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Median Modified Wiener Filter for nonlinear adaptive spatial denoising of protein NMR multidimensional spectra

机译:用于蛋白质NMR多维光谱非线性自适应空间去噪的中值修正Wiener滤波器

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摘要

Denoising multidimensional NMR-spectra is a fundamental step in NMR protein structure determination. The state-of-the-art method uses wavelet-denoising, which may suffer when applied to non-stationary signals affected by Gaussian-white-noise mixed with strong impulsive artifacts, like those in multi-dimensional NMR-spectra. Regrettably, Wavelet's performance depends on a combinatorial search of wavelet shapes and parameters; and multi-dimensional extension of wavelet-denoising is highly non-trivial, which hampers its application to multidimensional NMR-spectra. Here, we endorse a diverse philosophy of denoising NMR-spectra: less is more! We consider spatial filters that have only one parameter to tune: the window-size. We propose, for the first time, the 3D extension of the median-modified-Wiener-filter (MMWF), an adaptive variant of the median-filter, and also its novel variation named MMWF*. We test the proposed filters and the Wiener-filter, an adaptive variant of the mean-filter, on a benchmark set that contains 16 two-dimensional and three-dimensional NMR-spectra extracted from eight proteins. Our results demonstrate that the adaptive spatial filters significantly outperform their non-adaptive versions. The performance of the new MMWF* on 2D/3D-spectra is even better than wavelet-denoising. Noticeably, MMWF* produces stable high performance almost invariant for diverse window-size settings: this signifies a consistent advantage in the implementation of automatic pipelines for protein NMR-spectra analysis.
机译:多维NMR光谱的降噪是NMR蛋白质结构确定中的基本步骤。最先进的方法使用小波去噪,当应用于受高斯白噪声和强脉冲伪像混合影响的非平稳信号时,小波去噪可能会受到影响,例如多维NMR光谱中的那些。遗憾的是,小波的性能取决于对小波形状和参数的组合搜索。小波去噪的多维扩展是非常重要的,这阻碍了其在多维NMR光谱中的应用。在这里,我们赞同将NMR光谱降噪的多种哲学:少即是多!我们考虑只有一个参数要调整的空间滤波器:窗口大小。我们首次提出了中值修饰的Wiener滤波器(MMWF)的3D扩展,中值滤波器的自适应变体及其新颖的变体MMWF *。我们在一个基准测试集上测试了提出的滤波器和均值滤波器的自适应变体Wiener滤波器,该基准集包含从8种蛋白质中提取的16个二维和三维NMR光谱。我们的结果表明,自适应空间滤波器的性能明显优于非自适应滤波器。新的MMWF *在2D / 3D光谱上的性能甚至比小波去噪更好。值得注意的是,MMWF *可以为各种窗口大小设置提供几乎不变的稳定高性能:这表示在实现用于蛋白质NMR光谱分析的自动管线方面的一致优势。

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