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A machine learning approach to predict metabolic pathway dynamics from time-series multiomics data

机译:一种从时序多组学数据预测代谢途径动态的机器学习方法

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New synthetic biology capabilities hold the promise of dramatically improving our ability to engineer biological systems. However, a fundamental hurdle in realizing this potential is our inability to accurately predict biological behavior after modifying the corresponding genotype. Kinetic models have traditionally been used to predict pathway dynamics in bioengineered systems, but they take significant time to develop, and rely heavily on domain expertise. Here, we show that the combination of machine learning and abundant multiomics data (proteomics and metabolomics) can be used to effectively predict pathway dynamics in an automated fashion. The new method outperforms a classical kinetic model, and produces qualitative and quantitative predictions that can be used to productively guide bioengineering efforts. This method systematically leverages arbitrary amounts of new data to improve predictions, and does not assume any particular interactions, but rather implicitly chooses the most predictive ones.
机译:新的合成生物学功能有望大大提高我们对生物系统进行工程设计的能力。但是,实现这种潜力的一个基本障碍是我们无法在修改相应的基因型后准确预测生物学行为。动力学模型传统上一直用于预测生物工程系统中的途径动力学,但它们需要大量时间来开发,并且严重依赖领域专业知识。在这里,我们证明了机器学习和丰富的多组学数据(蛋白质组学和代谢组学)的组合可用于以自动化方式有效预测途径动力学。新方法的性能优于经典动力学模型,并产生了定性和定量的预测,可用于有效指导生物工程工作。该方法系统地利用任意数量的新数据来改善预测,并且不假设任何特定的交互,而是隐式选择最具预测性的交互。

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