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Sparse multidimensional iterative lineshape-enhanced (SMILE) reconstruction of both non-uniformly sampled and conventional NMR data

机译:稀疏的多维迭代线Hape-Enhanced(微笑)重建非均匀采样和常规NMR数据

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摘要

Implementation of a new algorithm, SMILE, is described for reconstruction of non-uniformly sampled two-, three- and four-dimensional NMR data, which takes advantage of the known phases of the NMR spectrum and the exponential decay of underlying time domain signals. The method is very robust with respect to the chosen sampling protocol and, in its default mode, also extends the truncated time domain signals by a modest amount of non-sampled zeros. SMILE can likewise be used to extend conventional uniformly sampled data, as an effective multidimensional alternative to linear prediction. The program is provided as a plug-in to the widely used NMRPipe software suite, and can be used with default parameters for mainstream application, or with user control over the iterative process to possibly further improve reconstruction quality and to lower the demand on computational resources. For large data sets, the method is robust and demonstrated for sparsities down to ca 1%, and final all-real spectral sizes as large as 300 Gb. Comparison between fully sampled, conventionally processed spectra and randomly selected NUS subsets of this data shows that the reconstruction quality approaches the theoretical limit in terms of peak position fidelity and intensity. SMILE essentially removes the noise-like appearance associated with the point-spread function of signals that are a default of five-fold above the noise level, but impacts the actual thermal noise in the NMR spectra only minimally. Therefore, the appearance and interpretation of SMILE-reconstructed spectra is very similar to that of fully sampled spectra generated by Fourier transformation.
机译:描述新算法,微笑,用于重建非均匀采样的两维,三维NMR数据,这利用了NMR频谱的已知相位和底层时域信号的指数衰减。该方法对于所选择的采样协议非常鲁棒,并且在其默认模式下,还通过适度的非采样零扩展截断的时域信号。微笑同样可以用来扩展常规的统一采样数据,作为线性预测的有效多维替代品。该程序被提供为广泛使用的NMRPIPE软件套件的插件,可与主流应用的默认参数一起使用,或者通过用户控制迭代过程,以便可能进一步提高重建质量,并降低对计算资源的需求。 。对于大数据集,该方法具有稳健性,并为少数为CA 1%的稀疏性展示,最终的全真实谱大小为300 GB。完全采样的,传统上处理的光谱和随机选择的NUS子集之间的比较显示,重建质量在峰值位置保真度和强度方面接近理论极限。微笑基本上消除了与信号的点扩散函数相关的噪声样外观,该信号的默认值为高于噪声水平,而是仅对NMR光谱中的实际热噪声MIMIMALLY影响。因此,微笑重建光谱的外观和解释非常类似于傅里叶变换产生的完全采样光谱。

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