MRI texture analysis based on 3D tumor measurement reflects the IDH1 mutations in gliomas – A preliminary study

To evaluate the differentiation efficiency of texture analysis of T1WI, T2WI and contrasted-enhanced T1WI MRI sequences in gliomas with and without IDH1 mutation based on entire tumor region. A total of 42 patients with histopathologically confirmed gliomas, including 21 patients carrying IDH1 mutat...

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Veröffentlicht in:European journal of radiology 2019-03, Vol.112, p.169-179
Hauptverfasser: Han, Liang, Wang, Siyu, Miao, Yanwei, Shen, Huicong, Guo, Yan, Xie, Lizhi, Shang, Yuqing, Dong, Junyi, Li, Xiaoxin, Wang, Weiwei, Song, Qingwei
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container_title European journal of radiology
container_volume 112
creator Han, Liang
Wang, Siyu
Miao, Yanwei
Shen, Huicong
Guo, Yan
Xie, Lizhi
Shang, Yuqing
Dong, Junyi
Li, Xiaoxin
Wang, Weiwei
Song, Qingwei
description To evaluate the differentiation efficiency of texture analysis of T1WI, T2WI and contrasted-enhanced T1WI MRI sequences in gliomas with and without IDH1 mutation based on entire tumor region. A total of 42 patients with histopathologically confirmed gliomas, including 21 patients carrying IDH1 mutation (IDH1mutation group) and 21 with wild-type IDH1 (IDH1wt group) were included in this study. The preoperative MRI and clinical data were collected. The regions of interest (ROIs) covering the entire tumor and edema were manually delineated on axial slices using O.K. (Omni Kinetics, GE Healthcare, China) software; and the histogram and GLCM features based on T1WI, T2WI and contrasted-enhanced T1WI sequences were automatically generated. Based on contrasted-enhanced T1WI features, the inertia resulted as the best feature for diagnosis, with the AUC of 0.844. Furthermore, the AUC for gliomas prediction with IDH1mutation was 0.800 for cluster prominence. IDH1-mutation was differentiated on T2WI with the highest AUC of 0.848, which corresponded to GLCM Entropy. After modeling, the accuracy of the contrasted-enhanced T1WI, T1WI, and T2WI features model was 0.952, 0.857, and 0.738, respectively. The AUC of Joint VariableT1WI+C for predicting IDH1mutation was 0.984, while the AUC of Joint VariableT1WI for predicting the same mutation was 0.927. The diagnostic efficiency of Joint VariableT2WI was also desirable. MRI texture analysis could be used as a new noninvasive method for identification of gliomas with IDH1 mutation. The present results show that the Joint Variable derived from conventional MR imaging histogram and GLCM features is suitable for precise detection of IDH1-mutated gliomas.
doi_str_mv 10.1016/j.ejrad.2019.01.025
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A total of 42 patients with histopathologically confirmed gliomas, including 21 patients carrying IDH1 mutation (IDH1mutation group) and 21 with wild-type IDH1 (IDH1wt group) were included in this study. The preoperative MRI and clinical data were collected. The regions of interest (ROIs) covering the entire tumor and edema were manually delineated on axial slices using O.K. (Omni Kinetics, GE Healthcare, China) software; and the histogram and GLCM features based on T1WI, T2WI and contrasted-enhanced T1WI sequences were automatically generated. Based on contrasted-enhanced T1WI features, the inertia resulted as the best feature for diagnosis, with the AUC of 0.844. Furthermore, the AUC for gliomas prediction with IDH1mutation was 0.800 for cluster prominence. IDH1-mutation was differentiated on T2WI with the highest AUC of 0.848, which corresponded to GLCM Entropy. 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subjects Gliomas
Isocitrate dehydrogenase 1
Magnetic resonance imaging
title MRI texture analysis based on 3D tumor measurement reflects the IDH1 mutations in gliomas – A preliminary study
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