Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma

Abstract Background To investigate associations between lower-grade glioma (LGG) mRNA-based subtypes (R1-R4) and MR features. Methods mRNA-based subtyping was obtained from the LGG dataset in The Cancer Genome Atlas (TCGA). We identified matching patients (n = 145) in The Cancer Imaging Archive (TCI...

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Main Authors: Zhenyin Liu, Jing Zhang
Format: Article
Language:English
Published: BMC 2020-06-01
Series:BMC Neurology
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12883-020-01838-6
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spelling doaj-20070c5f304d43659d4cc90beed343d22020-11-25T03:28:20ZengBMCBMC Neurology1471-23772020-06-0120111010.1186/s12883-020-01838-6Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade gliomaZhenyin Liu0Jing Zhang1Department of Medical Imaging, Guangzhou Women and Children’s Medical Center, Guangzhou Medical UniversityDepartment of Medical Imaging, Guangzhou Women and Children’s Medical Center, Guangzhou Medical UniversityAbstract Background To investigate associations between lower-grade glioma (LGG) mRNA-based subtypes (R1-R4) and MR features. Methods mRNA-based subtyping was obtained from the LGG dataset in The Cancer Genome Atlas (TCGA). We identified matching patients (n = 145) in The Cancer Imaging Archive (TCIA) who underwent MR imaging. The associations between mRNA-based subtypes and MR features were assessed. Results In the TCGA-LGG dataset, patients with the R2 subtype had the shortest median OS months (P < 0.05). The time-dependent ROC for the R2 subtype was 0.78 for survival at 12 months, 0.76 for survival at 24 months, and 0.76 for survival at 36 months. In the TCIA-LGG dataset, 41 (23.7%) R1 subtype, 40 (23.1%) R2 subtype, 19 (11.0%) R3 subtype and 45 (26.0%) R4 subtype cases were identified. Multivariate analysis revealed that enhancing margin (ill-defined, OR: 9.985; P = 0.003) and T1 + C/T2 mismatch (yes, OR: 0.091; P = 0.023) were associated with the R1 subtype (AUC: 0.708). The average accuracy of the ten-fold cross validation was 71%. Proportion of contrast-enhanced (CE) tumour (> 5%, OR: 14.733; P < 0.001) and necrosis/cystic changes (yes, OR: 0.252; P = 0.009) were associated with the R2 subtype (AUC: 0.832). The average accuracy of the ten-fold cross validation was 82%. Haemorrhage (yes, OR: 8.55; P < 0.001) was positively associated with the R3 subtype (AUC: 0.689). The average accuracy of the ten-fold cross validation was 87%. Proportion of CE tumour (> 5%, OR: 0.14; P < 0.001) was negatively associated with the R4 subtype (AUC: 0.672). The average accuracy of the ten-fold cross validation was 71%. For the prediction of the R2 subtype, the nomogram showed good discrimination and calibration. Decision curve analysis demonstrated that prediction with the R2 model was clinically useful. Conclusions Patients with the R2 subtype had the worst prognosis. We demonstrated that MRI features can identify distinct LGG mRNA-based molecular subtypes.http://link.springer.com/article/10.1186/s12883-020-01838-6Logistic regressionLower-grade gliomasmRNA-based subtypesMR biomarkerTime-dependent ROC
collection DOAJ
language English
format Article
sources DOAJ
author Zhenyin Liu
Jing Zhang
spellingShingle Zhenyin Liu
Jing Zhang
Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
BMC Neurology
Logistic regression
Lower-grade gliomas
mRNA-based subtypes
MR biomarker
Time-dependent ROC
author_facet Zhenyin Liu
Jing Zhang
author_sort Zhenyin Liu
title Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
title_short Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
title_full Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
title_fullStr Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
title_full_unstemmed Radiogenomics correlation between MR imaging features and mRNA-based subtypes in lower-grade glioma
title_sort radiogenomics correlation between mr imaging features and mrna-based subtypes in lower-grade glioma
publisher BMC
series BMC Neurology
issn 1471-2377
publishDate 2020-06-01
description Abstract Background To investigate associations between lower-grade glioma (LGG) mRNA-based subtypes (R1-R4) and MR features. Methods mRNA-based subtyping was obtained from the LGG dataset in The Cancer Genome Atlas (TCGA). We identified matching patients (n = 145) in The Cancer Imaging Archive (TCIA) who underwent MR imaging. The associations between mRNA-based subtypes and MR features were assessed. Results In the TCGA-LGG dataset, patients with the R2 subtype had the shortest median OS months (P < 0.05). The time-dependent ROC for the R2 subtype was 0.78 for survival at 12 months, 0.76 for survival at 24 months, and 0.76 for survival at 36 months. In the TCIA-LGG dataset, 41 (23.7%) R1 subtype, 40 (23.1%) R2 subtype, 19 (11.0%) R3 subtype and 45 (26.0%) R4 subtype cases were identified. Multivariate analysis revealed that enhancing margin (ill-defined, OR: 9.985; P = 0.003) and T1 + C/T2 mismatch (yes, OR: 0.091; P = 0.023) were associated with the R1 subtype (AUC: 0.708). The average accuracy of the ten-fold cross validation was 71%. Proportion of contrast-enhanced (CE) tumour (> 5%, OR: 14.733; P < 0.001) and necrosis/cystic changes (yes, OR: 0.252; P = 0.009) were associated with the R2 subtype (AUC: 0.832). The average accuracy of the ten-fold cross validation was 82%. Haemorrhage (yes, OR: 8.55; P < 0.001) was positively associated with the R3 subtype (AUC: 0.689). The average accuracy of the ten-fold cross validation was 87%. Proportion of CE tumour (> 5%, OR: 0.14; P < 0.001) was negatively associated with the R4 subtype (AUC: 0.672). The average accuracy of the ten-fold cross validation was 71%. For the prediction of the R2 subtype, the nomogram showed good discrimination and calibration. Decision curve analysis demonstrated that prediction with the R2 model was clinically useful. Conclusions Patients with the R2 subtype had the worst prognosis. We demonstrated that MRI features can identify distinct LGG mRNA-based molecular subtypes.
topic Logistic regression
Lower-grade gliomas
mRNA-based subtypes
MR biomarker
Time-dependent ROC
url http://link.springer.com/article/10.1186/s12883-020-01838-6
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