首页> 外文期刊>Medical Physics >Robust texture features for response monitoring of glioblastoma multiforme on T1-weighted and T2-FLAIR MR images: a preliminary investigation in terms of identification and segmentation.
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Robust texture features for response monitoring of glioblastoma multiforme on T1-weighted and T2-FLAIR MR images: a preliminary investigation in terms of identification and segmentation.

机译:强大的纹理特征,用于在T1加权和T2-FLAIR MR图像上监测多形性胶质母细胞瘤的反应:在识别和分割方面的初步研究。

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PURPOSE: Image texture has recently attracted much attention in providing quantitative features that are unique to various different tissue types, in particular, in MR images of the brain. Such image features may be useful for tumor response quantification. As a first step, one needs to establish if these features are sensitive to different tissues of clinical relevance. Here, a novel method of texture analysis based on the Hartley transform has been investigated and applied to MR images of glioblastoma multiforme (GBM). METHODS: Contrast-enhanced T1-weighted gradient-echo and T2-FLAIR spin-echo MR images of 27 GBM patients acquired prior to radiation therapy were available for analysis. Before computing texture features on these images, a novel image transformation was employed in the form of a power map computed from the localized Hartley transform of the image. Haralick statistical texture features were then computed based on the power map. This method was compared to the standard approach of obtaining texture features directly from the image. Twelve different features were computed on different resolution levels. On a regional resolution level, image texture features were identified that are able to correctly classify entire regions within T1-weighted and T2-FLAIR brain MR images of GBM patients into abnormal (containing contrast-enhancing GBM tumor) and brain tissue. Various metrics [area under the ROC curve (AUC), maximum accuracy, and Canberra distance] have been computed to quantify the usefulness of these features. On a local resolution level, it was investigated which of these features are able to provide a voxel-by-voxel enhancement that could be used for assisting the segmentation of the gross tumor volume on T1 images. The "gold standard" for this analysis was a gross tumor volume corresponding to the contrast-enhancing lesion visualized on T1-weighted images as segmented by a radiation oncologist. RESULTS: The Sum-mean and Variance features demonstrated the best performance overall. For the T1-weighted images, the identification performance of Sum-mean and Variance features computed from the power map was higher (AUC = 0.9959 and AUC = 0.9918, respectively) and with higher Canberra distances as compared to features computed directly from the images (AUC = 0.8930 and AUC = 0.9163, respectively). These results in T2-FLAIR images were even superior. The features computed from the power map showed an unequivocal identification (AUC = 1) with higher Canberra distances, whereas the performance of the features from the original images was slightly lower (AUC = 0.9739 and AUC = 0.9904, respectively). The same features computed on the power map of the T1-weighted images also provided superior enhancement in individual tumor voxels as compared to the features computed on the original images. CONCLUSIONS: The Sum-mean and Variance features are both useful for identifying and segmenting GBM tumors on localized Hartley transformed MR images.
机译:目的:图像纹理最近在提供定量特征方面引起了广泛的关注,这些定量特征是各种不同组织类型所特有的,特别是在大脑的MR图像中。这样的图像特征对于肿瘤反应定量可能是有用的。第一步,需要确定这些功能是否对临床相关的不同组织敏感。在这里,研究了一种基于Hartley变换的纹理分析的新方法,并将其应用于多形胶质母细胞瘤(GBM)的MR图像。方法:对比分析了放射治疗前获得的27例GBM患者的对比增强的T1加权梯度回波和T2-FLAIR自旋回波MR图像。在这些图像上计算纹理特征之前,采用从图像的局部Hartley变换计算出的幂图的形式进行新颖的图像变换。然后基于功率图计算Haralick统计纹理特征。将该方法与直接从图像中获取纹理特征的标准方法进行了比较。在不同的分辨率级别上计算了十二个不同的特征。在区域分辨率级别上,已确定图像纹理特征,能够正确地将GBM患者的T1加权和T2-FLAIR脑MR图像内的整个区域分类为异常(包含增强对比度的GBM肿瘤)和脑组织。已经计算出各种指标[ROC曲线下的面积(AUC),最大精度和堪培拉距离]以量化这些功能的有用性。在局部分辨率水平上,研究了这些特征中的哪些能够提供逐像素的增强,可用于协助在T1图像上分割总肿瘤体积。该分析的“黄金标准”是总肿瘤体积,其对应于由放射肿瘤学家分割的T1加权图像上可视化的对比增强病变。结果:Sum-mean和Variance功能显示出总体上最佳的性能。对于T1加权图像,与直接从图像中计算出的特征相比,从功率图计算出的Sum-mean和方差特征的识别性能更高(分别为AUC = 0.9959和AUC = 0.9918),并且堪培拉距离更高( AUC = 0.8930和AUC = 0.9163)。 T2-FLAIR图像中的这些结果甚至更好。从功率图计算出的特征显示出具有较高堪培拉距离的明确标识(AUC = 1),而来自原始图像的特征性能则稍低(分别为AUC = 0.9739和AUC = 0.9904)。与在原始图像上计算出的特征相比,在T1加权图像的功率图上计算出的相同特征还为单个肿瘤体素提供了更好的增强。结论:求和均值和方差特征对于在局部Hartley变换MR图像上识别和分割GBM肿瘤均有用。

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