Pixel N-grams for mammographic lesion classification

Pradnya Kulkarni, A. Stranieri, J. Ugon, Manish Mittal, S. Kulkarni
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引用次数: 1

Abstract

Automated classification algorithms have been applied to breast cancer diagnosis in order to improve the diagnostic accuracy and turnover time. However, classification accuracy, sensitivity and specificity could still be improved further. Moreover, reducing computational cost is another challenge as the number of images to be analyzed is typically large. In this paper, a novel Pixel N-gram approach inspired from character N-grams in the text retrieval context has been applied for mammographic lesion classification. The experiments on real world database demonstrate that the Pixel N-grams outperform the existing histogram as well as Haralick features with respect to classification accuracy as well as sensitivity. Effect of varying N and using various classifiers is also analyzed in this paper. Results show that optimum value of N is equal to 3 and MLP classifier performs better than SVM and KNN classifier using 3-gram features.
用于乳腺x线照相病变分类的像素n图
自动分类算法已被应用于乳腺癌的诊断,以提高诊断的准确性和周转时间。但分类的准确性、敏感性和特异性仍有待进一步提高。此外,减少计算成本是另一个挑战,因为要分析的图像数量通常很大。在本文中,一种新的像素n -图方法的灵感来自文本检索上下文的字符n -图已被应用于乳房x线摄影病变分类。在真实数据库上的实验表明,Pixel N-grams在分类精度和灵敏度方面都优于现有的直方图和Haralick特征。本文还分析了不同N和使用不同分类器的影响。结果表明,N的最优值为3,MLP分类器的性能优于使用3-gram特征的SVM和KNN分类器。
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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