Buchbinder S S, Leichter I S, Bamberger P N, Novak B, Lederman R, Fields S, Behar D J
Department of Radiology, Montefiore Medical Center, Albert Einstein College of Medicine, Bronx, NY 10461, USA.
Acad Radiol. 1998 Nov;5(11):779-84. doi: 10.1016/s1076-6332(98)80262-6.
The authors prospectively tested the performance of a single numeric classifier constructed from a discriminative analysis classification system based on automatic computer-extracted quantitative features of clustered microcalcifications.
Mammographically detected clustered microcalcifications in patients who had been referred for biopsy were digitized at 600 dpi with an 8-bit gray scale. A software program was developed to extract features automatically from digitized images to describe the clustered microcalcifications quantitatively. The significance of these features was evaluated by using the Wilcoxon test, the Welch modified two-sample t test, and the two-sample Kolmogorov-Smirnov test. A discriminant analysis pattern recognition system was constructed to generate a single numeric classifier for each case, based on the extracted features. This system was trained on 137 archival known reference cases and its performance tested on 24 unknown prospective cases. The results were evaluated by using receiver operating characteristic analysis.
Thirty-seven extracted parameters demonstrated a statistically significant difference between the values for the benign and for the malignant lesions. Seven independent factors were selected to construct the classifier and to evaluate the unknown prospective cases. The area under the receiver operating characteristic curve for the prospective cases was 0.88.
A pattern recognition classifier based on quantitative features for clustered microcalcifications at screen-film mammography was found to perform satisfactorily. The software may be of value in the interpretation of mammographically detected microcalcifications.
作者前瞻性地测试了一种基于聚类微钙化的自动计算机提取定量特征的判别分析分类系统构建的单一数值分类器的性能。
对因活检而转诊患者的乳腺钼靶检测到的聚类微钙化进行数字化处理,采用600 dpi分辨率、8位灰度。开发了一个软件程序,用于从数字化图像中自动提取特征,以定量描述聚类微钙化。使用Wilcoxon检验、Welch修正两样本t检验和两样本Kolmogorov-Smirnov检验评估这些特征的显著性。构建了一个判别分析模式识别系统,基于提取的特征为每个病例生成一个单一数值分类器。该系统在137个存档已知参考病例上进行训练,并在24个未知前瞻性病例上测试其性能。使用受试者操作特征分析评估结果。
37个提取参数显示良性和恶性病变的值之间存在统计学显著差异。选择了7个独立因素来构建分类器并评估未知前瞻性病例。前瞻性病例的受试者操作特征曲线下面积为0.88。
发现基于乳腺钼靶片上聚类微钙化定量特征的模式识别分类器性能令人满意。该软件在解释乳腺钼靶检测到的微钙化方面可能具有价值。