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A Signal Filtering Method for Improved Quantification and Noise Discrimination in Fourier Transform Ion Cyclotron Resonance Mass Spectrometry-Based Metabolomics Data

机译:基于傅立叶变换离子回旋共振质谱的代谢组学数据的量化和噪声识别改进信号滤波方法

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Direct-infusion electrospray-ionization Fourier transform ion cyclotron resonance mass spectrometry (DI ESI FT-ICR MS) is increasingly being utilized in metabolomics, including the high sensitivity selected ion monitoring (SIM)-stitching approach. Accurate signal quantification and the discrimination of real signals from noise remain major challenges for this approach, with both adversely affected by factors including ion suppression during electrospray, ion-ion interactions in the detector cell, and thermally-induced white noise. This is particularly problematic for complex mixture analysis where hundreds of metabolites are present near the noise level. Here we address relative signal quantification and noise discrimination issues in SIM-stitched DI ESI FT-ICR MS-based metabolomics. Using liver tissue, we first optimized the number of scans (n) acquired per SIM window to address the balance between quantification accuracy versus acquisition time (and thus sample throughput); a minimum of n = 5 is recommended. Secondly, we characterized and computationally-corrected an effect whereby an ion's intensity is dependent upon its location within a SIM window, exhibiting a 3-fold higher intensity at the high m/z end. This resulted in significantly improved quantification accuracy. Finally, we thoroughly characterized a three-stage filter to discriminate noise from real signals, which comprised a signal-to-noise-ratio (SNR) hard threshold, then a "replicate" filter (retaining only peaks in r-out-of-3 replicate analyses), and then a "sample" filter (retaining only peaks in >s% of biological samples). We document the benefits of three-stage filtering versus one- and two-stage filters, and show the importance of selecting filter parameters that balance the confidence that a signal is real versus the total number of peaks detected.
机译:直接注入电喷雾电离傅立叶变换离子回旋共振质谱(DI ESI FT-ICR MS)越来越多地用于代谢组学中,包括高灵敏度选择离子监测(SIM)缝合方法。准确的信号量化和对真实信号与噪声的区分仍然是此方法的主要挑战,两者都受到包括电喷雾期间离子抑制,检测器池中离子与离子相互作用以及热诱导白噪声等因素的不利影响。对于复杂混合物分析(在噪声水平附近存在数百种代谢物)而言,这尤其成问题。在这里,我们解决基于SIM缝合的DI ESI FT-ICR MS的代谢组学中的相对信号量化和噪声识别问题。使用肝脏组织,我们首先优化了每个SIM窗口获取的扫描次数(n),以解决定量准确度与获取时间(以及样品通量)之间的平衡问题。建议最小为n = 5。其次,我们对离子的强度取决于其在SIM窗口内的位置进行了特征化和计算校正,从而在高m / z端显示出3倍高的强度。这大大提高了定量准确性。最后,我们对三级滤波器进行了彻底的表征,以从实际信号中区分出噪声,其中包括一个信噪比(SNR)硬阈值,然后是一个“复制”滤波器(仅保留r-out-of-of 3次重复分析),然后是“样品”过滤器(仅在> s%的生物样品中保留峰)。我们记录了三阶段滤波与一阶段和两阶段滤波相比的优势,并显示了选择滤波参数的重要性,这些滤波参数可以平衡信号真实性与检测到的峰值总数之间的置信度。

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