Preprocessing for improved computer aided detection in medical ultrasound

R. Mammone, S. Love, L. Barinov, W. Hulbert, A. Jairaj, C. Podilchuk
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引用次数: 2

Abstract

Recently, a new speckle noise reduction and contrast enhancement technique has been introduced that is motivated by the research in compressive sampling or sensing. Compressive sampling is based on the principle that a sparse signal such as ultrasound can be fully recovered when sampled below the Nyquist rate. This allows for a new noise reduction technique that preserves the high frequency and fine details while reducing the effects of speckle noise. This method improves the overall perceptual quality of the image for visualization and diagnosis by the radiologist. This paper examines how the improvement in SNR makes the method suitable as a preprocessor to improve a computer aided detection (CAD) system for breast cancer detection. Classical performance metrics such as false positive rates, false negative rates and receiver operator curves will be used to show the benefits of this approach. Initial experiments look promising for microcalcification detection, where the new method yields a false negative rate of 20 percent at a false positive rate of 0.5 percent while the traditional speckle reduction techniques yield a false negative rate of 60 percent at a false positive rate of 0.5 percent.
改进医学超声计算机辅助检测的预处理
近年来,在压缩采样或压缩感知研究的推动下,提出了一种新的散斑降噪和对比度增强技术。压缩采样是基于这样的原理:当采样低于奈奎斯特速率时,像超声波这样的稀疏信号可以完全恢复。这允许一种新的降噪技术,保留高频和精细的细节,同时减少斑点噪声的影响。该方法提高了图像的整体感知质量,便于放射科医生进行可视化和诊断。本文探讨了信噪比的提高如何使该方法适合作为预处理程序来改进用于乳腺癌检测的计算机辅助检测(CAD)系统。经典的性能指标,如假阳性率,假阴性率和接收算子曲线将被用来显示这种方法的好处。最初的实验看起来很有希望用于微钙化检测,其中新方法在0.5%的假阳性率下产生20%的假阴性率,而传统的斑点减少技术在0.5%的假阳性率下产生60%的假阴性率。
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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