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通过数学建模揭示胰腺癌患者的潜在干预措施。

Uncovering potential interventions for pancreatic cancer patients via mathematical modeling.

作者信息

Plaugher Daniel, Aguilar Boris, Murrugarra David

机构信息

Department of Mathematics, University of Kentucky, Lexington, KY, USA.

Institute for Systems Biology, Seattle, WA, USA.

出版信息

J Theor Biol. 2022 Sep 7;548:111197. doi: 10.1016/j.jtbi.2022.111197. Epub 2022 Jun 22.

Abstract

Pancreatic Ductal Adenocarcinoma (PDAC) is widely known for its poor prognosis because it is often diagnosed when the cancer is in a later stage. We built a Boolean model to analyze the microenvironment of pancreatic cancer in order to better understand the interplay between pancreatic cancer, stellate cells, and their signaling cytokines. Specifically, we have used our model to study the impact of inducing four common mutations: KRAS, TP53, SMAD4, and CDKN2A. After implementing the various mutation combinations, we used our stochastic simulator to derive aggressiveness scores based on simulated attractor probabilities and long-term trajectory approximations. These aggression scores were then corroborated with clinical data. Moreover, we found sets of control targets that are effective among common mutations. These control sets contain nodes within both the pancreatic cancer cell and the pancreatic stellate cell, including PIP3, RAF, PIK3 and BAX in pancreatic cancer cell as well as ERK and PIK3 in the pancreatic stellate cell. Many of these nodes were found to be differentially expressed among pancreatic cancer patients in the TCGA database. Furthermore, literature suggests that many of these nodes can be targeted by drugs currently in circulation. The results herein help provide a proof of concept in the path towards personalized medicine through a means of mathematical systems biology. All data and code used for running simulations, statistical analysis, and plotting is available on a GitHub repository athttps://github.com/drplaugher/PCC_Mutations.

摘要

胰腺导管腺癌(PDAC)因其预后较差而广为人知,因为它通常在癌症处于晚期时才被诊断出来。我们构建了一个布尔模型来分析胰腺癌的微环境,以便更好地理解胰腺癌、星状细胞及其信号细胞因子之间的相互作用。具体而言,我们使用我们的模型来研究诱导四种常见突变(KRAS、TP53、SMAD4和CDKN2A)的影响。在实施各种突变组合后,我们使用我们的随机模拟器根据模拟吸引子概率和长期轨迹近似来得出侵袭性分数。然后将这些侵袭分数与临床数据进行了验证。此外,我们发现了在常见突变中有效的控制靶点集。这些控制集包含胰腺癌细胞和胰腺星状细胞内的节点,包括胰腺癌细胞中的PIP3、RAF、PIK3和BAX以及胰腺星状细胞中的ERK和PIK3。在TCGA数据库中发现这些节点中的许多在胰腺癌患者中存在差异表达。此外,文献表明这些节点中的许多可以被目前正在流通的药物靶向。本文的结果有助于通过数学系统生物学方法为个性化医疗的道路提供概念验证。用于运行模拟、统计分析和绘图的所有数据和代码可在GitHub存储库https://github.com/drplaugher/PCC_Mutations上获取。

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