Inserm, U703, Université Nord de France, 152 rue du Docteur Yersin, 59120 Loos, CHRU Lille, France.
Med Phys. 2011 Jan;38(1):83-95. doi: 10.1118/1.3521470.
Computerized detection of prostate cancer on T2-weighted MR images.
The authors combined fractal and multifractal features to perform textural analysis of the images. The fractal dimension was computed using the Variance method; the multifractal spectrum was estimated by an adaptation of a multifractional Brownian motion model. Voxels were labeled as tumor/nontumor via nonlinear supervised classification. Two classification algorithms were tested: Support vector machine (SVM) and AdaBoost.
Experiments were performed on images from 17 patients. Ground truth was available from histological images. Detection and classification results (sensitivity, specificity) were (83%, 91%) and (85%, 93%) for SVM and AdaBoost, respectively.
Classification using the authors' model combining fractal and multifractal features was more accurate than classification using classical texture features (such as Haralick, wavelet, and Gabor filters). Moreover, the method was more robust against signal intensity variations. Although the method was only applied to T2 images, it could be extended to multispectral MR.
在 T2 加权磁共振图像上检测前列腺癌的计算机化方法。
作者结合分形和多重分形特征来进行图像的纹理分析。分形维数通过方差法计算;多重分形谱通过对多重分形布朗运动模型的改编来估计。体素通过非线性监督分类标记为肿瘤/非肿瘤。测试了两种分类算法:支持向量机(SVM)和 AdaBoost。
在 17 名患者的图像上进行了实验。从组织学图像中获得了真实情况。SVM 和 AdaBoost 的检测和分类结果(敏感性、特异性)分别为(83%,91%)和(85%,93%)。
使用作者的分形和多重分形特征组合模型进行分类比使用经典纹理特征(如 Haralick、小波和 Gabor 滤波器)进行分类更准确。此外,该方法对信号强度变化更具鲁棒性。尽管该方法仅应用于 T2 图像,但它可以扩展到多光谱磁共振成像。