performance of this model was reported for the training and external validation sets. Results: A total of 116 patients were included for model development and 40 patients for external testing validation. The diagnostic performance (AUC/sensitivity/specificity) of the radiomic model generated from seven texture features in determination of ≥18 months survival was 0.71/69.0/70.3. Three variables remained as independent predictors of survival, including radiomics (p = 0.004), age (p = 0.039), and MGMT status (p = 0.025). This model yielded diagnostic performance (AUC/sensitivity/specificity) of 0.77/81.0/66.0 (training) and 0.89/100/78.6 (testing) in determination of survival ≥ 18 months. Conclusions: Results show that our radiogenomic model generated from radiomic features at baseline MRI, age, and MGMT status can predict survival ≥ 18 months in patients with GBM. [ABSTRACT FROM AUTHOR]