A multiparameter radiomic model for accurate prognostic prediction of glioma

Author:

Li Yan12ORCID,Bao Li13,Yang Caiwei1,Deng Zhenglong4,Zhang Xin5,Xu Pin6,Su Xiaorui2,Zeng Fanxin7ORCID,Mehrabi Mir Q. U.1,Yue Qiang2,Song Bin1,Gong Qiyong28,Lui Su1,Wu Min1ORCID

Affiliation:

1. Department of Radiology, Functional and Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital Sichuan University Chengdu China

2. Department of Radiology, Huaxi MR Research Center (HMRRC) West China Hospital of Sichuan University Chengdu China

3. Research Unit of Psychoradiology Chinese Academy of Medical Sciences Chengdu China

4. Department of Interventional Radiology Chengdu Second People's Hospital Chengdu China

5. Pharmaceutical Diagnostic Team GE Healthcare, Life Sciences Beijing China

6. Applied Nuclear Techniques in Geosciences Key Laboratory of Sichuan Province Chengdu University of Technology Chengdu China

7. Department of Clinic Medical Center Dazhou Central Hospital Dazhou China

8. Department of Radiology West China Xiamen Hospital of Sichuan University, Xiamen Fujian China

Abstract

AbstractAn accurate prediction of prognosis is important for clinical treatments of glioma. In this study, a multiparameter radiomic model is proposed for accurate prognostic prediction of glioma. Three kinds of region of interest were extracted from preoperative postcontrast T1‐weighted images and T2 fluid‐attenuated inversion recovery images acquired from 140 glioma patients. Radiomics score (Radscore) was calculated and the conventional image features and clinical molecular characteristics that may be related to progression‐free survival (PFS) were evaluated. Five uniparameter and various combinations of biparameter and multiparameter models based on above characteristics were built. The performance of these models was evaluated by concordance index (C index), and the nomogram of the multiparameter radiomic model was constructed. The results show that the proposed multiparameter radiomic model has a better prediction performance than other models. In the training and validation sets, the calibration curves of the multiparameter radiomic model for the 1‐, 2‐, and 3‐year PFS probability demonstrate a high consistence between predictions and observations. In conclusion, this study demonstrates that the multiparameter radiomic model based on Radscore, conventional image features and clinical molecular characteristics can improve the prediction accuracy of glioma prognosis, which could be informative for individualized treatments.

Funder

Chengdu Science and Technology Bureau

Publisher

Wiley

Reference45 articles.

1. EANO guidelines on the diagnosis and treatment of diffuse gliomas of adulthood

2. Diffuse Glioma Heterogeneity and Its Therapeutic Implications

3. Genetic and molecular epidemiology of adult diffuse glioma

4. The relative value of postoperative versus preoperative Karnofsky performance scale scores as a predictor of survival after surgical resection of glioblastoma multiforme;Chambless LB;JNO,2015

5. Prognostic and Predictive Biomarkers in Gliomas

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