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PHENSIM:表型模拟器。

PHENSIM: Phenotype Simulator.

机构信息

Bioinformatics Unit, Department of Clinical and Experimental Medicine, University of Catania, Catania, Italy.

Department of Physics and Astronomy, University of Catania, Catania, Italy.

出版信息

PLoS Comput Biol. 2021 Jun 24;17(6):e1009069. doi: 10.1371/journal.pcbi.1009069. eCollection 2021 Jun.

Abstract

Despite the unprecedented growth in our understanding of cell biology, it still remains challenging to connect it to experimental data obtained with cells and tissues' physiopathological status under precise circumstances. This knowledge gap often results in difficulties in designing validation experiments, which are usually labor-intensive, expensive to perform, and hard to interpret. Here we propose PHENSIM, a computational tool using a systems biology approach to simulate how cell phenotypes are affected by the activation/inhibition of one or multiple biomolecules, and it does so by exploiting signaling pathways. Our tool's applications include predicting the outcome of drug administration, knockdown experiments, gene transduction, and exposure to exosomal cargo. Importantly, PHENSIM enables the user to make inferences on well-defined cell lines and includes pathway maps from three different model organisms. To assess our approach's reliability, we built a benchmark from transcriptomics data gathered from NCBI GEO and performed four case studies on known biological experiments. Our results show high prediction accuracy, thus highlighting the capabilities of this methodology. PHENSIM standalone Java application is available at https://github.com/alaimos/phensim, along with all data and source codes for benchmarking. A web-based user interface is accessible at https://phensim.tech/.

摘要

尽管我们对细胞生物学的理解取得了前所未有的增长,但将其与在精确情况下获得的细胞和组织生理病理状态的实验数据联系起来仍然具有挑战性。这种知识差距常常导致验证实验的设计困难,这些实验通常劳动强度大、成本高且难以解释。在这里,我们提出了 PHENSIM,这是一种使用系统生物学方法的计算工具,可模拟细胞表型如何受到一种或多种生物分子的激活/抑制的影响,它通过利用信号通路来实现这一点。我们的工具的应用包括预测药物给药、敲低实验、基因转导和外体货物暴露的结果。重要的是,PHENSIM 允许用户对明确定义的细胞系进行推断,并包括来自三个不同模型生物的途径图。为了评估我们方法的可靠性,我们从 NCBI GEO 收集的转录组学数据构建了一个基准,并对已知的生物学实验进行了四个案例研究。我们的结果显示了较高的预测准确性,从而突出了这种方法的能力。PHENSIM 独立的 Java 应用程序可在 https://github.com/alaimos/phensim 上获得,同时还提供基准测试的所有数据和源代码。一个基于网络的用户界面可在 https://phensim.tech/ 上访问。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e377/8224893/0eda44bf0b64/pcbi.1009069.g001.jpg

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