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Iterative method to achieve noise variance stabilization in single raw digital breast tomosynthesis

机译:迭代方法实现单根原料数字乳房断层合成中的噪声方差稳定性

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The majority of the denoising algorithms available in the literature are designed to treat signal-independent Gaussian noise. However, in digital breast tomosynthesis (DBT) systems, the noise model seldom presents signal-independence. In this scenario, variance-stabilizing transforms (VSTs) may be used to convert the signal-dependent noise into approximately signal-independent noise, enabling the use of 'off-the-shelf denoising techniques. The accurate stabilization of the noise variance requires a robust estimation of the system's noise coefficients, usually obtained using calibration data. However, practical issues often arise when calibration data are required, impairing the clinical deployment of algorithms that rely on variance stabilization. In this work, we present a practical method to achieve variance stabilization by approaching it as an optimization task, with the stabilized noise variance dictating the cost function. An iterative method is used to implicitly optimize the coefficients used in the variance stabilization, leveraging a single set of raw DBT projections. The variance stabilization achieved using the proposed method is compared against the stabilization achieved using noise coefficients estimated from calibration data, considering two commercially available DBT systems and a prototype DBT system. The results showed that the average error for variance stabilization achieved using the proposed method is comparable to the error achieved through calibration data. Thus, the proposed method can be a viable alternative for achieving variance stabilization when calibration data are not easily accessible, facilitating the clinical deployment of algorithms that rely on variance stabilization.
机译:文献中可用的大多数去噪算法旨在处理与信号无关的高斯噪声。然而,在数字乳房Tomosynest(DBT)系统中,噪声模型很少存在信号独立性。在这种情况下,可以使用方差稳定变换(Vsts)将信号依赖性噪声转换为近似的信号无关的噪声,从而实现使用“现成的去噪技术。噪声方差的精确稳定需要对系统的噪声系数的稳健估计,通常使用校准数据获得。然而,在需要校准数据时通常会出现实际问题,损害依赖方差稳定的算署临床部署。在这项工作中,我们通过将其作为优化任务接近它来展示实现方差稳定化的实用方法,具有对成本函数的稳定性噪声方差。使用迭代方法来隐式优化方差稳定中使用的系数,利用单组原始DBT投影。考虑到两个商业上可获得的DBT系统和原型DBT系统,将使用所提出的方法实现使用所提出的方法实现的稳定化与使用校准数据估计的噪声系数进行比较。结果表明,使用所提出的方法实现的差异稳定化的平均误差与通过校准数据实现的误差相当。因此,当校准数据不容易访问时,所提出的方法可以是实现方差稳定的可行替代方案,促进依赖依赖方差稳定的算署的临床部署。

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