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A Comparative Study on Microcalcification Detection Methods with Posterior Probability Estimation based on Gaussian Mixture Models.基于高斯混合模型的后验概率估计的微钙化检测方法比较研究
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Relevance vector machine for automatic detection of clustered microcalcifications.用于自动检测簇状微钙化的相关向量机
IEEE Trans Med Imaging. 2005 Oct;24(10):1278-85. doi: 10.1109/TMI.2005.855435.
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A new kernel method for microcalcification detection: Spin Glass-Markov Random Fields.一种用于微钙化检测的新核方法:自旋玻璃-马尔可夫随机场。
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Noise equalization for detection of microcalcification clusters in direct digital mammogram images.用于在直接数字化乳腺钼靶图像中检测微钙化簇的噪声均衡化
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使用上下文敏感分类模型提高簇状微钙化检测的准确性。

Improving the accuracy in detection of clustered microcalcifications with a context-sensitive classification model.

作者信息

Wang Juan, Nishikawa Robert M, Yang Yongyi

机构信息

Department of Electrical and Computer Engineering, Medical Imaging Research Center, Illinois Institute of Technology, Chicago, Illinois 60616.

Department of Radiology, University of Pittsburgh, Pittsburgh, Pennsylvania 15213.

出版信息

Med Phys. 2016 Jan;43(1):159. doi: 10.1118/1.4938059.

DOI:10.1118/1.4938059
PMID:26745908
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4691250/
Abstract

PURPOSE

In computer-aided detection of microcalcifications (MCs), the detection accuracy is often compromised by frequent occurrence of false positives (FPs), which can be attributed to a number of factors, including imaging noise, inhomogeneity in tissue background, linear structures, and artifacts in mammograms. In this study, the authors investigated a unified classification approach for combating the adverse effects of these heterogeneous factors for accurate MC detection.

METHODS

To accommodate FPs caused by different factors in a mammogram image, the authors developed a classification model to which the input features were adapted according to the image context at a detection location. For this purpose, the input features were defined in two groups, of which one group was derived from the image intensity pattern in a local neighborhood of a detection location, and the other group was used to characterize how a MC is different from its structural background. Owing to the distinctive effect of linear structures in the detector response, the authors introduced a dummy variable into the unified classifier model, which allowed the input features to be adapted according to the image context at a detection location (i.e., presence or absence of linear structures). To suppress the effect of inhomogeneity in tissue background, the input features were extracted from different domains aimed for enhancing MCs in a mammogram image. To demonstrate the flexibility of the proposed approach, the authors implemented the unified classifier model by two widely used machine learning algorithms, namely, a support vector machine (SVM) classifier and an Adaboost classifier. In the experiment, the proposed approach was tested for two representative MC detectors in the literature [difference-of-Gaussians (DoG) detector and SVM detector]. The detection performance was assessed using free-response receiver operating characteristic (FROC) analysis on a set of 141 screen-film mammogram (SFM) images (66 cases) and a set of 188 full-field digital mammogram (FFDM) images (95 cases).

RESULTS

The FROC analysis results show that the proposed unified classification approach can significantly improve the detection accuracy of two MC detectors on both SFM and FFDM images. Despite the difference in performance between the two detectors, the unified classifiers can reduce their FP rate to a similar level in the output of the two detectors. In particular, with true-positive rate at 85%, the FP rate on SFM images for the DoG detector was reduced from 1.16 to 0.33 clusters/image (unified SVM) and 0.36 clusters/image (unified Adaboost), respectively; similarly, for the SVM detector, the FP rate was reduced from 0.45 clusters/image to 0.30 clusters/image (unified SVM) and 0.25 clusters/image (unified Adaboost), respectively. Similar FP reduction results were also achieved on FFDM images for the two MC detectors.

CONCLUSIONS

The proposed unified classification approach can be effective for discriminating MCs from FPs caused by different factors (such as MC-like noise patterns and linear structures) in MC detection. The framework is general and can be applicable for further improving the detection accuracy of existing MC detectors.

摘要

目的

在微钙化(MCs)的计算机辅助检测中,检测准确性常常因频繁出现的假阳性(FPs)而受到影响,这些假阳性可归因于多种因素,包括成像噪声、组织背景的不均匀性、线性结构以及乳腺X线照片中的伪影。在本研究中,作者探讨了一种统一分类方法,以对抗这些异质性因素对准确MC检测的不利影响。

方法

为了适应乳腺X线照片图像中不同因素导致的假阳性,作者开发了一种分类模型,其输入特征根据检测位置的图像上下文进行调整。为此,输入特征被定义为两组,其中一组源自检测位置局部邻域的图像强度模式,另一组用于表征MC与其结构背景的差异。由于线性结构在探测器响应中的独特影响,作者在统一分类器模型中引入了一个虚拟变量,这使得输入特征能够根据检测位置的图像上下文(即线性结构的存在与否)进行调整。为了抑制组织背景不均匀性的影响,从旨在增强乳腺X线照片图像中MC的不同域中提取输入特征。为了证明所提出方法的灵活性,作者通过两种广泛使用的机器学习算法实现了统一分类器模型,即支持向量机(SVM)分类器和Adaboost分类器。在实验中,针对文献中的两种代表性MC探测器[高斯差分(DoG)探测器和SVM探测器]对所提出的方法进行了测试。使用自由响应接收器操作特性(FROC)分析对一组141张屏-片乳腺X线照片(SFM)图像(66例)和一组188张全场数字化乳腺X线照片(FFDM)图像(95例)评估检测性能。

结果

FROC分析结果表明,所提出的统一分类方法能够显著提高两种MC探测器在SFM和FFDM图像上的检测准确性。尽管两种探测器的性能存在差异,但统一分类器可以将它们在两种探测器输出中的假阳性率降低到相似水平。特别是,在真阳性率为85%时,DoG探测器在SFM图像上的假阳性率分别从1.16降至0.33个簇/图像(统一SVM)和0.36个簇/图像(统一Adaboost);同样,对于SVM探测器,假阳性率分别从0.45个簇/图像降至0.30个簇/图像(统一SVM)和0.25个簇/图像(统一Adaboost)。在FFDM图像上,两种MC探测器也取得了类似的假阳性降低结果。

结论

所提出的统一分类方法在MC检测中能够有效地区分MC与由不同因素(如类MC噪声模式和线性结构)导致的假阳性。该框架具有通用性,可用于进一步提高现有MC探测器的检测准确性。