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Wavelet-Based Adaptive Denoising and Baseline Correction for MALDI TOF MS

机译:小波自适应去噪和基线修正MALDI TOF MS

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摘要

Proteomic profiling by MALDI TOF mass spectrometry (MS) is an effective method for identifying biomarkers from human serum/plasma, but the process is complicated by the presence of noise in the spectra. In MALDI TOF MS, the major noise source is chemical noise, which is defined as the interference from matrix material and its clusters. Because chemical noise is nonstationary and nonwhite, wavelet-based denoising is more effective than conventional noise reduction schemes based on Fourier analysis. However, current wavelet-based de-noising methods for mass spectrometry do not fully consider the characteristics of chemical noise. In this article, we propose new wavelet-based high-frequency noise reduction and baseline correction methods that were designed based on the discrete stationary wavelet transform. The high-frequency noise reduction algorithm adaptively estimates the time-varying threshold for each frequency subband from multiple realizations of chemical noise and removes noise from mass spectra of samples using the estimated thresholds. The baseline correction algorithm computes the monotonically decreasing baseline in the highest approximation of the wavelet domain. The experimental results demonstrate that our algorithms effectively remove artifacts in mass spectra that are due to chemical noise while preserving informative features as compared to commonly used denoising methods.
机译:蛋白质组学分析的MALDI TOF质谱分析识别(MS)是一种有效的方法从人类血清/血浆生物标志物,但是过程是复杂的噪音在光谱。噪音来源是化学,它被定义为干扰物质及其矩阵集群。和非白人,小波去噪是更多比传统的降噪效果基于傅里叶分析计划。目前小波去噪质量的方法谱不完全考虑化学噪声的特征。篇文章中,我们提出新的小波减少高频噪声和基线设计了基于校正方法离散平稳小波变换。高频降噪算法自适应估计时变阈值为每个频率子带从多个实现化学噪声和消除噪音从质谱使用估计的样本阈值。计算单调减少基线的最高近似小波域。实验结果证明我们的算法有效地去除工件质量光谱是由于化学噪音保留信息特征相比常用的去噪方法。

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