一种新的数字乳房x光图像分类特征约简框架

Hajar M. Alharbi, G. Falzon, P. Kwan
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引用次数: 3

摘要

在数字乳房x光图像中,正常乳腺组织和异常病变之间的视觉相似性使得利用自动检测特征进行乳腺癌计算机辅助诊断成为一项非常容易出错的任务。我们在本文中的贡献是一个新的特征约简框架,用于选择最具判别性的特征,从而实现效率和分类精度。我们的方法采用五种单独的特征排序方法,包括Fisher评分、最小冗余-最大相关性、relief-f、顺序前向特征选择和遗传算法,对提取的特征进行排序,并选择排名最高的特征来建立分类器。该方法使用神经网络分类器对医学应用数据库中检索的1100张乳房x光片进行分类,准确率为94.27%,灵敏度为98.36%,特异性为99.27%,与目前最先进的分类准确率93.11%相竞争。此外,我们证明了119个提取的特征中只有49个足以达到正常与异常分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel feature reduction framework for digital mammogram image classification
The visual similarity between normal breast tissues and abnormal lesions in digital mammogram images makes computer-aided diagnosis of breast cancer using automatically detected features a highly error-prone task. Our contribution in this paper is a novel feature reduction framework for selecting the most discriminative features that achieves both efficiency and classification accuracy. Our approach applies five individual feature-ranking methods including Fisher score, minimum redundancy-maximum relevance, relief-f, sequential forward feature selection, and genetic algorithm for sorting the extracted features and selecting the features with highest ranking to setup a classifier. Our method achieves an accuracy of 94.27% and a sensitivity of 98.36% with a specificity of 99.27% on a set of 1,100 mammogram patches taken from image retrieval in medical applications database using a neural network classifier, which competes with state-of-the-art classification accuracy 93.11%. Furthermore, we demonstrate that only 49 out of the 119 extracted features are sufficient to achieve the reported accuracy of normal vs. abnormal classification.
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