Department of Biology, Johns Hopkins University, Baltimore, MD 21218;
Department of Biology, Johns Hopkins University, Baltimore, MD 21218.
Proc Natl Acad Sci U S A. 2021 Nov 16;118(46). doi: 10.1073/pnas.2109307118.
Extra or missing chromosomes-a phenomenon termed aneuploidy-frequently arise during human meiosis and embryonic mitosis and are the leading cause of pregnancy loss, including in the context of in vitro fertilization (IVF). While meiotic aneuploidies affect all cells and are deleterious, mitotic errors generate mosaicism, which may be compatible with healthy live birth. Large-scale abnormalities such as triploidy and haploidy also contribute to adverse pregnancy outcomes, but remain hidden from standard sequencing-based approaches to preimplantation genetic testing for aneuploidy (PGT-A). The ability to reliably distinguish meiotic and mitotic aneuploidies, as well as abnormalities in genome-wide ploidy, may thus prove valuable for enhancing IVF outcomes. Here, we describe a statistical method for distinguishing these forms of aneuploidy based on analysis of low-coverage whole-genome sequencing data, which is the current standard in the field. Our approach overcomes the sparse nature of the data by leveraging allele frequencies and linkage disequilibrium (LD) measured in a population reference panel. The method, which we term LD-informed PGT-A (LD-PGTA), retains high accuracy down to coverage as low as 0.05 × and at higher coverage can also distinguish between meiosis I and meiosis II errors based on signatures spanning the centromeres. LD-PGTA provides fundamental insight into the origins of human chromosome abnormalities, as well as a practical tool with the potential to improve genetic testing during IVF.
额外或缺失的染色体——一种被称为非整倍体的现象——在人类减数分裂和胚胎有丝分裂中经常出现,是妊娠丢失的主要原因,包括体外受精(IVF)的情况。虽然减数分裂非整倍体影响所有细胞且具有危害性,但有丝分裂错误会产生嵌合体,这可能与健康的活产相容。大规模异常,如三倍体和单倍体,也会导致不良的妊娠结局,但仍无法被基于标准测序的胚胎植入前遗传学检测(PGT-A)方法所发现。因此,能够可靠地区分减数分裂和有丝分裂非整倍体,以及全基因组倍性异常,可能对提高 IVF 结果具有重要意义。在这里,我们描述了一种基于低覆盖全基因组测序数据分析的区分这些非整倍体形式的统计方法,这是该领域目前的标准。我们的方法通过利用在人群参考面板中测量的等位基因频率和连锁不平衡(LD)来克服数据的稀疏性。该方法被称为基于 LD 的 PGT-A(LD-PGTA),即使在覆盖率低至 0.05×的情况下,仍能保持高准确性,并且在更高的覆盖率下,还可以根据跨越着丝粒的特征来区分减数分裂 I 和减数分裂 II 错误。LD-PGTA 为人类染色体异常的起源提供了基本的认识,同时也是一种具有潜在改进 IVF 期间遗传检测的实用工具。