使用级联深度学习和随机森林的乳房x线照片自动质量检测

Neeraj Dhungel, G. Carneiro, A. Bradley
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引用次数: 206

摘要

乳房x光片的质量检测作为质量分割和分类的预处理阶段起着至关重要的作用。乳房x光检查肿块被认为是一个具有挑战性的问题,因为它们的形状、大小、边界和质地变化很大,而且与周围乳房组织相比,它们的信噪比很低。在本文中,我们提出了一种使用深度学习和随机森林分类器级联检测乳房x光片肿块的新方法。第一阶段分类器由一个多尺度深度信念网络组成,该网络选择可疑区域,通过深度卷积神经网络的两级联进行进一步处理。在深度学习分析中幸存下来的区域,然后由随机森林分类器的两级级联处理,该级联使用从级联中选择的区域提取的形态和纹理特征。最后,在随机森林分类器级联中幸存的区域使用连接成分分析相结合,以产生最先进的结果。我们还证明了所提出的深度学习和随机森林分类器的级联在减少假阳性区域方面是有效的,同时保持了较高的真阳性检测率。我们在两个公开可用的数据集上测试了我们的质量检测系统:DDSM-BCRP和INbreast。我们的方法产生的最终质量检测在这些公开可用的数据集上取得了最佳结果,INbreast上每张图像1.2个假阳性时的真阳性率为0.96±0.03,DDSM-BCRP上每张图像4.8个假阳性时的真阳性率为0.75。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Mass Detection in Mammograms Using Cascaded Deep Learning and Random Forests
Mass detection from mammograms plays a crucial role as a pre- processing stage for mass segmentation and classification. The detection of masses from mammograms is considered to be a challenging problem due to their large variation in shape, size, boundary and texture and also because of their low signal to noise ratio compared to the surrounding breast tissue. In this paper, we present a novel approach for detecting masses in mammograms using a cascade of deep learning and random forest classifiers. The first stage classifier consists of a multi-scale deep belief network that selects suspicious regions to be further processed by a two-level cascade of deep convolutional neural networks. The regions that survive this deep learning analysis are then processed by a two-level cascade of random forest classifiers that use morphological and texture features extracted from regions selected along the cascade. Finally, regions that survive the cascade of random forest classifiers are combined using connected component analysis to produce state-of-the-art results. We also show that the proposed cascade of deep learning and random forest classifiers are effective in the reduction of false positive regions, while maintaining a high true positive detection rate. We tested our mass detection system on two publicly available datasets: DDSM-BCRP and INbreast. The final mass detection produced by our approach achieves the best results on these publicly available datasets with a true positive rate of 0.96 ± 0.03 at 1.2 false positive per image on INbreast and true positive rate of 0.75 at 4.8 false positive per image on DDSM-BCRP.
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