高分辨率熔体
放大器
遗传学
底漆(化妆品)
突变
点突变
生物
分子生物学
聚合酶链反应
基因
复合杂合度
化学
有机化学
作者
Margarita Petropoulou,Aggeliki Poula,Joanne Traeger‐Synodinos,Christina Vrettou,Emmanuel Kanavakis,Theodore K. Christopoulos,Penelope C. Ioannou
标识
DOI:10.1515/cclm-2015-0082
摘要
Screening for "non-deletion" α-chain haemoglobin variants resulting from point mutations or short deletions/insertions has attracted an increased interest during recent years, especially in areas where α-thalassaemia is prevalent. We describe a method utilising high resolution melting analysis for detecting the 13 most common "non-deletion" α-thalassaemia mutations in populations around the Mediterranean and Middle East.The method comprises: (1) amplification of a 1087 bp fragment for each of the duplicated α-globin genes (HBA1 and HBA2) flanking all 13 mutations using a common forward primer and different reverse primers specific for HBA1 and HBA2, respectively; (2) nested amplification of three fragments in HBA2 flanking 10 mutations and two fragments in HBA1 flanking 5 mutations; (3) High resolution melting analysis of the amplicons using a LightScanner Instrument and LC Green.All 13 "non-deletion" α-chain haemoglobin variants were successfully detected by high resolution melting analysis. All heterozygote samples and eight out of 10 available homozygotes were clearly differentiated from each other and from wild type in the same amplicon. Although not all homozygote samples were distinguishable from wild type samples, this should not present a problem in a clinical setting since all DNA results should be evaluated alongside the haematological and (if relevant) clinical findings in each case.The 13 "non-deletion" α-chain haemoglobin variants were successfully genotyped by high resolution melting analysis using LightScanner instrument and LCGreen Plus saturating dye. High resolution melting analysis is an accurate mutation scanning tool, advantageous as a closed-tube method, involving no post-PCR manipulations and requiring only around 5 min post-PCR analysis.
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