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Hybrid semiparametric systems for quantitative sequence-activity modeling of synthetic biological parts

机译:用于合成生物零部件的定量序列活动建模的混合半导体系统

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摘要

Predicting the activity of modified biological parts is difficult due to the typically large size of nucleotide sequences, resulting in combinatorial designs that suffer from the “curse of dimensionality” problem. Mechanistic design methods are often limited by knowledge availability. Empirical methods typically require large data sets, which are difficult and/or costly to obtain. In this study, we explore for the first time the combination of both approaches within a formal hybrid semiparametric framework in an attempt to overcome the limitations of the current approaches. Protein translation as a function of the 5’ untranslated region sequence in Escherichia coli is taken as case study. Thermodynamic modeling, partial least squares (PLS) and hybrid parallel combinations thereof are compared for different data sets and data partitioning scenarios. The results suggest a significant and systematic reduction of both calibration and prediction errors by the hybrid approach in comparison to standalone thermodynamic or PLS modeling. Although with different magnitudes, improvements are observed irrespective of sample size and partitioning method. All in all the results suggest an increase of predictive power by the hybrid method potentially leading to a more efficient design of biological parts.
机译:由于典型大尺寸的核苷酸序列,预测改性生物部分的活性是困难的,导致组合设计患有“维度的诅咒”问题。机械设计方法通常受知识可用性的限制。经验方法通常需要大数据集,这是难以和/或昂贵的。在本研究中,我们首次探索两种方法在正式的混合半导体框架内的组合,以克服目前方法的局限性。作为案例研究,将作为大肠杆菌的5'未转换区域序列的函数作为案例研究。与不同的数据集和数据分区方案进行比较热力学建模,局部最小二乘(PLS)和其混合并行组合。结果表明,与独立的热力学或PLS建模相比,通过混合方法提出了校准和预测误差的显着和系统化。尽管具有不同的幅度,但不论样品大小和分配方法如何观察到改进。所有结果都表明,通过杂交方法可能导致更有效地设计生物零件的预测性。

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