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信号强度和均匀性是否是在磁共振成像(MR)图像上区分良性和恶性软组织肿块的有用参数?通过纹理分析进行客观评估。

Are signal intensity and homogeneity useful parameters for distinguishing between benign and malignant soft tissue masses on MR images? Objective evaluation by means of texture analysis.

作者信息

Mayerhoefer Marius E, Breitenseher Martin, Amann Gabriele, Dominkus Martin

机构信息

Department of Radiology, Medical University of Vienna, Austria.

出版信息

Magn Reson Imaging. 2008 Nov;26(9):1316-22. doi: 10.1016/j.mri.2008.02.013. Epub 2008 May 2.

Abstract

OBJECTIVES

To objectively identify possible differences in the signal characteristics of benign and malignant soft tissue masses (STM) on magnetic resonance (MR) images by means of texture analysis and to determine the value of these differences for computer-assisted lesion classification.

METHOD

Fifty-eight patients with histologically proven STM (benign, n=30; malignant, n=28) were included. STM texture was analyzed on routine T1-weighted, T2-weighted and short tau inversion recovery (STIR) images obtained with heterogeneous acquisition protocols. Fisher coefficients (F) and the probability of classification error and average correlation coefficients (POE+ACC) were calculated to identify the most discriminative texture features for separation of benign and malignant STM. F>1 indicated adequate discriminative power of texture features. Based on the texture features, computer-assisted classification of the STM by means of k-nearest-neighbor (k-NN) and artificial neural network (ANN) classification was performed, and accuracy, sensitivity and specificity were calculated.

RESULTS

Discriminative power was only adequate for two texture features, derived from the gray-level histogram of the STIR images (first and 10th gray-level percentiles). Accordingly, the best results of STM classification were achieved using texture information from STIR images, with an accuracy of 75.0% (sensitivity, 71.4%; specificity, 78.3%) for the k-NN classifier, and an accuracy of 90.5% (sensitivity, 91.1%; specificity, 90.0%) for the ANN classifier.

CONCLUSION

Texture analysis revealed only small differences in the signal characteristics of benign and malignant STM on routine MR images. Computer-assisted pattern recognition algorithms may aid in the characterization of STM, but more data is necessary to confirm their clinical value.

摘要

目的

通过纹理分析客观识别良性和恶性软组织肿块(STM)在磁共振(MR)图像上的信号特征差异,并确定这些差异在计算机辅助病变分类中的价值。

方法

纳入58例经组织学证实的STM患者(良性,n = 30;恶性,n = 28)。在采用异质采集协议获得的常规T1加权、T2加权和短tau反转恢复(STIR)图像上分析STM纹理。计算费舍尔系数(F)、分类错误概率和平均相关系数(POE + ACC),以识别区分良性和恶性STM的最具判别力的纹理特征。F>1表明纹理特征具有足够的判别力。基于纹理特征,通过k近邻(k-NN)和人工神经网络(ANN)分类对STM进行计算机辅助分类,并计算准确性、敏感性和特异性。

结果

仅两种纹理特征具有足够的判别力,这两种特征源自STIR图像的灰度直方图(第一和第十灰度百分位数)。因此,使用STIR图像的纹理信息可实现STM分类的最佳结果,k-NN分类器的准确性为75.0%(敏感性,71.4%;特异性,78.3%),ANN分类器的准确性为90.5%(敏感性,91.1%;特异性,90.0%)。

结论

纹理分析显示在常规MR图像上良性和恶性STM的信号特征仅有微小差异。计算机辅助模式识别算法可能有助于STM的特征描述,但需要更多数据来证实其临床价值。

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