基于混合并行遗传算法和阈值限定法的基因调控网络动态模型推断

Q4 Agricultural and Biological Sciences International Journal Bioautomation Pub Date : 2024-03-01 DOI:10.7546/ijba.2024.28.1.000928
X. Ding, Huaibao Ding, Fei Zhou
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引用次数: 0

摘要

基因调控是细胞中各种物质调节基因表达行为的过程,从而控制几乎所有细胞活动。因此,研究基因调控不仅有助于揭示生命过程的内在规律,而且在遗传疾病的预测、诊断、治疗和药物设计方面也起着至关重要的作用。利用基因表达谱、转录因子信息和蛋白质相互作用数据等多源生物信息,可以建立网络模型来描述基因之间的调控关系,从而促进进一步的研究。针对传统基因调控网络构建方法的局限性,我们结合混合遗传学和阈值限制,创建了一种新型动态模型。该模型由两部分组成:解空间缩小和参数拟合。在缩小解空间时,采用奇异值分解法定义数学上可行的基因调控网络,减少不必要的计算。随后,利用阈值限制将每个基因的控制基因限制在一定范围内,在提高计算效率的同时,也符合生物信息学原理。在参数拟合阶段,利用并行遗传算法快速优化整个解空间。然后采用爬山法,在有限的范围内细致地解决问题,提高计算精度。在本研究中,这种方法被用于建立复杂皮肤黑色素瘤和 2 型糖尿病的遗传调控系统。通过与实际网络的比较,证实了该方法的有效性。与传统的遗传和粒子群优化方法相比,本文提出的方法的有效性得到了验证。本文模拟了基因调控的复杂机制,比其他模型更详细地阐明了涉及基因、蛋白质和生物小分子的调控过程,更贴近细胞内动力学规律。
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Dynamic Model Inference of Gene Regulatory Network based on Hybrid Parallel Genetic Algorithm and Threshold Qualification Method
Gene regulation is the process by which various substances in cells regulate the behaviour of gene expression, thereby controlling almost all cellular activities. Therefore, studying gene regulation not only helps to uncover the internal laws governing life processes but also plays a crucial role in predicting, diagnosing, treating, and designing drugs for genetic diseases. By utilizing multi-source biological information such as gene expression profiles, transcription factor information, and protein interaction data, a network model can be developed to depict the regulatory relationships between genes, facilitating further research. To address the limitations of traditional gene regulatory network construction methods, a novel dynamic model has been created by combining hybrid genetics and threshold restriction. This model comprises two parts: solution space reduction and parameter fitting. During solution space reduction, singular value decomposition is employed to define a mathematically feasible gene regulatory network, reducing unnecessary calculations. Subsequently, the control genes of each gene are constrained within a certain range using threshold limitation, enhancing computational efficiency while adhering to bioinformatics principles. In the parameter fitting phase, parallel genetic algorithms are utilized to expediently optimize the entire solution space. The mountain climbing method is then applied to solve problems meticulously within a limited scope, improving calculation accuracy. In this study, this approach was applied to establish genetic regulatory systems for complex skin melanoma and type 2 diabetes. Through comparison with actual networks, the validity of the method was confirmed. Compared to traditional genetic and particle swarm optimization methods, the effectiveness of the proposed method was verified. This paper models the intricate mechanism of gene regulation and elucidates the regulatory process involving genes, proteins, and small biological molecules in greater detail than other models, aligning more closely with intracellular dynamics laws.
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来源期刊
International Journal Bioautomation
International Journal Bioautomation Agricultural and Biological Sciences-Food Science
CiteScore
1.10
自引率
0.00%
发文量
22
审稿时长
12 weeks
期刊最新文献
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