PhosX: data-driven kinase activity inference from phosphoproteomics experiments.

Alessandro Lussana, Sophia Müller-Dott, Julio Saez-Rodriguez, Evangelia Petsalaki
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Abstract

Summary: The inference of kinase activity from phosphoproteomics data can point to causal mechanisms driving signalling processes and potential drug targets. Identifying the kinases whose change in activity explains the observed phosphorylation profiles, however, remains challenging, and constrained by the manually curated knowledge of kinase-substrate associations. Recently, experimentally determined substrate sequence specificities of human kinases have become available, but robust methods to exploit this new data for kinase activity inference are still missing. We present PhosX, a method to estimate differential kinase activity from phosphoproteomics data that combines state-of-the art statistics in enrichment analysis with kinases' substrate sequence specificity information. Using a large phosphoproteomics dataset with known differentially regulated kinases we show that our method identifies upregulated and downregulated kinases by only relying on the input phosphopeptides' sequences and intensity changes. We find that PhosX outperforms the currently available approach for the same task, and performs better or similarly to state-of-the-art methods that rely on previously known kinase-substrate associations. We therefore recommend its use for data-driven kinase activity inference.

Availability and implementation: PhosX is implemented in Python, open-source under the Apache-2.0 licence, and distributed on the Python Package Index. The code is available on GitHub (https://github.com/alussana/phosx).

Supplementary information: Supplementary data are available at Bioinformatics online.

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PhosX:从磷酸蛋白组学实验中推断数据驱动的激酶活性。
摘要:从磷酸化蛋白质组学数据中推断激酶活性可以指出驱动信号过程和潜在药物靶点的因果机制。然而,要确定哪些激酶的活性变化可以解释观察到的磷酸化图谱,仍然具有挑战性,并且受到人工整理的激酶-底物关联知识的限制。最近,通过实验确定的人类激酶底物序列特异性已经可用,但利用这些新数据进行激酶活性推断的可靠方法仍然缺乏。我们介绍的 PhosX 是一种从磷酸蛋白组学数据中估算不同激酶活性的方法,它将富集分析中最先进的统计方法与激酶底物序列特异性信息相结合。通过使用一个包含已知差异调控激酶的大型磷酸蛋白组学数据集,我们发现我们的方法仅依靠输入磷酸肽的序列和强度变化就能识别上调和下调的激酶。我们发现,PhosX 的表现优于目前可用于相同任务的方法,其性能也优于或类似于依赖先前已知激酶-底物关联的先进方法。因此,我们推荐将其用于数据驱动的激酶活性推断:PhosX用Python实现,在Apache-2.0许可下开源,并发布在Python软件包索引上。代码可在 GitHub (https://github.com/alussana/phosx) 上获取。补充信息:补充数据可在 Bioinformatics online 上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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