Research Centre for Advanced Biochemistry and Molecular Biology, Department of Experimental and Clinical Medicine, Magna Graecia University of Catanzaro, Catanzaro, Italy.
J Mass Spectrom. 2021 Jan;56(1):e4669. doi: 10.1002/jms.4669. Epub 2020 Oct 31.
MS-based proteomics is expanding its role as a routine tool for biological discovery. Nevertheless, the task of accurately and precisely quantifying thousands of analytes in a single experiment remains challenging. In this study, the diagnostic accuracy of three popular data-dependent methods for protein relative quantification (label-free [LF], dimethyl labelling [DML] and tandem mass tags [TMT]) has been assessed using a mixed species proteome (three species) and five experimental replicates per condition. Data were produced using a quadrupole-Orbitrap mass spectrometer and analysed using a single platform (the MaxQuant/Perseus software suite). The whole comparative analysis was repeated three times over a period of 6 months, in order to assess the consistency of the reported findings. As expected, label-based methods reproducibly provided a lower false positives rate, whereas TMT and LF performed similarly, and significantly better than DML, in terms of proteome coverage using the same instrument time. Although parameters like proteome coverage and precision were consistent in between replicates, other parameters like sensitivity, intended as the capacity of correctly classifying true positives (regulated proteins), were found to be less reproducible, especially at challenging fold-changes (1.5). Collectively, data suggest that an increased interest in data reproducibility would be desirable in the quantitative proteomics field.
基于 MS 的蛋白质组学正在扩展其作为生物发现常规工具的作用。然而,在单次实验中准确和精确地定量数千种分析物的任务仍然具有挑战性。在这项研究中,使用混合物种蛋白质组(三种物种)和每个条件的五个实验重复,评估了三种流行的蛋白质相对定量(无标签[LF]、二甲基标记[DML]和串联质量标签[TMT])数据依赖方法的诊断准确性。数据是使用四极杆-Orbitrap 质谱仪产生的,并使用单个平台(MaxQuant/Perseus 软件套件)进行分析。整个比较分析在 6 个月的时间内重复了三次,以评估报告结果的一致性。正如预期的那样,基于标签的方法可重复性地提供更低的假阳性率,而 TMT 和 LF 在使用相同仪器时间的蛋白质组覆盖率方面表现相似,明显优于 DML。尽管在重复之间,像蛋白质组覆盖率和精密度这样的参数是一致的,但其他参数,如灵敏度,即正确分类真阳性(调节蛋白)的能力,被发现不太可重复,特别是在具有挑战性的倍数变化(1.5)时。总的来说,数据表明,在定量蛋白质组学领域,提高对数据可重复性的兴趣是可取的。