Insights into yeast response to chemotherapeutic agent through time series genome-scale metabolic models

IF 3.5 2区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Muhammed E. Karabekmez
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Abstract

Organism-specific genome-scale metabolic models (GSMMs) can unveil molecular mechanisms within cells and are commonly used in diverse applications, from synthetic biology, biotechnology, and systems biology to metabolic engineering. There are limited studies incorporating time-series transcriptomics in GSMM simulations. Yeast is an easy-to-manipulate model organism for tumor research. Here, a novel approach (TS-GSMM) was proposed to integrate time-series transcriptomics with GSMMs to narrow down the feasible solution space of all possible flux distributions and attain time-series flux samples. The flux samples were clustered using machine learning techniques, and the clusters' functional analysis was performed using reaction set enrichment analysis. A time series transcriptomics response of Yeast cells to a chemotherapeutic reagent—doxorubicin—was mapped onto a Yeast GSMM. Eleven flux clusters were obtained with our approach, and pathway dynamics were displayed. Induction of fluxes related to bicarbonate formation and transport, ergosterol and spermidine transport, and ATP production were captured. Integrating time-series transcriptomics data with GSMMs is a promising approach to reveal pathway dynamics without any kinetic modeling and detects pathways that cannot be identified through transcriptomics-only analysis. The codes are available at https://github.com/karabekmez/TS-GSMM.

Abstract Image

通过时间序列基因组尺度代谢模型深入了解酵母对化疗药物的反应
生物特异性基因组尺度代谢模型(GSMMs)可以揭示细胞内的分子机制,通常用于合成生物学、生物技术、系统生物学和代谢工程等多种应用领域。将时间序列转录组学纳入 GSMM 模拟的研究还很有限。酵母是一种易于操作的肿瘤研究模式生物。本文提出了一种新方法(TS-GSMM),将时间序列转录组学与 GSMMs 结合起来,缩小所有可能通量分布的可行解空间,并获得时间序列通量样本。利用机器学习技术对通量样本进行聚类,并利用反应集富集分析对聚类进行功能分析。酵母细胞对化疗试剂--多柔比星--的时间序列转录组学反应被映射到酵母GSMM上。我们的方法获得了 11 个通量簇,并显示了通路动态。我们捕捉到了与碳酸氢盐形成和运输、麦角甾醇和亚精胺运输以及 ATP 生产相关的通量诱导。将时间序列转录组学数据与 GSMMs 相结合是一种很有前途的方法,它能揭示通路动态,而无需任何动力学建模,并能检测到仅通过转录组学分析无法确定的通路。代码可在 https://github.com/karabekmez/TS-GSMM 网站上获取。
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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来源期刊
Biotechnology and Bioengineering
Biotechnology and Bioengineering 工程技术-生物工程与应用微生物
CiteScore
7.90
自引率
5.30%
发文量
280
审稿时长
2.1 months
期刊介绍: Biotechnology & Bioengineering publishes Perspectives, Articles, Reviews, Mini-Reviews, and Communications to the Editor that embrace all aspects of biotechnology. These include: -Enzyme systems and their applications, including enzyme reactors, purification, and applied aspects of protein engineering -Animal-cell biotechnology, including media development -Applied aspects of cellular physiology, metabolism, and energetics -Biocatalysis and applied enzymology, including enzyme reactors, protein engineering, and nanobiotechnology -Biothermodynamics -Biofuels, including biomass and renewable resource engineering -Biomaterials, including delivery systems and materials for tissue engineering -Bioprocess engineering, including kinetics and modeling of biological systems, transport phenomena in bioreactors, bioreactor design, monitoring, and control -Biosensors and instrumentation -Computational and systems biology, including bioinformatics and genomic/proteomic studies -Environmental biotechnology, including biofilms, algal systems, and bioremediation -Metabolic and cellular engineering -Plant-cell biotechnology -Spectroscopic and other analytical techniques for biotechnological applications -Synthetic biology -Tissue engineering, stem-cell bioengineering, regenerative medicine, gene therapy and delivery systems The editors will consider papers for publication based on novelty, their immediate or future impact on biotechnological processes, and their contribution to the advancement of biochemical engineering science. Submission of papers dealing with routine aspects of bioprocessing, description of established equipment, and routine applications of established methodologies (e.g., control strategies, modeling, experimental methods) is discouraged. Theoretical papers will be judged based on the novelty of the approach and their potential impact, or on their novel capability to predict and elucidate experimental observations.
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