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Neural Denoising of Ultra-low Dose Mammography

机译:超低剂量乳腺摄影的神经去噪

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X-ray mammography is commonly used for breast cancer screening. Radiation exposure during mammography restricts the screening frequency and minimal age. Reduction of radiation dose decreases image quality. Image denoising has been recently considered as a way to facilitate dose reduction in mammography without impacting its diagnostic value. We propose a convolu-tional locally-consistent non-local means (CLC-NLM) algorithm for ultra-low dose mammography denoising. The proposed method achieves powerful denoising while preserving fine details in high resolution mammography. Validation is performed using a dataset of 16 digital mammography cases (4-views each). Since obtaining true low-dose and high-dose mammogram pairs raises regulatory concerns, we applied the X-ray specific and validated method of Veldkamp et al. to simulate 90% dose reduction. The proposed algorithm is shown to compete favorably, both quantitatively and qualitatively, against state-of-the-art neural denoising algorithms. In particular, tiny micro-calcifications are better preserved using the proposed algorithm.
机译:X线乳房摄影术通常用于乳腺癌筛查。乳腺摄影期间的放射线暴露限制了筛查频率和最小年龄。减少辐射剂量会降低图像质量。近来,图像降噪已被认为是在不影响其乳腺X线摄影诊断价值的前提下减少其剂量的一种方法。我们提出了卷积的局部一致非局部均值(CLC-NLM)算法,用于超低剂量乳腺摄影降噪。所提出的方法实现了强大的去噪,同时在高分辨率的乳腺摄影中保留了精细的细节。验证是使用16个数字化乳腺摄影病例(每个4个视图)的数据集进行的。由于获得真正的低剂量和高剂量乳房X线照片对引起了监管方面的关注,因此我们应用了Veldkamp等人的X射线特定且经过验证的方法。模拟减少90%的剂量。结果表明,所提出的算法在数量和质量上都可以与最新的神经去噪算法竞争。特别是,使用提出的算法可以更好地保留微小的微钙化。

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