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An Effective Numerical Calculation Method for Multi-Time-Scale Mathematical Models in Systems Biology

机译:系统生物学中多时标数学模型的一种有效数值计算方法

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The improvements of high-throughput experimental devices such as microarray and mass spectrometry have allowed an effective acquisition of biological comprehensive data which include genome, transcriptome, proteome, and metabolome (multi-layered omics data). In Systems Biology, we try to elucidate various dynamical characteristics of biological functions with applying the omics data to detailed mathematical model based on the central dogma. However, such mathematical models possess multi-time-scale properties which are often accompanied by time-scale differences seen among biological layers. The differences cause time stiff problem, and have a grave influence on numerical calculation stability. In the present conventional method, the time stiff problem remained because the calculation of all layers was implemented by adaptive time step sizes of the smallest time-scale layer to ensure stability and maintain calculation accuracy. In this paper, we designed and developed an effective numerical calculation method to improve the time stiff problem. This method consisted of ahead, backward, and cumulative algorithms. Both ahead and cumulative algorithms enhanced calculation efficiency of numerical calculations via adjustments of step sizes of each layer, and reduced the number of numerical calculations required for multi-time-scale models with the time stiff problem. Backward algorithm ensured calculation accuracy in the multi-time-scale models. In case studies which were focused on three layers system with 60 times difference in time-scale order in between layers, a proposed method had almost the same calculation accuracy compared with the conventional method in spite of a reduction of the total amount of the number of numerical calculations. Accordingly, the proposed method is useful in a numerical analysis of multi-time-scale models with time stiff problem.
机译:高通量实验设备(如微阵列和质谱法)的改进,使得可以有效地获取包括基因组,转录组,蛋白质组和代谢组(多层组学数据)在内的生物学综合数据。在系统生物学中,我们尝试通过将组学数据应用于基于中心教条的详细数学模型来阐明生物学功能的各种动力学特征。然而,这样的数学模型具有多时间尺度的性质,通常伴随着在生物层之间看到的时间尺度的差异。这些差异会引起时间刚性问题,并对数值计算的稳定性产生重大影响。在当前的传统方法中,由于所有层的计算都是通过最小时标层的自适应时间步长实现的,从而确保稳定性并保持计算精度,因此仍然存在时间刚性问题。在本文中,我们设计并开发了一种有效的数值计算方法来改善时间刚度问题。该方法由前进,后退和累积算法组成。提前算法和累积算法都通过调整每一层的步长来提高数值计算的计算效率,并减少了具有时间刚性问题的多时标模型所需的数值计算数量。向后算法确保了多时间尺度模型的计算精度。在针对三层系统的案例研究中,两层之间的时标顺序相差60倍,尽管减少了总数量,但与传统方法相比,该方法的计算精度几乎相同。数值计算。因此,所提出的方法可用于具有时间刚度问题的多时间尺度模型的数值分析。

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