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Prediction of Metabolic Flux Distribution from Gene Expression Data Based on the Flux Minimization Principle

机译:基于通量最小化原理的基因表达数据的代谢通量分布预测

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摘要

Prediction of possible flux distributions in a metabolic network provides detailed phenotypic information that links metabolism to cellular physiology. To estimate metabolic steady-state fluxes, the most common approach is to solve a set of macroscopic mass balance equations subjected to stoichiometric constraints while attempting to optimize an assumed optimal objective function. This assumption is justifiable in specific cases but may be invalid when tested across different conditions, cell populations, or other organisms. With an aim to providing a more consistent and reliable prediction of flux distributions over a wide range of conditions, in this article we propose a framework that uses the flux minimization principle to predict active metabolic pathways from mRNA expression data. The proposed algorithm minimizes a weighted sum of flux magnitudes, while biomass production can be bounded to fit an ample range from very low to very high values according to the analyzed context. We have formulated the flux weights as a function of the corresponding enzyme reaction's gene expression value, enabling the creation of context-specific fluxes based on a generic metabolic network. In case studies of wild-type Saccharomyces cerevisiae, and wild-type and mutant Escherichia coli strains, our method achieved high prediction accuracy, as gauged by correlation coefficients and sums of squared error, with respect to the experimentally measured values. In contrast to other approaches, our method was able to provide quantitative predictions for both model organisms under a variety of conditions. Our approach requires no prior knowledge or assumption of a context-specific metabolic functionality and does not require trial-and-error parameter adjustments. Thus, our framework is of general applicability for modeling the transcription-dependent metabolism of bacteria and yeasts.
机译:代谢网络中可能通量分布的预测提供了将代谢与细胞生理联系起来的详细表型信息。为了估计代谢稳态流量,最常见的方法是求解一组受化学计量约束的宏观质量平衡方程,同时尝试优化假定的最佳目标函数。该假设在特定情况下是合理的,但在不同条件,细胞群体或其他生物上进行测试时可能无效。为了在更广泛的条件下提供更一致,更可靠的通量分布预测,在本文中,我们提出了一个框架,该框架使用通量最小化原理从mRNA表达数据预测活性代谢途径。所提出的算法使通量大小的加权总和最小,而根据所分析的上下文,可以限制生物量的生产以适应从非常低到非常高的值的足够范围。我们已将通量权重公式化为相应酶反应的基因表达值的函数,从而能够基于通用代谢网络创建特定于上下文的通量。在对野生型酿酒酵母,野生型和突变型大肠杆菌菌株进行案例研究的情况下,我们的方法获得了较高的预测准确度,这是通过相关系数和平方误差和相对于实验测量值来衡量的。与其他方法相比,我们的方法能够在多种条件下为两种模型生物提供定量预测。我们的方法不需要先验知识或特定背景下的代谢功能假设,也不需要反复试验参数调整。因此,我们的框架对于建模细菌和酵母的转录依赖性代谢具有普遍适用性。

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