整合图神经网络和基因组尺度代谢模型预测基因本质

IF 3.5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY NPJ Systems Biology and Applications Pub Date : 2024-03-06 DOI:10.1038/s41540-024-00348-2
Ramin Hasibi, Tom Michoel, Diego A. Oyarzún
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引用次数: 0

摘要

基因组尺度的代谢模型是了解细胞生理学的有力工具。通量平衡分析(FBA)是一种基于优化的方法,被广泛用于预测代谢表型。在大肠杆菌等模式微生物中,通量平衡分析法成功地预测了必需基因,即那些被删除后会影响生存的基因。这种方法的一个核心假设是,野生型菌株和缺失菌株都能优化相同的适应性目标。虽然野生型代谢网络的最优性假设可能成立,但缺失株并不承受相同的进化压力,基因敲除突变体可能会引导其代谢以满足其他生存目标。在这里,我们提出了一种混合 FBA 机器学习策略--FlowGAT,用于直接从野生型代谢表型预测本质。该方法基于 FBA 预测的代谢通量的图结构表示法,其中节点对应酶促反应,边量化一个反应与其邻近反应之间代谢物质量流的传播。我们将这些信息整合到图神经网络中,该网络可在基因敲除适配性检测数据上进行训练。通过比较不同的模型架构,我们发现在几种生长条件下,FlowGAT 对大肠杆菌的预测结果与 FBA 的预测结果接近。这表明,利用新陈代谢固有的网络结构可以预测酶基因的本质。我们的方法展示了将基因组规模模型提供的机理见解与深度学习从复杂数据集中推断模式的能力相结合的好处。
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Integration of graph neural networks and genome-scale metabolic models for predicting gene essentiality

Genome-scale metabolic models are powerful tools for understanding cellular physiology. Flux balance analysis (FBA), in particular, is an optimization-based approach widely employed for predicting metabolic phenotypes. In model microbes such as Escherichia coli, FBA has been successful at predicting essential genes, i.e. those genes that impair survival when deleted. A central assumption in this approach is that both wild type and deletion strains optimize the same fitness objective. Although the optimality assumption may hold for the wild type metabolic network, deletion strains are not subject to the same evolutionary pressures and knock-out mutants may steer their metabolism to meet other objectives for survival. Here, we present FlowGAT, a hybrid FBA-machine learning strategy for predicting essentiality directly from wild type metabolic phenotypes. The approach is based on graph-structured representation of metabolic fluxes predicted by FBA, where nodes correspond to enzymatic reactions and edges quantify the propagation of metabolite mass flow between a reaction and its neighbours. We integrate this information into a graph neural network that can be trained on knock-out fitness assay data. Comparisons across different model architectures reveal that FlowGAT predictions for E. coli are close to those of FBA for several growth conditions. This suggests that essentiality of enzymatic genes can be predicted by exploiting the inherent network structure of metabolism. Our approach demonstrates the benefits of combining the mechanistic insights afforded by genome-scale models with the ability of deep learning to infer patterns from complex datasets.

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来源期刊
NPJ Systems Biology and Applications
NPJ Systems Biology and Applications Mathematics-Applied Mathematics
CiteScore
5.80
自引率
0.00%
发文量
46
审稿时长
8 weeks
期刊介绍: npj Systems Biology and Applications is an online Open Access journal dedicated to publishing the premier research that takes a systems-oriented approach. The journal aims to provide a forum for the presentation of articles that help define this nascent field, as well as those that apply the advances to wider fields. We encourage studies that integrate, or aid the integration of, data, analyses and insight from molecules to organisms and broader systems. Important areas of interest include not only fundamental biological systems and drug discovery, but also applications to health, medical practice and implementation, big data, biotechnology, food science, human behaviour, broader biological systems and industrial applications of systems biology. We encourage all approaches, including network biology, application of control theory to biological systems, computational modelling and analysis, comprehensive and/or high-content measurements, theoretical, analytical and computational studies of system-level properties of biological systems and computational/software/data platforms enabling such studies.
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