A Multi-view Deep Convolutional Neural Network for Reduction of False Positive Findings in Breast Cancer Screening

N. Derbel, Hedi Tmar, A. Mahfoudhi
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引用次数: 1

Abstract

Screening mammography is commonly the only imaging exam allowing early-stage detection of breast cancer. The early detection is, in fact, associated with a decreased breast cancer mortality rate amongst women. However, false positive recall is one of the main limitations of screening practices and it is often associated with unnecessary workups and biopsies. To tackle this issue and improve the medical image classification performance in order to carry out a screening/diagnosis task, we propose to use a multi-view deep convolutional neural network - the proposed network can extract discriminative features from Cranial Caudal (CC) and Medio-Lateral Oblique (MLO) views for each breast of a patient (a set of four images). We experiment it on an augmented-data based subset selected from the open Digital Database for Screening Mammography (DDSM) using 5400 images. We show how the proposed method can lead to a better performance than the state-of-the-art ones, especially in terms of prediction accuracy and false positive rate reduction. In fact, The results show statistically significant reduction in false findings without increasing false negative cases. Our method achieves a specificity rate of 98% and an accuracy rate of 98.88%. Index Terms–Mammography, Breast cancer diagnosis, False positive findings, Deep learning, Multi-view deep convolutional neural network.
用于减少乳腺癌筛查假阳性结果的多视图深度卷积神经网络
筛查性乳房x光检查通常是唯一能够早期发现乳腺癌的影像学检查。事实上,早期发现与降低妇女乳腺癌死亡率有关。然而,假阳性回忆是筛查实践的主要限制之一,它通常与不必要的检查和活检有关。为了解决这一问题并提高医学图像分类性能以进行筛查/诊断任务,我们提出使用多视图深度卷积神经网络-所提出的网络可以从患者的每个乳房(一组四张图像)的颅尾(CC)和中外侧斜(MLO)视图中提取判别特征。我们在一个基于增强数据的子集上进行了实验,该子集从开放的乳腺摄影筛查数字数据库(DDSM)中选择了5400张图像。我们展示了所提出的方法如何比最先进的方法具有更好的性能,特别是在预测精度和误报率降低方面。事实上,结果显示,统计上显著减少了假发现,而没有增加假阴性病例。该方法的特异性为98%,准确率为98.88%。关键词:乳房x光检查,乳腺癌诊断,假阳性结果,深度学习,多视图深度卷积神经网络。
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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