Moschem Jorge da Cruz, de Barros Bianca Carla Silva Campitelli, Serrano Solange Maria de Toledo, Chaves Alison Felipe Alencar
Laboratory of Applied Toxinology, Center of Toxins, Immune-Response, and Cell Signaling (CeTICS), Butantan Institute, São Paulo 05503-900, Brazil.
J Proteome Res. 2025 Aug 1;24(8):3860-3873. doi: 10.1021/acs.jproteome.5c00009. Epub 2025 Jul 8.
Proteomic studies using data-independent acquisition (DIA) have gained momentum in all fields of biology. Search engines are evolving to keep up with the latest developments in instrument technology. DIA-NN is the most popular software for DIA analysis under an academic use license. The QuantUMS algorithm in DIA-NN improves quantification quality control by calculating three scores (protein group MaxLFQ quality, empirical quality, and quantity quality) that assess the agreement between MS1 and MS2 features. Here, we show that applying specific cutoffs to these scores can significantly impact the results. To enable you to make a more informed decision about what represents a reasonable trade-off (identification and quantification), we evaluated the impact of different combinations of the scores on data acquired using different isolation windows and a mixture of two species with a known ratio. To test consistency and reproducibility across the six different versions of DIA-NN, we compared them and found high reproducibility except for version 1.9. We show that filtering by QuantUMS scores removes proteins with low abundances and high coefficients of variation. Finally, we developed the QC4DIANN Shiny application in the R language for interactive quality control automation.
使用数据非依赖采集(DIA)的蛋白质组学研究在生物学的各个领域都得到了迅猛发展。搜索引擎也在不断演进,以跟上仪器技术的最新发展。在学术使用许可下,DIA-NN是用于DIA分析的最流行软件。DIA-NN中的QuantUMS算法通过计算三个分数(蛋白质组MaxLFQ质量、经验质量和定量质量)来评估MS1和MS2特征之间的一致性,从而提高定量质量控制。在此,我们表明对这些分数应用特定的截止值会显著影响结果。为了使您能够就是否代表合理权衡(鉴定和定量)做出更明智的决策,我们评估了分数的不同组合对使用不同隔离窗口以及已知比例的两种物种混合物采集的数据的影响。为了测试DIA-NN六个不同版本之间的一致性和可重复性,我们对它们进行了比较,发现除了1.9版本外,具有很高的可重复性。我们表明,通过QuantUMS分数进行过滤可以去除低丰度和高变异系数的蛋白质。最后,我们用R语言开发了QC4DIANN Shiny应用程序,用于交互式质量控制自动化。