Comparison of deep learned and texture features in mammographic mass classification

Guobin Li, Cory Thomas, R. Zwiggelaar
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Abstract

As deep learning models are increasingly applied in medical diagnostic assistance systems, this raises questions about ones ability to understand and interpret its decision-making process. In this work, using breast lesions from the Optimam Mammography Image Database (OMI-DB), we have explored whether deep learned features have similar predictive information as classical texture features. We trained a deep learning model for mass lesion classification and used Gradient-weighted Class Activation Mapping to produce a representation of deep learned features. Additional, classical texture features (e.g. energy) were extracted. Subsequently, we used the earth mover’s distance to investigate similarities between deep learned and texture features. The comparison identified that texture features such as mean, entropy and auto-correlation showed a strong similarity with the deep learned features and provided an indication of what the deep learning models might have used as information for its classification.
乳腺x线肿块分类中深度学习特征与纹理特征的比较
随着深度学习模型越来越多地应用于医疗诊断辅助系统,这就提出了人们理解和解释其决策过程的能力的问题。在这项工作中,我们利用Optimam乳房造影图像数据库(OMI-DB)中的乳腺病变,探讨了深度学习特征是否具有与经典纹理特征相似的预测信息。我们训练了一个用于肿块病变分类的深度学习模型,并使用梯度加权类激活映射来生成深度学习特征的表示。此外,提取经典纹理特征(如能量)。随后,我们使用推土机的距离来研究深度学习和纹理特征之间的相似性。对比发现,纹理特征(如均值、熵和自相关)与深度学习的特征具有很强的相似性,并提供了深度学习模型可能使用的分类信息的指示。
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