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Published in: European Radiology 7/2018

01-07-2018 | Oncology

Genotype prediction of ATRX mutation in lower-grade gliomas using an MRI radiomics signature

Authors: Yiming Li, Xing Liu, Zenghui Qian, Zhiyan Sun, Kaibin Xu, Kai Wang, Xing Fan, Zhong Zhang, Shaowu Li, Yinyan Wang, Tao Jiang

Published in: European Radiology | Issue 7/2018

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Abstract

Objectives

To predict ATRX mutation status in patients with lower-grade gliomas using radiomic analysis.

Methods

Cancer Genome Atlas (TCGA) patients with lower-grade gliomas were randomly allocated into training (n = 63) and validation (n = 32) sets. An independent external-validation set (n = 91) was built based on the Chinese Genome Atlas (CGGA) database. After feature extraction, an ATRX-related signature was constructed. Subsequently, the radiomic signature was combined with a support vector machine to predict ATRX mutation status in training, validation and external-validation sets. Predictive performance was assessed by receiver operating characteristic curve analysis. Correlations between the selected features were also evaluated.

Results

Nine radiomic features were screened as an ATRX-associated radiomic signature of lower-grade gliomas based on the LASSO regression model. All nine radiomic features were texture-associated (e.g. sum average and variance). The predictive efficiencies measured by the area under the curve were 94.0 %, 92.5 % and 72.5 % in the training, validation and external-validation sets, respectively. The overall correlations between the nine radiomic features were low in both TCGA and CGGA databases.

Conclusions

Using radiomic analysis, we achieved efficient prediction of ATRX genotype in lower-grade gliomas, and our model was effective in two independent databases.

Key Points

• ATRX in lower-grade gliomas could be predicted using radiomic analysis.
• The LASSO regression algorithm and SVM performed well in radiomic analysis.
• Nine radiomic features were screened as an ATRX-predictive radiomic signature.
• The machine-learning model for ATRX-prediction was validated by an independent database.
Appendix
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Metadata
Title
Genotype prediction of ATRX mutation in lower-grade gliomas using an MRI radiomics signature
Authors
Yiming Li
Xing Liu
Zenghui Qian
Zhiyan Sun
Kaibin Xu
Kai Wang
Xing Fan
Zhong Zhang
Shaowu Li
Yinyan Wang
Tao Jiang
Publication date
01-07-2018
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 7/2018
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-017-5267-0

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