School of Computer Science, Qufu Normal University, Rizhao 276826, China.
Genes (Basel). 2022 Dec 18;13(12):2403. doi: 10.3390/genes13122403.
Epistatic interactions are referred to as SNPs (single nucleotide polymorphisms) that affect disease development and trait expression nonlinearly, and hence identifying epistatic interactions plays a great role in explaining the pathogenesis and genetic heterogeneity of complex diseases. Many methods have been proposed for epistasis detection; nevertheless, they mainly focus on low-order epistatic interactions, two-order or three-order for instance, and often ignore high-order interactions due to computational burden. In this paper, a module detection method called MDSN is proposed for identifying high-order epistatic interactions. First, an SNP network is constructed by a construction strategy of interaction complementary, which consists of low-order SNP interactions that can be obtained from fast computations. Then, a node evaluation measure that integrates multi-topological features is proposed to improve the node expansion algorithm, where the importance of a node is comprehensively evaluated by the topological characteristics of the neighborhood. Finally, modules are detected in the constructed SNP network, which have high-order epistatic interactions associated with the disease. The MDSN was compared with four state-of-the-art methods on simulation datasets and a real Age-related Macular Degeneration dataset. The results demonstrate that MDSN has higher performance on detecting high-order interactions.
上位性相互作用是指 SNP(单核苷酸多态性),它们以非线性方式影响疾病的发展和表型表达,因此,识别上位性相互作用对于解释复杂疾病的发病机制和遗传异质性起着重要作用。已经提出了许多用于检测上位性的方法;然而,它们主要集中在低阶上位性相互作用上,例如二阶或三阶,并且由于计算负担,往往忽略了高阶相互作用。在本文中,提出了一种称为 MDSN 的模块检测方法,用于识别高阶上位性相互作用。首先,通过交互互补的构建策略构建 SNP 网络,该策略由可以通过快速计算获得的低阶 SNP 相互作用组成。然后,提出了一种集成多拓扑特征的节点评估度量标准,以改进节点扩展算法,其中通过邻居的拓扑特征全面评估节点的重要性。最后,在构建的 SNP 网络中检测与疾病相关的高阶上位性相互作用的模块。将 MDSN 与四个最先进的方法在模拟数据集和真实的年龄相关性黄斑变性数据集上进行了比较。结果表明,MDSN 在检测高阶相互作用方面具有更高的性能。