Improved SMQT Algorithm and PCNN Model for Micro-calcification Clusters Detection in Mammograms

Lili Zhu, Yonggang Guo, Jianhui Tu, Yide Ma, Yanan Guo, Zhen Yang, Deyuan Wang
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Abstract

This paper proposes a novel combined method to improve micro-calcification clusters (MCs) detection accuracy in mammograms. The presented method includes three main steps: firstly, exponentiation operation and a new improved successive mean quantization transform (SMQT) algorithm are employed to enhance MCs; secondly, wavelet transform is introduced to obtain the significant MCs information; thirdly, pulse-coupled neural network (PCNN) model is used to detect MCs. In the experiment, totally 73 mammograms from MIAS database and 41 mammograms from JSMIT database are chosen to test the algorithm, and experimental results demonstrate that the algorithm presented in this paper is better than the other algorithms by yielding higher specificity of 98.0%, accuracy of 97.26%, and sensitivity of 95.65%. Besides, the method is verified on 20 mammograms from the People's Hospital of Gansu Province, and the detection results indicate that our algorithm can detect MCs correctly. Above all, the proposed method is simple and effective, and it can be considered to assist the radiologist for breast cancer diagnosis.
基于改进SMQT算法和PCNN模型的乳房x线微钙化簇检测
本文提出了一种提高乳房x线照片中微钙化簇(MCs)检测准确率的新型组合方法。该方法包括三个主要步骤:首先,采用幂运算和改进的连续平均量化变换(SMQT)算法增强MCs;其次,引入小波变换,获取有效的MCs信息;第三,采用脉冲耦合神经网络(PCNN)模型对MCs进行检测。实验中,选取MIAS数据库中的73张乳房x光片和JSMIT数据库中的41张乳房x光片对算法进行测试,实验结果表明,本文算法的特异性为98.0%,准确率为97.26%,灵敏度为95.65%,优于其他算法。并对甘肃省人民医院的20张乳房x光片进行了验证,检测结果表明该算法能够正确检测出MCs。综上所述,该方法简单有效,可考虑辅助放射科医师进行乳腺癌诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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