利用整数线性规划学习反馈分子网络模型。

IF 2 4区 生物学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Mustafa Ozen, Effat S Emamian, Ali Abdi
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引用次数: 0

摘要

细胞内分子网络的分析在了解一些复杂疾病的分子基础和寻找药物开发的有效治疗靶点方面具有许多应用。为了进行这样的分析,分子网络需要转换成计算模型。通常,使用文献和路径数据库构建的网络模型可能无法准确预测实验网络数据。这可能是由于关于分子途径的文献不完整,用于构建网络的资源,或者资源中的一些相互冲突的信息。在本文中,我们提出了一种通过整数线性规划公式的网络学习方法,该方法可以在学习过程中系统地结合分子网络的生物动力学和调节机制。此外,我们还提出了一种在从数据中学习网络的同时适当考虑反馈路径的方法。还提供了示例来展示如何将所提出的学习方法应用于感兴趣的网络。特别地,我们将该框架应用于ERBB信号网络,并从一些实验数据中学习它。总的来说,所提出的方法有助于减少策划网络和实验数据之间的差距,并导致校准网络更可靠地做出有生物学意义的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning feedback molecular network models using integer linear programming.

Analysis of intracellular molecular networks has many applications in understanding of the molecular bases of some complex diseases and finding effective therapeutic targets for drug development. To perform such analyses, the molecular networks need to be converted into computational models. In general, network models constructed using literature and pathway databases may not accurately predict experimental network data. This can be due to the incompleteness of literature on molecular pathways, the resources used to construct the networks, or some conflicting information in the resources. In this paper, we propose a network learning approach via an integer linear programming formulation that can systematically incorporate biological dynamics and regulatory mechanisms of molecular networks in the learning process. Moreover, we present a method to properly consider the feedback paths, while learning the network from data. Examples are also provided to show how one can apply the proposed learning approach to a network of interest. In particular, we apply the framework to the ERBB signaling network, to learn it from some experimental data. Overall, the proposed methods are useful for reducing the gap between the curated networks and experimental data, and result in calibrated networks that are more reliable for making biologically meaningful predictions.

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来源期刊
Physical biology
Physical biology 生物-生物物理
CiteScore
4.20
自引率
0.00%
发文量
50
审稿时长
3 months
期刊介绍: Physical Biology publishes articles in the broad interdisciplinary field bridging biology with the physical sciences and engineering. This journal focuses on research in which quantitative approaches – experimental, theoretical and modeling – lead to new insights into biological systems at all scales of space and time, and all levels of organizational complexity. Physical Biology accepts contributions from a wide range of biological sub-fields, including topics such as: molecular biophysics, including single molecule studies, protein-protein and protein-DNA interactions subcellular structures, organelle dynamics, membranes, protein assemblies, chromosome structure intracellular processes, e.g. cytoskeleton dynamics, cellular transport, cell division systems biology, e.g. signaling, gene regulation and metabolic networks cells and their microenvironment, e.g. cell mechanics and motility, chemotaxis, extracellular matrix, biofilms cell-material interactions, e.g. biointerfaces, electrical stimulation and sensing, endocytosis cell-cell interactions, cell aggregates, organoids, tissues and organs developmental dynamics, including pattern formation and morphogenesis physical and evolutionary aspects of disease, e.g. cancer progression, amyloid formation neuronal systems, including information processing by networks, memory and learning population dynamics, ecology, and evolution collective action and emergence of collective phenomena.
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