Pang Marion, Jones Jeff J, Wang Ting-Yu, Quan Baiyi, Kubat Nicole J, Qiu Yanping, Roukes Michael L, Chou Tsui-Fen
Division of Biology and Biological Engineering, California Institute of Technology, 1200 East California Boulevard, Pasadena, California 91125, United States.
Proteome Exploration Laboratory, Beckman Institute, California Institute of Technology, 1200 East California Boulevard, Pasadena, California 91125, United States.
J Proteome Res. 2025 Apr 4;24(4):1528-1538. doi: 10.1021/acs.jproteome.4c00062. Epub 2024 Jun 4.
The advancement of sophisticated instrumentation in mass spectrometry has catalyzed an in-depth exploration of complex proteomes. This exploration necessitates a nuanced balance in experimental design, particularly between quantitative precision and the enumeration of analytes detected. In bottom-up proteomics, a key challenge is that oversampling of abundant proteins can adversely affect the identification of a diverse array of unique proteins. This issue is especially pronounced in samples with limited analytes, such as small tissue biopsies or single-cell samples. Methods such as depletion and fractionation are suboptimal to reduce oversampling in single cell samples, and other improvements on LC and mass spectrometry technologies and methods have been developed to address the trade-off between precision and enumeration. We demonstrate that by using a monosubstrate protease for proteomic analysis of single-cell equivalent digest samples, an improvement in quantitative accuracy can be achieved, while maintaining high proteome coverage established by trypsin. This improvement is particularly vital for the field of single-cell proteomics, where single-cell samples with limited number of protein copies, especially in the context of low-abundance proteins, can benefit from considering analyte complexity. Considerations about analyte complexity, alongside chromatographic complexity, integration with data acquisition methods, and other factors such as those involving enzyme kinetics, will be crucial in the design of future single-cell workflows.
质谱分析中精密仪器的发展推动了对复杂蛋白质组的深入探索。这种探索需要在实验设计中进行细致的平衡,特别是在定量精度和检测到的分析物数量之间。在自下而上的蛋白质组学中,一个关键挑战是对丰富蛋白质的过度采样会对多种独特蛋白质的鉴定产生不利影响。这个问题在分析物有限的样本中尤为明显,例如小组织活检样本或单细胞样本。诸如去除和分级分离等方法在减少单细胞样本中的过度采样方面并不理想,并且已经开发了其他液相色谱和质谱技术及方法的改进措施来解决精度和数量之间的权衡。我们证明,通过使用单底物蛋白酶对单细胞等效消化样本进行蛋白质组分析,可以在保持胰蛋白酶所建立的高蛋白组覆盖率的同时,提高定量准确性。这种改进对于单细胞蛋白质组学领域尤为重要,在该领域中,蛋白质拷贝数有限的单细胞样本,特别是在低丰度蛋白质的情况下,可以从考虑分析物复杂性中受益。对分析物复杂性的考虑,以及色谱复杂性、与数据采集方法的整合以及其他因素(如涉及酶动力学的因素),在未来单细胞工作流程的设计中将至关重要。