The First Medical Centre, Chinese PLA General Hospital, Beijing, 100853, PR China.
The First Medical Centre, Chinese PLA General Hospital, Beijing, 100853, PR China; Medical School of Chinese PLA, Beijing, 100853, PR China.
Anal Chim Acta. 2023 Sep 22;1275:341569. doi: 10.1016/j.aca.2023.341569. Epub 2023 Jul 4.
Research on plasma proteomics has received extensive attention, because human plasma is an important sample for disease biomarker research due to its easy clinical accessibility and richness in biological information. Plasma samples contain a large number of leaked proteins from different tissues in the body, immune proteins and communication signal proteins. However, MS signal suppression from high-abundance proteins results in a large number of proteins that are present in low abundance in plasma not being detected by the LC-MS method. This situation makes it more difficult to study neurological diseases, where tissue sampling is difficult and body fluid samples such as plasma or cerebrospinal fluid are both affected by signal suppression. A large number of methods have been developed to deeply mine plasma proteomics information; however, their application limitations remain to some extent. Traditional immuno- or affinity-based depletion, fractionation and subproteome enrichment methods cannot meet the challenges of large clinical cohort applications due to limited time efficiency. In this study, a deep mining strategy of plasma proteomics was established by combing the protein corona formed by deep mining beads (DMB beads, hereafter referred to as magnetic covalent organic frameworks Fe3O4@TpPa-1), DIA-MS detection and the DIA-NN library searching method. By optimizing the enrichment step, mass spectrometry acquisition and data processing, the evaluation results of the deep mining strategy showed the following: depth, the strategy identified and quantified results of 2000+ proteins per plasma sample; stability, more than 87% of the enriched low-abundance proteins had CV < 20%; accuracy, good agreement between measured and theoretical values (1.81/2, 8.68/10, 38.36/50) for the gradient addition of E. coli proteins to a plasma sample; time efficiency, the processing time was reduced from >12h in the traditional method to <5h (incubation 30 min, washing 15 min, reductive/alkylation/digestion/desalting 4 h), and more importantly, 96 samples can be processed simultaneously in combination with the magnetic module of the automated device. The optimal strategy enables greater enrichment of neurological disease-related proteins, including SNCA and BDNF. Finally, the deep mining strategy was applied in a pilot study of multiple system atrophy (MSA) for biomarker discovery. The results showed that a total of 215 proteins were upregulated and 184 proteins were downregulated (p < 0.05) in the MSA group compared with the healthy control group. Eighteen proteins of these differentially expressed proteins were reported to be associated with neurological diseases or expressed specifically in brain tissue, 8 and 4 of which have reference concentrations of μg/L and ng/L, respectively. The alterations of ENPP2 and SLC2A1/Glut1 were reanalyzed by ELISA, further supporting the results of mass spectrometry. In conclusion, the results of the evaluation and application of the deep mining strategy showed promise for clinical research applications.
血浆蛋白质组学研究受到广泛关注,因为人类血浆是疾病生物标志物研究的重要样本,具有临床易于获取和富含生物信息的特点。血浆样本中包含大量来自体内不同组织的泄漏蛋白、免疫蛋白和通讯信号蛋白。然而,由于高丰度蛋白的 MS 信号抑制,导致大量低丰度蛋白未被 LC-MS 方法检测到。这种情况使得研究神经退行性疾病变得更加困难,因为组织采样困难,而像血浆或脑脊液这样的体液样本都受到信号抑制的影响。已经开发了大量方法来深入挖掘血浆蛋白质组学信息;然而,由于时间效率有限,它们的应用局限性仍然存在。传统的免疫或亲和性耗尽、分级和亚蛋白质组富集方法由于时间效率有限,不能满足大型临床队列应用的挑战。在这项研究中,通过结合深挖掘珠(深挖掘珠 DMB 珠,以下简称磁性共价有机框架 Fe3O4@TpPa-1)形成的蛋白质冠、DIA-MS 检测和 DIA-NN 文库搜索方法,建立了血浆蛋白质组学的深度挖掘策略。通过优化富集步骤、质谱采集和数据处理,深度挖掘策略的评价结果表明:深度方面,该策略可对每个血浆样本进行 2000+ 种蛋白质的鉴定和定量;稳定性方面,87%以上的富集低丰度蛋白的 CV<20%;准确性方面,对梯度添加到血浆样本中的大肠杆菌蛋白的测量值与理论值之间具有良好的一致性(1.81/2、8.68/10、38.36/50);时间效率方面,处理时间从传统方法的 >12 小时缩短至 <5 小时(孵育 30 分钟,洗涤 15 分钟,还原/烷基化/消化/脱盐 4 小时),更重要的是,结合自动化设备的磁性模块,可以同时处理 96 个样本。最佳策略可以更有效地富集神经退行性疾病相关蛋白,包括 SNCA 和 BDNF。最后,该深度挖掘策略应用于多系统萎缩(MSA)的生物标志物发现的初步研究中。结果表明,与健康对照组相比,MSA 组有 215 种蛋白上调,184 种蛋白下调(p<0.05)。这些差异表达蛋白中有 18 种蛋白与神经退行性疾病相关或仅在脑组织中表达,其中 8 种和 4 种分别有μg/L 和 ng/L 的参考浓度。ENPP2 和 SLC2A1/Glut1 的变化通过 ELISA 进一步验证,进一步支持了质谱的结果。总之,深度挖掘策略的评估和应用结果表明,该策略具有临床研究应用的潜力。