异质性分析为双相情感障碍的基因同质亚型提供了证据。

ArXiv Pub Date : 2024-10-27
Caroline C McGrouther, Aaditya V Rangan, Arianna Di Florio, Jeremy A Elman, Nicholas J Schork, John Kelsoe
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引用次数: 0

摘要

躁郁症是一种高度遗传性的脑部疾病,全球约有 5000 万人受到这种疾病的影响。由于基因分型技术和生物信息学方法的最新进展,以及可用数据总量的增加,我们对躁狂症遗传基础的认识也有所提高。越来越多的人认为,BD 是多基因和异质性的,但对这种异质性的具体情况还不甚了解。在这里,我们使用一种最新开发的技术来研究躁郁症的遗传异质性。我们发现了 "双群集"(bicluster)的有力统计证据:双相情感障碍受试者的一个子集表现出一种疾病特有的遗传模式。这个双集群所揭示的结构在其他几个数据集中也得到了复制,并可用于改进躁郁症风险预测算法。我们认为,这个双簇群很可能对应于一种遗传学上不同的 BD 亚型。更广泛地说,我们相信我们的双聚类方法是一种很有前途的手段,可以在不需要可靠的亚表型数据的情况下解开复杂疾病的潜在异质性。
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Heterogeneity analysis provides evidence for a genetically homogeneous subtype of bipolar-disorder.

Background: Bipolar Disorder (BD) is a complex disease. It is heterogeneous, both at the phenotypic and genetic level, although the extent and impact of this heterogeneity is not fully understood. One way to assess this heterogeneity is to look for patterns in the subphenotype data. Because of the variability in how phenotypic data was collected by the various BD studies over the years, homogenizing this subphenotypic data is a challenging task, and so is replication. An alternative methodology, taken here, is to set aside the intricacies of subphenotype and allow the genetic data itself to determine which subjects define a homogeneous genetic subgroup (termed 'bicluster' below).

Results: In this paper, we leverage recent advances in heterogeneity analysis to look for genetically-driven subgroups (i.e., biclusters) within the broad phenotype of Bipolar Disorder. We first apply this covariate-corrected biclustering algorithm to a cohort of 2524 BD cases and 4106 controls from the Bipolar Disease Research Network (BDRN) within the Psychiatric Genomics Consortium (PGC). We find evidence of genetic heterogeneity delineating a statistically significant bicluster comprising a subset of BD cases which exhibits a disease-specific pattern of differential-expression across a subset of SNPs. This disease-specific genetic pattern (i.e., 'genetic subgroup') replicates across the remaining data-sets collected by the PGC containing 5781/8289, 3581/7591, and 6825/9752 cases/controls, respectively. This genetic subgroup (discovered without using any BD subtype information) was more prevalent in Bipolar type-I than in Bipolar type-II.

Conclusions: Our methodology has successfully identified a replicable homogeneous genetic subgroup of bipolar disorder. This subgroup may represent a collection of correlated genetic risk-factors for BDI. By investigating the subgroup's bicluster-informed polygenic-risk-scoring (PRS), we find that the disease-specific pattern highlighted by the bicluster can be leveraged to eliminate noise from our GWAS analyses and improve risk prediction. This improvement is particularly notable when using only a relatively small subset of the available SNPs, implying improved SNP replication. Though our primary focus is only the analysis of disease-related signal, we also identify replicable control-related heterogeneity.

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