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Prediction of Glioblastoma Multiforme Response to Bevacizumab Treatment Using Diffusion and Perfusion Imaging

机译:利用扩散和灌注成像预测胶质母细胞瘤对贝伐单抗治疗的响应

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Response to Bevacizumab in Glioblastoma Multiforme (GBM) is not the same for all patients who receive this anti-angiogenic therapy. In this research, structural magnetic resonance images (MRI), Diffusion Tensor Images (DTI), and Dynamic Susceptibility Contrast (DSC) images are used to predict the response to treatment. Apparent Diffusion Coefficient (ADC) and Fractional Anisotropy (FA) maps are calculated from the DTI data. Relative peak height (rPH) and relative percentage of signal intensity to recovery (rPSR) are extracted using DSC images. Histograms are derived from the CE regions of the maps and statistical features are extracted from the histograms. Predictions are done using a logistic regression (LR) algorithm and the Leave One Out Cross Validation (LOOCV) method is applied to evaluate the quality of the prediction models. Using the DTI data, it is found that the median of FA and ADC are capable of predicting the response to treatment with accuracies of 81.8% and 72.7%, respectively (t-test, p-value=0.029, 0.027). Using the DSC images, it is found that rPH is a predictive feature with 87.5% accuracy (t-test, p-value=0.038). Putting the three features (median of ADC and FA and rPH) together, a fully (100%) accurate prediction is achieved (t-test, p-value=0.014). In conclusion, DTI and DSC images have rich information about cellularity and vascularity of the tumor regions in GBM patients and can be helpful in GBM treatment, especially for anti-angiogenic therapy.
机译:对于所有接受该抗血管生成治疗的患者,对胶质母细胞瘤的反应胶质母细胞瘤(GBM)不一样。在该研究中,使用结构磁共振图像(MRI),扩散张量图像(DTI)和动态敏感性对比(DSC)图像来预测对治疗的响应。表观扩散系数(ADC)和分数各向异性(FA)映射由DTI数据计算。使用DSC图像提取相对峰值高度(RPH)和信号强度的相对百分比对恢复(RPSR)。直方图来自地图的CE区域,并且从直方图中提取统计特征。使用Logistic回归(LR)算法进行预测,并且应用休留一个OUT交叉验证(LOOCV)方法来评估预测模型的质量。使用DTI数据,发现FA和ADC的中值能够分别预测响应81.8%和72.7%的治疗(T检验,P值= 0.029,0.027)。使用DSC图像,发现RPH是具有87.5%精度的预测功能(T检验,P值= 0.038)。将三个特征(ADC和FA和RPH中位数)放在一起,实现完全(100%)精确的预测(T检验,P值= 0.014)。总之,DTI和DSC图像具有有关GBM患者肿瘤区域的细胞性和血管性的丰富信息,并且可以有助于GBM治疗,特别是对于抗血管生成治疗。

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