State Key Laboratory of Proteomics, Beijing Institute of Lifeomics, National Center for Protein Sciences Beijing, Beijing Proteome Research Center, Beijing, 102206, PR China.
State Key Laboratory of Proteomics, Beijing Institute of Lifeomics, National Center for Protein Sciences Beijing, Beijing Proteome Research Center, Beijing, 102206, PR China; School of Basic Medical Science, Anhui Medical University, Hefei, 230032, China.
Anal Chim Acta. 2023 Apr 22;1251:341038. doi: 10.1016/j.aca.2023.341038. Epub 2023 Mar 2.
Single-cell analysis has received much attention in recent years for elucidating the widely existing cellular heterogeneity in biological systems. However, the ability to measure the proteome in single cells is still far behind that of transcriptomics due to the lack of sensitive and high-throughput mass spectrometry methods. Herein, we report an integrated strategy termed "SCP-MS1" that combines fast liquid chromatography (LC) separation, deep learning-based retention time (RT) prediction and MS1-only acquisition for rapid and sensitive single-cell proteome analysis. In SCP-MS1, the peptides were identified via four-dimensional MS1 feature (m/z, RT, charge and FAIMS CV) matching, therefore relieving MS acquisition from the time consuming and information losing MS2 step and making this method particularly compatible with fast LC separation. By completely omitting the MS2 step, all the MS analysis time was utilized for MS1 acquisition in SCP-MS1 and therefore led to 65%-138% increased MS1 feature collection. Unlike "match between run" methods that still needed MS2 information for RT alignment, SCP-MS1 used deep learning-based RT prediction to transfer the measured RTs in long gradient bulk analyses to short gradient single cell analyses, which was the key step to enhance both identification scale and matching accuracy. Using this strategy, more than 2000 proteins were obtained from 0.2 ng of peptides with a 14-min active gradient at a false discovery rate (FDR) of 0.8%. Comparing with the DDA method, improved quantitative performance was also observed for SCP-MS1 with approximately 50% decreased median coefficient of variation of quantified proteins. For single-cell analysis, 1715 ± 204 and 1604 ± 224 proteins were quantified in single 293T and HeLa cells, respectively. Finally, SCP-MS1 was applied to single-cell proteome analysis of sorafenib resistant and non-resistant HepG2 cells and revealed clear cellular heterogeneity in the resistant population that may be masked in bulk studies.
单细胞分析近年来受到了广泛关注,因为它可以阐明生物系统中广泛存在的细胞异质性。然而,由于缺乏灵敏和高通量的质谱方法,单细胞中蛋白质组的测量能力仍然远远落后于转录组学。在此,我们报告了一种称为“SCP-MS1”的综合策略,该策略结合了快速液相色谱(LC)分离、基于深度学习的保留时间(RT)预测和仅 MS1 采集,用于快速和灵敏的单细胞蛋白质组分析。在 SCP-MS1 中,通过四维度 MS1 特征(m/z、RT、电荷和 FAIMS CV)匹配来鉴定肽,从而使 MS 采集免受耗时且信息丢失的 MS2 步骤的影响,使得该方法特别适合快速 LC 分离。通过完全省略 MS2 步骤,SCP-MS1 中的所有 MS 分析时间都用于 MS1 采集,从而使 MS1 特征采集增加了 65%-138%。与仍需要 MS2 信息进行 RT 对齐的“run-to-run 匹配”方法不同,SCP-MS1 使用基于深度学习的 RT 预测将长梯度批量分析中测量的 RT 转换为短梯度单细胞分析,这是提高鉴定规模和匹配精度的关键步骤。使用该策略,在 0.2ng 肽的情况下,在 FDR 为 0.8%的情况下,从 14 分钟的活性梯度中获得了 2000 多个蛋白质。与 DDA 方法相比,SCP-MS1 的定量性能也得到了改善,定量蛋白质的中位数变异系数降低了约 50%。单细胞分析中,单个 293T 和 HeLa 细胞中分别定量了 1715±204 和 1604±224 个蛋白质。最后,SCP-MS1 应用于索拉非尼耐药和非耐药 HepG2 细胞的单细胞蛋白质组分析,揭示了耐药群体中明显的细胞异质性,这在批量研究中可能被掩盖。