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Multi-Modality Discrimination of Brain Glioma Grades Using Diffusion Tensor and Spectroscopic MRI

机译:使用扩散张量和光谱MRI的脑胶质瘤等级的多模式区分

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Recent investigations have shown that diffusion tensor magnetic resonance imaging (DT-MRI) and magnetic resonance spectroscopic imaging (MRSI) provide useful information in diagnosis brain tumor glioma. Therefore, various software have been developed and patented which enable users to overlay multimodal MRI such as DTI-MRI and MRSI for more accurate localization of abnormal lesions. The purpose of this work was to further investigate the potential of these modalities in diagnosis of brain glioma tumors. This paper integrates DTI and MRSI features for differentiating high grade from low grade brain glioma tumors. Three DTI and two MRSI features are extracted from twelve histologically proven brain glioma patients in pre-treatment status. Artificial Neural Network (ANN) classifiers are developed to estimate tumor grades by optimizing Receiver Operating Characteristic (ROC) curves. Our study shows that all DTI and MRSI features are statistically significantly different (P < 0.05) in high grade versus low grade tumors. Low grade tumors have higher mean diffusivity (MD) (1.43±0.21) and lower fractional anisotropy (FA) (0.14±0.04) and relative anisotropy (RA) (0.11±0.03) compared with high grade tumors (1.29±0.47, 0.18±0.12, 0.15±0.10, respectively). Also, Cho/Cr and Cho/NAA ratios of high grade tumors (2.27±1.24, 2.16±1.96) are higher than those of low grade tumors (1.29±0.44, 0.88±0.31). The proposed ANN classifier using FA, RA, Cho/Cr, and Cho/NAA features generates the largest volume under the ROC (the highest accuracy), illustrating that the proposed integration of DTI and MRSI features improves accuracy of tumor grade estimation.
机译:最近的研究表明,弥散张量磁共振成像(DT-MRI)和磁共振波谱成像(MRSI)为诊断脑肿瘤神经胶质瘤提供了有用的信息。因此,已经开发了各种软件并申请了专利,这些软件使用户能够叠加多模态MRI(例如DTI-MRI和MRSI)以更准确地定位异常病变。这项工作的目的是进一步研究这些方式在脑胶质瘤肿瘤诊断中的潜力。本文整合了DTI和MRSI功能,以区分高等级和低等级的脑胶质瘤。从十二个经过组织学证实的处于治疗前状态的脑胶质瘤患者中提取了三个DTI和两个MRSI特征。开发了人工神经网络(ANN)分类器,以通过优化接收器操作特征(ROC)曲线来估计肿瘤等级。我们的研究表明,高级别和低级别肿瘤的所有DTI和MRSI特征在统计学上均存在显着差异(P <0.05)。与高等级肿瘤(1.29±0.47,0.18±)相比,低等级肿瘤的平均扩散率(MD)(1.43±0.21)高,分数各向异性(FA)(0.14±0.04)和相对各向异性(RA)(0.11±0.03)低分别为0.12、0.15±0.10)。而且,高等级肿瘤的Cho / Cr和Cho / NAA比(2.27±1.24,2.16±1.96)高于低等级肿瘤(1.29±0.44,0.88±0.31)。拟议中的使用FA,RA,Cho / Cr和Cho / NAA特征的ANN分类器在ROC下产生了最大的体积(最高精度),这说明DTI和MRSI特征的拟议整合提高了肿瘤分级估计的准确性。

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