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Deeper investigation into the utility of functional class scoring in missing protein prediction from proteomics data

机译:从蛋白质组学数据缺失蛋白质预测中缺失蛋白质预测中的功能阶级评分的效用深度调查

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Functional Class Scoring (FCS) is a network-based approach previously demonstrated to be powerful in missing protein prediction (MPP). We update its performance evaluation using data derived from new proteomics technology (SWATH) and also checked for reproducibility using two independent datasets profiling kidney tissue proteome. We also evaluated the objectivity of the FCS p-value, and followed up on the value of MPP from predicted complexes. Our results suggest that (1) FCS p-values are non-objective, and are confounded strongly by complex size, (2) best recovery performance do not necessarily lie at standard p-value cutoffs, (3) while predicted complexes may be used for augmenting MPP, they are inferior to real complexes, and are further confounded by issues relating to network coverage and quality and (4) moderate sized complexes of size 5 to 10 still exhibit considerable instability, we find that FCS works best with big complexes. While FCS is a powerful approach, blind reliance on its non-objective p-value is ill-advised.
机译:功能类评分(FCS)是一种基于网络的方法,前面证明了缺失蛋白质预测(MPP)的功能。我们使用从新的蛋白质组学技术(SWATH)的数据更新其性能评估,并使用两个独立的数据集分析肾组织蛋白质组检查再现性。我们还评估了FCS P值的客观性,并跟进了来自预测复合物的MPP的值。我们的结果表明(1)FCS P值是非目标,并且通过复杂的大小强烈混淆,(2)最佳恢复性能不一定位于标准的P值截止值,(3)可以使用预测复合物对于增强MPP,它们不如真正的复合物,并且通过与网络覆盖范围和质量有关的问题进一步混淆,(4)大小为5到10的中等大小复合物仍然表现出相当大的不稳定,我们发现FCS最适合大复合物。虽然FCS是一种强大的方法,但盲目依赖于其非客观的P值。

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