Université Paris-Saclay, CEA, Neurospin, Gif-sur-Yvette, France.
Université Paris-Saclay, CEA, Centre National de Recherche en Génomique Humaine, Evry, France.
Eur J Hum Genet. 2021 Sep;29(9):1424-1437. doi: 10.1038/s41431-021-00827-8. Epub 2021 Mar 4.
Neuroimaging-genetics cohorts gather two types of data: brain imaging and genetic data. They allow the discovery of associations between genetic variants and brain imaging features. They are invaluable resources to study the influence of genetics and environment in the brain features variance observed in normal and pathological populations. This study presents a genome-wide haplotype analysis for 123 brain sulcus opening value (a measure of sulcal width) across the whole brain that include 16,304 subjects from UK Biobank. Using genetic maps, we defined 119,548 blocks of low recombination rate distributed along the 22 autosomal chromosomes and analyzed 1,051,316 haplotypes. To test associations between haplotypes and complex traits, we designed three statistical approaches. Two of them use a model that includes all the haplotypes for a single block, while the last approach considers each haplotype independently. All the statistics produced were assessed as rigorously as possible. Thanks to the rich imaging dataset at hand, we used resampling techniques to assess False Positive Rate for each statistical approach in a genome-wide and brain-wide context. The results on real data show that genome-wide haplotype analyses are more sensitive than single-SNP approach and account for local complex Linkage Disequilibrium (LD) structure, which makes genome-wide haplotype analysis an interesting and statistically sound alternative to the single-SNP counterpart.
神经影像学-遗传学队列收集两种类型的数据:脑影像学和遗传学数据。它们允许发现遗传变异与脑影像学特征之间的关联。它们是研究遗传学和环境对正常和病理人群中观察到的大脑特征变异影响的宝贵资源。本研究对来自英国生物银行的 16304 名受试者的整个大脑的 123 个脑沟开口值(脑沟宽度的一种测量方法)进行了全基因组单倍型分析。使用遗传图谱,我们定义了 119548 个低重组率的块,这些块沿着 22 条常染色体分布,并分析了 1051316 个单倍型。为了测试单倍型与复杂特征之间的关联,我们设计了三种统计方法。其中两种方法使用包含单个块中所有单倍型的模型,而最后一种方法则独立考虑每个单倍型。所有产生的统计数据都尽可能严格地进行了评估。由于手头有丰富的成像数据集,我们使用重采样技术在全基因组和大脑范围内评估了每种统计方法的假阳性率。真实数据的结果表明,全基因组单倍型分析比单 SNP 方法更敏感,并且考虑了局部复杂的连锁不平衡(LD)结构,这使得全基因组单倍型分析成为单 SNP 方法的一种有趣且具有统计学意义的替代方法。