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Classification of breast tissue in mammograms using efficient coding

机译:使用有效编码在乳房X线照片中对乳房组织进行分类

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Background Female breast cancer is the major cause of death by cancer in western countries. Efforts in Computer Vision have been made in order to improve the diagnostic accuracy by radiologists. Some methods of lesion diagnosis in mammogram images were developed based in the technique of principal component analysis which has been used in efficient coding of signals and 2D Gabor wavelets used for computer vision applications and modeling biological vision. Methods In this work, we present a methodology that uses efficient coding along with linear discriminant analysis to distinguish between mass and non-mass from 5090 region of interest from mammograms. Results The results show that the best rates of success reached with Gabor wavelets and principal component analysis were 85.28% and 87.28%, respectively. In comparison, the model of efficient coding presented here reached up to 90.07%. Conclusions Altogether, the results presented demonstrate that independent component analysis performed successfully the efficient coding in order to discriminate mass from non-mass tissues. In addition, we have observed that LDA with ICA bases showed high predictive performance for some datasets and thus provide significant support for a more detailed clinical investigation.
机译:背景技术女性乳腺癌是西方国家癌症致死的主要原因。为了提高放射线医师的诊断精度,已经进行了计算机视觉的研究。基于主成分分析技术,开发了一些在乳房X光照片中进行病变诊断的方法,该技术已被用于信号的有效编码和二维Gabor小波,用于计算机视觉应用和生物视觉建模。方法在这项工作中,我们提出一种使用有效编码和线性判别分析的方法,以从乳房X线照片中区分5090个感兴趣区域的质量和非质量。结果结果表明,Gabor小波和主成分分析的最佳成功率分别为85.28%和87.28%。相比之下,这里介绍的有效编码模型达到了90.07%。结论总而言之,所提供的结果表明,独立成分分析成功地执行了有效的编码,以区分非肿块组织的质量。此外,我们已经观察到,基于ICA的LDA对于某些数据集显示出较高的预测性能,从而为更详细的临床研究提供了重要支持。

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