论文标题

使用机器学习来自动乳房X光图图像分析

Using Machine Learning to Automate Mammogram Images Analysis

论文作者

Tang, Xuejiao, Zhang, Liuhua, Zhang, Wenbin, Huang, Xin, Iosifidis, Vasileios, Liu, Zhen, Zhang, Mingli, Messina, Enza, Zhang, Ji

论文摘要

乳腺癌是女性肺癌后与癌症相关死亡的第二大原因。据信,X射线乳腺X线摄影中乳腺癌的早期检测有效降低了死亡率。但是,仍然存在相对较高的假阳性率和乳房X线摄影技术低的特异性。在这项工作中,提出了一个计算机辅助自动乳房X线照片分析系统来处理乳房X线照片图像并自动将其区分为正常或癌性,由三个连续的图像处理,特征选择和图像分类阶段组成。在设计系统时,首先使用离散的小波变换(Daubechies 2,Daubechies 4和Biorthoconal 6.8)和傅立叶余弦变换首先用于解析乳房X线照片图像和提取统计特征。然后,实现了基于熵的特征选择方法,以减少功能数量。最后,采用了不同的模式识别方法(包括后传播网络,线性判别分析和幼稚的贝叶斯分类器)和投票分类方案。评估了每个分类策略的性能,以使用接收器操作曲线的敏感性,特异性和准确性以及一般性能。我们的方法在纽芬兰东部健康和加拿大拉布拉多的数据集上得到了验证。实验结果表明,提出的自动乳房X线照片分析系统可以有效地改善分类性能。

Breast cancer is the second leading cause of cancer-related death after lung cancer in women. Early detection of breast cancer in X-ray mammography is believed to have effectively reduced the mortality rate. However, a relatively high false positive rate and a low specificity in mammography technology still exist. In this work, a computer-aided automatic mammogram analysis system is proposed to process the mammogram images and automatically discriminate them as either normal or cancerous, consisting of three consecutive image processing, feature selection, and image classification stages. In designing the system, the discrete wavelet transforms (Daubechies 2, Daubechies 4, and Biorthogonal 6.8) and the Fourier cosine transform were first used to parse the mammogram images and extract statistical features. Then, an entropy-based feature selection method was implemented to reduce the number of features. Finally, different pattern recognition methods (including the Back-propagation Network, the Linear Discriminant Analysis, and the Naive Bayes Classifier) and a voting classification scheme were employed. The performance of each classification strategy was evaluated for sensitivity, specificity, and accuracy and for general performance using the Receiver Operating Curve. Our method is validated on the dataset from the Eastern Health in Newfoundland and Labrador of Canada. The experimental results demonstrated that the proposed automatic mammogram analysis system could effectively improve the classification performances.

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