Department of Chemistry and Biochemistry, 1253 University of Oregon, Eugene, OR, 97403-1253, USA.
Department of Chemistry and Biochemistry, Department of Biological Chemistry, University of California, UCLA/DOE Institute for Genomics and Proteomics, Los Angeles, Los Angeles, CA, 90095, USA.
J Am Soc Mass Spectrom. 2018 Oct;29(10):2067-2080. doi: 10.1007/s13361-018-2018-7. Epub 2018 Jul 12.
Native mass spectra of large, polydisperse biomolecules with repeated subunits, such as lipoprotein Nanodiscs, can often be challenging to analyze by conventional methods. The presence of tens of closely spaced, overlapping peaks in these mass spectra can make charge state, total mass, or subunit mass determinations difficult to measure by traditional methods. Recently, we introduced a Fourier Transform-based algorithm that can be used to deconvolve highly congested mass spectra for polydisperse ion populations with repeated subunits and facilitate identification of the charge states, subunit mass, charge-state-specific, and total mass distributions present in the ion population. Here, we extend this method by investigating the advantages of using overtone peaks in the Fourier spectrum, particularly for mass spectra with low signal-to-noise and poor resolution. This method is illustrated for lipoprotein Nanodisc mass spectra acquired on three common platforms, including the first reported native mass spectrum of empty "large" Nanodiscs assembled with MSP1E3D1 and over 300 noncovalently associated lipids. It is shown that overtone peaks contain nearly identical stoichiometry and charge state information to fundamental peaks but can be significantly better resolved, resulting in more reliable reconstruction of charge-state-specific mass spectra and peak width characterization. We further demonstrate how these parameters can be used to improve results from Bayesian spectral fitting algorithms, such as UniDec. Graphical Abstract ᅟ.
对于具有重复亚基的大分子量、多分散生物分子(如脂蛋白纳米盘)的天然质谱,通常很难通过常规方法进行分析。这些质谱中存在数十个紧密间隔、重叠的峰,使得传统方法难以测量其电荷状态、总质量或亚基质量。最近,我们引入了一种基于傅里叶变换的算法,可以用于解卷积具有重复亚基的多分散离子群体的高度拥挤质谱,并有助于识别离子群体中存在的电荷状态、亚基质量、电荷状态特异性和总质量分布。在这里,我们通过研究在傅里叶光谱中使用泛音峰的优势来扩展该方法,特别是对于信号噪声比低且分辨率差的质谱。该方法用于分析在三个常见平台上获得的脂蛋白纳米盘质谱,包括首次报道的使用 MSP1E3D1 和超过 300 个非共价结合的脂质组装的空“大”纳米盘的天然质谱。结果表明,泛音峰包含与基本峰几乎相同的化学计量和电荷状态信息,但可以得到更好的分辨率,从而更可靠地重建电荷状态特异性质谱和峰宽特征。我们进一步演示了如何使用这些参数来改进贝叶斯光谱拟合算法(如 UniDec)的结果。