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Evaluation of denoising digital breast tomosynthesis data in both projection and image domains and a study of noise model on digital breast tomosynthesis image domain

机译:在投影和图像域中对数字化乳房断层合成数据进行降噪的评估以及数字化乳房断层合成图像域上的噪声模型研究

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摘要

Digital breast tomosynthesis (DBT) is an imaging technique created to visualize 3-D mammary structures for the purpose of diagnosing breast cancer. This imaging technique is based on the principle of computed tomography. Due to the use of a dangerous ionizing radiation, the “as low as reasonably achievable” (ALARA) principle should be respected, aiming at minimizing the radiation dose to obtain an adequate examination. Thus, a noise filtering method is a fundamental step to achieve the ALARA principle, as the noise level of the image increases as the radiation dose is reduced, making it difficult to analyze the image. In our work, a double denoising approach for DBT is proposed, filtering in both projection (prereconstruction) and image (postreconstruction) domains. First, in the prefiltering step, methods were used for filtering the Poisson noise. To reconstruct the DBT projections, we used the filtered backprojection algorithm. Then, in the postfiltering step, methods were used for filtering Gaussian noise. Experiments were performed on simulated data generated by open virtual clinical trials (OpenVCT) software and on a physical phantom, using several combinations of methods in each domain. Our results showed that double filtering (i.e., in both domains) is not superior to filtering in projection domain only. By investigating the possible reason to explain these results, it was found that the noise model in DBT image domain could be better modeled by a Burr distribution than a Gaussian distribution. Finally, this important contribution can open a research direction in the DBT denoising problem.
机译:数字乳腺断层合成(DBT)是一种成像技术,旨在可视化3-D乳腺结构以诊断乳腺癌。该成像技术基于计算机断层摄影的原理。由于使用了危险的电离辐射,因此应遵循“尽可能合理地降低”(ALARA)原则,旨在最大程度地减少辐射剂量以获得充分的检查。因此,噪声滤波方法是实现ALARA原理的基本步骤,因为随着辐射剂量的减少,图像的噪声水平会增加,从而难以分析图像。在我们的工作中,提出了一种针对DBT的双重降噪方法,在投影(重建前)和图像(重建后)域中进行过滤。首先,在预滤波步骤中,使用了用于滤波泊松噪声的方法。为了重建DBT投影,我们使用了滤波后的反投影算法。然后,在后滤波步骤中,使用了用于滤波高斯噪声的方法。使用每个领域中的几种方法组合,对通过开放式虚拟临床试验(OpenVCT)软件生成的模拟数据和物理模型进行实验。我们的结果表明,双重过滤(即在两个域中)均不优于仅在投影域中进行过滤。通过研究解释这些结果的可能原因,发现DBT图像域中的噪声模型可以比Burs分布更好地建模为高斯分布。最后,这一重要贡献可以为DBT去噪问题打开研究方向。

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