...
首页> 外文期刊>Frontiers in Genetics >Correcting for the study bias associated with protein–protein interaction measurements reveals differences between protein degree distributions from different cancer types
【24h】

Correcting for the study bias associated with protein–protein interaction measurements reveals differences between protein degree distributions from different cancer types

机译:校正与蛋白质-蛋白质相互作用测量相关的研究偏倚揭示了来自不同癌症类型的蛋白质度分布之间的差异

获取原文

摘要

Protein–protein interaction (PPI) networks are associated with multiple types of biases partly rooted in technical limitations of the experimental techniques. Another source of bias are the different frequencies with which proteins have been studied for interaction partners. It is generally believed that proteins with a large number of interaction partners tend to be essential, evolutionarily conserved, and involved in disease. It has been repeatedly reported that proteins driving tumor formation have a higher number of PPI partners. However, it has been noticed before that the degree distribution of PPI networks is biased toward disease proteins, which tend to have been studied more often than non-disease proteins. At the same time, for many poorly characterized proteins no interactions have been reported yet. It is unclear to which extent this study bias affects the observation that cancer proteins tend to have more PPI partners. Here, we show that the degree of a protein is a function of the number of times it has been screened for interaction partners. We present a randomization-based method that controls for this bias to decide whether a group of proteins is associated with significantly more PPI partners than the proteomic background. We apply our method to cancer proteins and observe, in contrast to previous studies, no conclusive evidence for a significantly higher degree distribution associated with cancer proteins as compared to non-cancer proteins when we compare them to proteins that have been equally often studied as bait proteins. Comparing proteins from different tumor types, a more complex picture emerges in which proteins of certain cancer classes have significantly more interaction partners while others are associated with a smaller degree. For example, proteins of several hematological cancers tend to be associated with a higher number of interaction partners as expected by chance. Solid tumors, in contrast, are usually associated with a degree distribution similar to those of equally often studied random protein sets. We discuss the biological implications of these findings. Our work shows that accounting for biases in the PPI network is possible and increases the value of PPI data.
机译:蛋白质-蛋白质相互作用(PPI)网络与多种类型的偏差相关,这些偏差部分源于实验技术的技术局限性。偏倚的另一个来源是研究蛋白质作为相互作用伴侣的不同频率。通常认为,具有大量相互作用伴侣的蛋白质往往是必需的,进化上保守的并且与疾病有关。反复报道,驱动肿瘤形成的蛋白质具有更高数量的PPI伴侣。但是,之前已经注意到,PPI网络的程度分布偏向于疾病蛋白质,与非疾病蛋白质相比,疾病蛋白质往往被研究得更多。同时,对于许多表征较差的蛋白质,尚无相互作用的报道。目前尚不清楚该研究偏向在多大程度上影响了观察结果,即癌蛋白倾向于具有更多的PPI伴侣。在这里,我们表明蛋白质的程度是针对相互作用伴侣进行筛选的次数的函数。我们提出了一种基于随机化的方法来控制这种偏见,以决定是否一组蛋白质与蛋白质组学背景相比,与PPI伙伴的关​​联显着更多。与以前的研究相比,我们将我们的方法应用于癌症蛋白质,并且没有观察到与非癌症蛋白质相比,与非癌症蛋白质相比,与癌症蛋白质相关的度分布明显更高的确凿证据。蛋白质。比较来自不同肿瘤类型的蛋白质,出现了一个更为复杂的图景,其中某些癌症类别的蛋白质具有明显更多的相互作用伴侣,而其他癌症的程度则较小。例如,偶然地预期,几种血液系统癌症的蛋白质往往与更多的相互作用伴侣相关。相比之下,实体瘤通常具有与同样经常研究的随机蛋白质组相似的程度分布。我们讨论这些发现的生物学意义。我们的工作表明,解决PPI网络中的偏差是可能的,并且可以增加PPI数据的价值。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号