FluxRETAP:一种用于选择基因靶标的反应靶标优先级的命名尺度建模技术。

IF 5.4
Jeffrey J Czajka, Joonhoon Kim, Yinjie J Tang, Kyle R Pomraning, Aindrila Mukhopadhyay, Hector Garcia Martin
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引用次数: 0

摘要

动机:由于合成生物学工具和自动化平台的新进展,代谢工程正在迅速发展,这些工具和自动化平台能够实现高通量菌株构建,以及生物学机器学习工具(ML)的发展。然而,选择有效指导代谢工程过程的基因工程靶点仍然具有挑战性。ML可以为合成生物学提供预测能力,但目前的技术限制阻止了在没有先前生物学知识的情况下独立使用ML方法。结果:在这里,我们提出了FluxRETAP,这是一种简单且计算成本低廉的方法,利用基因组尺度模型(GSMs)中嵌入的先前机制知识来建议基因过表达,下调或缺失的靶标,最终目标是增加所需代谢物的产生。这种方法可以提供一个理想的工程目标列表,这些目标可以与当前的机器学习管道相结合。FluxRETAP捕获了100%经实验验证可提高大肠杆菌异戊二醇产量的反应靶标,50%经实验验证可提高大肠杆菌中taxadi烯产量的靶标,以及来自经验证的恶臭假单胞菌最小约束切割集的约60%的遗传靶标,同时提供了可测试的额外高优先级靶标。总的来说,FluxRETAP是一种有效的算法,用于确定可测试的基因和反应目标的优先列表。可用性:FluxRETAP是用python实现的,并在创作共用许可下发布。实施和代码可在以下网站免费获得:(https://github.com/JBEI/FluxRETAP).Supplementary information:补充数据可在Bioinformatics网站在线获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

FluxRETAP: a REaction TArget Prioritization genome-scale modeling technique for selecting genetic targets.

FluxRETAP: a REaction TArget Prioritization genome-scale modeling technique for selecting genetic targets.

Motivation: Metabolic engineering is rapidly evolving as a result of new advances in synthetic biology tools and automation platforms that enable high throughput strain construction, as well as the development of machine learning tools (ML) for biology. However, selecting genetic engineering targets that effectively guide the metabolic engineering process is still challenging. ML can provide predictive power for synthetic biology, but current technical limitations prevent the independent use of ML approaches without previous biological knowledge.

Results: Here, we present FluxRETAP, a simple and computationally inexpensive method that leverages the prior mechanistic knowledge embedded in genome-scale models for suggesting targets for genetic overexpression, downregulation or deletion, with the final goal of increasing the production of a desired metabolite. This method can provide a list of desirable engineering targets that can be combined with current ML pipelines. FluxRETAP captured 100% of reaction targets experimentally verified to improve Escherichia coli isoprenol production, 50% of targets that experimentally improved taxadiene production in E. coli and ∼60% of genetic targets from a verified minimal constrained cut-set in Pseudomonas putida, while providing additional high priority targets that could be tested. Overall, FluxRETAP is an efficient algorithm for identifying a prioritized list of testable genetic and reaction targets.

Availability and implementation: FluxRETAP is implemented in python and released under the creative commons license. The implementation and code are freely available at: https://github.com/JBEI/FluxRETAP.

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