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决策树建模可预测抑制收缩信号对细胞运动的影响。

Decision tree modeling predicts effects of inhibiting contractility signaling on cell motility.

作者信息

Kharait Sourabh, Hautaniemi Sampsa, Wu Shan, Iwabu Akihiro, Lauffenburger Douglas A, Wells Alan

机构信息

Department of Pathology, University of Pittsburgh, Pittsburgh, PA 15213, USA.

出版信息

BMC Syst Biol. 2007 Jan 29;1:9. doi: 10.1186/1752-0509-1-9.

Abstract

BACKGROUND

Computational models of cell signaling networks typically are aimed at capturing dynamics of molecular components to derive quantitative insights from prior experimental data, and to make predictions concerning altered dynamics under different conditions. However, signaling network models have rarely been used to predict how cell phenotypic behaviors result from the integrated operation of these networks. We recently developed a decision tree model for how EGF-induced fibroblast cell motility across two-dimensional fibronectin-coated surfaces depends on the integrated activation status of five key signaling nodes, including a proximal regulator of transcellular contractile force generation, MLC (myosin light chain) [Hautaniemi et al, Bioinformatics 21: 2027 {2005}], but we have not previously attempted predictions of new experimental effects from this model.

RESULTS

In this new work, we construct an improved decision tree model for the combined influence of EGF and fibronectin on fibroblast cell migration based on a wider spectrum of experimental protein signaling and cell motility measurements, and directly test a significant and non-intuitive a priori prediction for the outcome of a targeted molecular intervention into the signaling network: that partially reducing activation of MLC would increase cell motility on moderately adhesive surfaces. This prediction was indeed confirmed experimentally: partial inhibition of the activating MLC kinase (MLCK) upstream using the pharmacologic agent ML-7 resulted in increased motility of NR6 fibroblasts. We further extended this exciting finding by showing that partial reduction of MLC activation similarly enhanced the transmigration of the human breast carcinoma cell line MDA-213 through a Matrigel barrier.

CONCLUSION

These findings specifically highlight a central regulatory role for transcellular contractility in governing cell motility, while at the same time demonstrating the value of a decision tree approach to a systems "signal-response" model in discerning non-intuitive behavior arising from integrated operation a cell signaling network.

摘要

背景

细胞信号网络的计算模型通常旨在捕捉分子成分的动态变化,以便从先前的实验数据中获得定量见解,并预测不同条件下动态变化的改变。然而,信号网络模型很少被用于预测这些网络的综合运作如何导致细胞表型行为。我们最近开发了一种决策树模型,用于研究表皮生长因子(EGF)诱导的成纤维细胞在二维纤连蛋白包被表面上的运动如何取决于五个关键信号节点的综合激活状态,其中包括跨细胞收缩力产生的近端调节因子肌球蛋白轻链(MLC)[豪塔涅米等人,《生物信息学》21: 2027(2005年)],但我们之前尚未尝试从该模型预测新的实验效应。

结果

在这项新研究中,我们基于更广泛的实验性蛋白质信号传导和细胞运动测量结果,构建了一个改进的决策树模型,用于研究EGF和纤连蛋白对成纤维细胞迁移的联合影响,并直接测试了针对信号网络进行靶向分子干预结果的一个重要且非直观的先验预测:即部分降低MLC的激活会增加细胞在中等黏附表面上的运动性。这一预测确实得到了实验证实:使用药物ML - 7对上游激活型肌球蛋白轻链激酶(MLCK)进行部分抑制,导致NR6成纤维细胞的运动性增加。我们进一步扩展了这一令人兴奋的发现,表明部分降低MLC激活同样增强了人乳腺癌细胞系MDA - 213穿过基质胶屏障的迁移能力。

结论

这些发现特别突出了跨细胞收缩性在控制细胞运动中的核心调节作用,同时证明了决策树方法在系统“信号 - 反应”模型中对于识别细胞信号网络综合运作产生的非直观行为的价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/220e/1839898/a308fd7f4ca4/1752-0509-1-9-1.jpg

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