单倍型
遗传学
植入前遗传学诊断
色素失禁
生物
遗传连锁
突变
X连锁隐性遗传
极体
等位基因
基因
X染色体
胚胎
减数分裂
作者
Gheona Altarescu,Talia Eldar‐Geva,I. Varshower,B. Brooks,E. Zylber Haran,Ehud J. Margalioth,Ephrat Levy‐Lahad,Paul Renbaum
出处
期刊:Human Reproduction
[Oxford University Press]
日期:2009-08-17
卷期号:24 (12): 3225-3229
被引量:22
标识
DOI:10.1093/humrep/dep293
摘要
Single cell diagnosis for preimplantation genetic diagnosis (PGD) requires simultaneous analysis of multiple linked polymorphic markers in addition to mutation analysis in order to reduce misdiagnosis. This type of analysis requires building family haplotypes spanning at least two generations. We present three childless couples in whom the female was a de novo mutation carrier in the Duchenne Muscular Dystrophy (DMD), incontinentia pigmenti (IKBKG) or Neurofibromatosis type 2 (NF2) genes, precluding linkage prior to the PGD cycle. We constructed haplotypes based on linked polymorphic markers in these families and performed concurrent diagnosis enabling embryo transfer from the first PGD cycle.Informative markers flanking the DMD, IKBKG and NF2 genes were used to construct non-linked haplotypes. Polar bodies 1 (PB1) and 2 (PB2) were biopsied and analyzed to determine allelic association between the mutation and markers in multiplex PCR reactions.For each family, the first PGD cycle allowed the establishment of linked haplotypes based on homozygous PB1 and PB2 analysis; however, no embryos were available for transfer. Subsequent cycles, when performed, confirmed this linkage. A mutation-free child was born to the family affected with DMD and an ongoing pregnancy (32 weeks) was achieved with the carrier of the IKBKG deletion.PB analysis for reverse linkage in real-time coupled with the PGD cycle is a powerful tool for diagnosis and linkage between markers and de novo mutations for maternal autosomal dominant or X-linked disorders. Simultaneous amplification of multiple informative markers in conjunction with the mutation allows the building of familial haplotypes and accurate PGD analysis.
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