McSNAC:一个从细胞计数数据中近似一阶信号网络的软件。

Pub Date : 2023-03-01 DOI:10.15302/j-qb-022-0308
Darren Wethington, Sayak Mukherjee, Jayajit Das
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引用次数: 0

摘要

背景:大规模细胞术(CyTOF)提供了前所未有的机会,可以同时测量单个细胞中多达40种蛋白质,理论上可能达到100种蛋白质。这种高维单细胞信息在解剖细胞活动机制方面非常有用。特别是,测量磷酸化蛋白等信号蛋白的丰度可以提供单细胞信号过程动力学的详细信息。然而,需要计算分析,以重建这种网络的机制模型。方法:我们提出了我们的Mass cytometry Signaling Network Analysis Code (McSNAC),这是一个能够重建信号网络并从CyTOF数据估计其动力学参数的新软件。McSNAC将信号网络近似为蛋白质之间的一级反应网络。这个假设经常被打破,因为信号反应可能涉及结合和解结合、酶促反应和其他非线性结构。此外,McSNAC可能仅限于近似蛋白质物种之间的间接相互作用,因为细胞术实验只能检测参与信号传导的一小部分蛋白质物种。结果:我们在这里进行了一系列的计算机实验,以表明(1)当给定来自一阶系统的数据时,McSNAC能够以可扩展的方式准确估计基真值模型;(2) McSNAC能够在简单的二阶反应模型和复杂的硅非线性信号网络(其中一些蛋白质无法测量)中定性地预测物种丰度扰动的结果。结论:这些发现表明,McSNAC可以作为一种有价值的筛选工具,从带有时间戳的CyTOF数据中生成信号网络模型。
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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McSNAC: A software to approximate first-order signaling networks from mass cytometry data.

Background: Mass cytometry (CyTOF) gives unprecedented opportunity to simultaneously measure up to 40 proteins in single cells, with a theoretical potential to reach 100 proteins. This high-dimensional single-cell information can be very useful in dissecting mechanisms of cellular activity. In particular, measuring abundances of signaling proteins like phospho-proteins can provide detailed information on the dynamics of single-cell signaling processes. However, computational analysis is required to reconstruct such networks with a mechanistic model.

Methods: We propose our Mass cytometry Signaling Network Analysis Code (McSNAC), a new software capable of reconstructing signaling networks and estimating their kinetic parameters from CyTOF data. McSNAC approximates signaling networks as a network of first-order reactions between proteins. This assumption often breaks down as signaling reactions can involve binding and unbinding, enzymatic reactions, and other nonlinear constructions. Furthermore, McSNAC may be limited to approximating indirect interactions between protein species, as cytometry experiments are only able to assay a small fraction of protein species involved in signaling.

Results: We carry out a series of in silico experiments here to show (1) McSNAC is capable of accurately estimating the ground-truth model in a scalable manner when given data originating from a first-order system; (2) McSNAC is capable of qualitatively predicting outcomes to perturbations of species abundances in simple second-order reaction models and in a complex in silico nonlinear signaling network in which some proteins are unmeasured.

Conclusions: These findings demonstrate that McSNAC can be a valuable screening tool for generating models of signaling networks from time-stamped CyTOF data.

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