Research Center for Computing, National Research and Innovation Agency (BRIN), Cibinong Science Center, Jl. Raya Jakarta-Bogor KM 46, Cibinong 16911, West Java, Indonesia.
School of IT Convergence, University of Ulsan, 93 Daehak-ro, Nam-gu, Ulsan 44610, Korea.
Biomolecules. 2022 Aug 18;12(8):1139. doi: 10.3390/biom12081139.
Pleiotropy, which refers to the ability of different mutations on the same gene to cause different pathological effects in human genetic diseases, is important in understanding system-level biological diseases. Although some biological experiments have been proposed, still little is known about pleiotropy on gene-gene dynamics, since most previous studies have been based on correlation analysis. Therefore, a new perspective is needed to investigate pleiotropy in terms of gene-gene dynamical characteristics. To quantify pleiotropy in terms of network dynamics, we propose a measure called in silico Pleiotropic Scores (sPS), which represents how much a gene is affected against a pair of different types of mutations on a Boolean network model. We found that our model can identify more candidate pleiotropic genes that are not known to be pleiotropic than the experimental database. In addition, we found that many types of functionally important genes tend to have higher sPS values than other genes; in other words, they are more pleiotropic. We investigated the relations of sPS with the structural properties in the signaling network and found that there are highly positive relations to degree, feedback loops, and centrality measures. This implies that the structural characteristics are principles to identify new pleiotropic genes. Finally, we found some biological evidence showing that sPS analysis is relevant to the real pleiotropic data and can be considered a novel candidate for pleiotropic gene research. Taken together, our results can be used to understand the dynamics pleiotropic characteristics in complex biological systems in terms of gene-phenotype relations.
复效性是指同一基因上的不同突变在人类遗传疾病中引起不同病理效应的能力,对于理解系统水平的生物疾病非常重要。尽管已经提出了一些生物学实验,但对于基因-基因动力学上的复效性仍然知之甚少,因为之前的大多数研究都是基于相关性分析。因此,需要从基因-基因动力学特征的角度来研究复效性。为了从网络动力学的角度量化复效性,我们提出了一种称为计算机模拟复效性评分(sPS)的方法,它代表了一个基因在布尔网络模型上受到一对不同类型突变影响的程度。我们发现,与实验数据库相比,我们的模型可以识别出更多已知的非复效性候选基因。此外,我们发现许多类型的功能重要基因往往比其他基因具有更高的 sPS 值;换句话说,它们更具有复效性。我们研究了 sPS 与信号网络中结构性质的关系,发现与度、反馈环和中心性度量有高度正相关。这意味着结构特征是识别新的复效性基因的原则。最后,我们发现了一些生物学证据表明 sPS 分析与真实的复效性数据相关,可以被认为是复效性基因研究的新候选者。综上所述,我们的结果可以用于理解复杂生物系统中基因-表型关系的动态复效性特征。