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Nonlinear Regression Improves Accuracy of Characterization of Multiplexed Mass Spectrometric Assays

机译:非线性回归提高了多重质谱分析法表征的准确性

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摘要

The need for assay characterization is ubiquitous in quantitative mass spectrometry-based proteomics. Among many assay characteristics, the limit of blank (LOB) and limit of detection (LOD) are two particularly useful figures of merit. LOB and LOD are determined by repeatedly quantifying the observed intensities of peptides in samples with known peptide concentrations and deriving an intensity versus concentration response curve. Most commonly, a weighted linear or logistic curve is fit to the intensity-concentration response, and LOB and LOD are estimated from the fit. Here we argue that these methods inaccurately characterize assays where observed intensities level off at low concentrations, which is a common situation in multiplexed systems. This manuscript illustrates the deficiencies of these methods, and proposes an alternative approach based on nonlinear regression that overcomes these inaccuracies. We evaluated the performance of the proposed method using computer simulations and using eleven experimental data sets acquired in Data-Independent Acquisition (DIA), Parallel Reaction Monitoring (PRM), and Selected Reaction Monitoring (SRM) mode. When the intensity levels off at low concentrations, the nonlinear model changes the estimates of LOB/LOD upwards, in some data sets by 20–40%. In absence of a low concentration intensity leveling off, the estimates of LOB/LOD obtained with nonlinear statistical modeling were identical to those of weighted linear regression. We implemented the nonlinear regression approach in the open-source R-based software MSstats, and advocate its general use for characterization of mass spectrometry-based assays.
机译:在基于质谱的定量蛋白质组学中,分析表征的需求无处不在。在许多检测特性中,空白限(LOB)和检测限(LOD)是两个特别有用的品质因数。 LOB和LOD通过重复定量已知肽浓度的样品中观察到的肽强度并得出强度对浓度响应曲线来确定。最常见的是,将加权线性或逻辑曲线拟合到强度-浓度响应,并根据拟合估计LOB和LOD。在这里,我们认为这些方法无法准确地表征检测结果,在低浓度下观察到的强度趋于平稳,这在多路复用系统中很常见。该手稿说明了这些方法的缺陷,并提出了一种基于非线性回归的替代方法,可以克服这些不准确性。我们使用计算机模拟和以数据独立采集(DIA),并行反应监测(PRM)和选择反应监测(SRM)模式获取的十一个实验数据集评估了该方法的性能。当强度在低浓度下趋于平稳时,非线性模型会将LOB / LOD的估计值向上更改,在某些数据集中将更改20-40%。在没有低浓度强度趋于平稳的情况下,通过非线性统计建模获得的LOB / LOD估计值与加权线性回归的估计值相同。我们在基于开源R的软件MSstats中实现了非线性回归方法,并提倡将其普遍用于表征基于质谱的分析。

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