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乳腺钼靶微钙化的计算机辅助检测:基于人工神经网络的模式识别

Computer-aided detection of mammographic microcalcifications: pattern recognition with an artificial neural network.

作者信息

Chan H P, Lo S C, Sahiner B, Lam K L, Helvie M A

机构信息

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

出版信息

Med Phys. 1995 Oct;22(10):1555-67. doi: 10.1118/1.597428.

Abstract

We are developing a computer program for automated detection of clustered microcalcifications on mammograms. In this study, we investigated the effectiveness of a signal classifier based on a convolution neural network (CNN) approach for improvement of the accuracy of the detection program. Fifty-two mammograms with clustered microcalcifications were selected from patient files. The clusters on the mammograms were ranked by experienced mammographers and divided into an obvious group, an average group, and a subtle group. The average and subtle groups were combined and randomly divided into two sets, each of which was used as training or test set alternately. The obvious group served as an additional independent test set. Regions of interest (ROIs) containing potential individual microcalcifications were first located on each mammogram by the automated detection program. The ROIs from one set of the mammograms were used to train CNNs of different configurations with a back-propagation method. The generalization capability of the trained CNNs was then examined by their accuracy of classifying the ROIs from the other set and from the obvious group. The classification accuracy of the CNNs for the ROIs was evaluated by receiver operating characteristic (ROC) analysis. It was found that CNNs of many different configurations can reach approximately the same performance level, with the area under the ROC curve (Az) of 0.9. We incorporated a trained CNN into the detection program and evaluated the improvement of the detection accuracy by the CNN using free response ROC analysis. Our results indicated that, over a wide range of true-positive (TP) cluster detection rate, the CNN classifier could reduce the number of false-positive (FP) clusters per image by more than 70%. For the obvious cases, at a TP rate of 100%, the FP rate reduced from 0.35 cluster per image to 0.1 cluster per image. For the average and subtle cases, the detection accuracy improved from a TP rate of 87% at an FP rate of four clusters per image to a TP rate of 90% at an FP rate of 1.5 clusters per image.

摘要

我们正在开发一种用于自动检测乳腺钼靶片中簇状微钙化的计算机程序。在本研究中,我们调查了基于卷积神经网络(CNN)方法的信号分类器对提高检测程序准确性的有效性。从患者档案中选取了52张含有簇状微钙化的乳腺钼靶片。乳腺钼靶片上的簇状微钙化由经验丰富的乳腺放射科医生进行分级,并分为明显组、中等组和不明显组。中等组和不明显组合并后随机分为两组,每组交替用作训练集或测试集。明显组用作额外的独立测试集。首先通过自动检测程序在每张乳腺钼靶片上定位包含潜在单个微钙化的感兴趣区域(ROI)。使用一组乳腺钼靶片的ROI通过反向传播方法训练不同配置的CNN。然后通过训练后的CNN对另一组和明显组的ROI进行分类的准确性来检验其泛化能力。通过接受者操作特征(ROC)分析评估CNN对ROI的分类准确性。发现许多不同配置的CNN可以达到大致相同的性能水平,ROC曲线下面积(Az)为0.9。我们将训练后的CNN纳入检测程序,并使用自由响应ROC分析评估CNN对检测准确性的提高。我们的结果表明,在广泛的真阳性(TP)簇状微钙化检测率范围内,CNN分类器可将每张图像的假阳性(FP)簇状微钙化数量减少70%以上。对于明显的病例,在TP率为100%时,FP率从每张图像0.35个簇状微钙化降至每张图像0.1个簇状微钙化。对于中等和不明显的病例,检测准确性从FP率为每张图像4个簇状微钙化时的TP率87%提高到FP率为每张图像1.5个簇状微钙化时的TP率90%。

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