The Effect of Mammogram Preprocessing on Microcalcification Detection with Convolutional Neural Networks

Agnese Marchesi, A. Bria, C. Marrocco, M. Molinara, J. Mordang, F. Tortorella, N. Karssemeijer
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引用次数: 9

Abstract

Microcalcifications are an early mammographic indicator of breast cancer. To assist screening radiologists in reading mammograms, machine learning techniques have been developed for the automated detection of microcalcifications. In the last few years, Convolutional Neural Networks (CNNs) have achieved state-of-the-art performance in many computer vision and medical image analysis applications. A key step in CNN-based detection is image preprocessing, including brightness and contrast variations. In this work, we investigate the influence of preprocessing of digital mammograms on the microcalcification detection performance of two CNNs inspired by the popular AlexNet and VGGnet. We tested two preprocessing methods commonly applied to unprocessed raw digital mammograms: (i) the logarithmic transformation adopted by different manufacturers for the presentation of the image to the radiologists; and (ii) the square-root of image intensity that stabilizes the intensity-dependent noise present in the mammogram. Experiments were performed on 1,066 mammograms acquired with GE Senographe systems. Both preprocessing methods yielded statistically significantly better microcalcification detection performance. Results of the square-root transform were superior to those obtained with the log transform.
乳房x光片预处理对卷积神经网络微钙化检测的影响
微钙化是乳腺癌的早期乳房x光检查指标。为了帮助筛查放射科医生阅读乳房x光片,机器学习技术已被开发用于微钙化的自动检测。在过去的几年中,卷积神经网络(cnn)在许多计算机视觉和医学图像分析应用中取得了最先进的性能。基于cnn的检测的关键步骤是图像预处理,包括亮度和对比度变化。在这项工作中,我们研究了数字乳房x线照片预处理对受流行的AlexNet和VGGnet启发的两种cnn微钙化检测性能的影响。我们测试了两种通常用于未经处理的原始数字乳房x线照片的预处理方法:(i)不同制造商采用对数变换将图像呈现给放射科医生;(ii)稳定乳房x光片中存在的强度相关噪声的图像强度的平方根。实验对1066张使用GE senograph系统获得的乳房x线照片进行了分析。两种预处理方法均能显著提高微钙化检测性能。平方根变换的结果优于对数变换的结果。
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