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乳腺钼靶片上恶性与良性微钙化的计算机分类:使用人工神经网络的纹理分析

Computerized classification of malignant and benign microcalcifications on mammograms: texture analysis using an artificial neural network.

作者信息

Chan H P, Sahiner B, Petrick N, Helvie M A, Lam K L, Adler D D, Goodsitt M M

机构信息

Department of Radiology, University of Michigan, Ann Arbor 48109-0326, USA.

出版信息

Phys Med Biol. 1997 Mar;42(3):549-67. doi: 10.1088/0031-9155/42/3/008.

Abstract

We investigated the feasibility of using texture features extracted from mammograms to predict whether the presence of microcalcifications is associated with malignant or benign pathology. Eighty-six mammograms from 54 cases (26 benign and 28 malignant) were used as case samples. All lesions had been recommended for surgical biopsy by specialists in breast imaging. A region of interest (ROI) containing the microcalcifications was first corrected for the low-frequency background density variation. Spatial grey level dependence (SGLD) matrices at ten different pixel distances in both the axial and diagonal directions were constructed from the background-corrected ROI. Thirteen texture measures were extracted from each SGLD matrix. Using a stepwise feature selection technique, which maximized the separation of the two class distributions, subsets of texture features were selected from the multi-dimensional feature space. A backpropagation artificial neural network (ANN) classifier was trained and tested with a leave-one-case-out method to recognize the malignant or benign microcalcification clusters. The performance of the ANN was analysed with receiver operating characteristic (ROC) methodology. It was found that a subset of six texture features provided the highest classification accuracy among the feature sets studied. The ANN classifier achieved an area under the ROC curve of 0.88. By setting an appropriate decision threshold, 11 of the 28 benign cases were correctly identified (39% specificity) without missing any malignant cases (100% sensitivity) for patients who had undergone biopsy. This preliminary result indicates that computerized texture analysis can extract mammographic information that is not apparent by visual inspection. The computer-extracted texture information may be used to assist in mammographic interpretation, with the potential to reduce biopsies of benign cases and improve the positive predictive value of mammography.

摘要

我们研究了利用从乳腺钼靶片中提取的纹理特征来预测微钙化的存在是否与恶性或良性病理相关的可行性。来自54例患者(26例良性和28例恶性)的86张乳腺钼靶片用作病例样本。所有病变均由乳腺影像专家建议进行手术活检。首先对包含微钙化的感兴趣区域(ROI)进行低频背景密度变化校正。从背景校正后的ROI构建轴向和对角方向上十个不同像素距离处的空间灰度依赖(SGLD)矩阵。从每个SGLD矩阵中提取13个纹理度量。使用逐步特征选择技术,该技术最大化两类分布的分离,从多维特征空间中选择纹理特征子集。使用留一法对反向传播人工神经网络(ANN)分类器进行训练和测试,以识别恶性或良性微钙化簇。使用受试者操作特征(ROC)方法分析ANN的性能。发现在所研究的特征集中,六个纹理特征的子集提供了最高的分类准确率。ANN分类器在ROC曲线下的面积为0.88。通过设置适当的决策阈值,对于接受活检的患者,28例良性病例中有11例被正确识别(特异性为39%),且没有遗漏任何恶性病例(敏感性为100%)。这一初步结果表明,计算机化纹理分析可以提取视觉检查中不明显的乳腺钼靶信息。计算机提取的纹理信息可用于辅助乳腺钼靶解读,有可能减少良性病例的活检并提高乳腺钼靶的阳性预测值。

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