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首页> 外文期刊>The Journal of molecular diagnostics: JMD >Development and applications of a BRAF oligonucleotide microarray.
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Development and applications of a BRAF oligonucleotide microarray.

机译:BRAF寡核苷酸微阵列的开发和应用。

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摘要

We herein describe the development of a sensitive microarray hybridization method called competitive DNA hybridization (CDH) and its use for analysis of BRAF somatic mutations. These mutations have been identified in many human cancers, and fast, reliable BRAF mutation detection may one day facilitate directed therapy of BRAF-mutated tumors. Our fast, reliable mutation detection by CDH is based on the principle that competition among multiple fluorescent-labeled samples for binding to shared wild-type sequences should reduce nonspecific results and increase the positive signals of unshared mutated sequences. The positive signals can then be discriminated based on the labeling of each sample (ie, with Cy3, Cy5, or Alexa-594). For testing of this method, we developed a BRAF oligonucleotide microarray containing 65 mutation types (more than 95% of the known BRAF mutations) and validated this microarray with 20 colorectal cancer tissues/cancer cell lines with BRAF mutations and 60 BRAF-negative samples. Insum, we were able to screen up to nine cancer samples on a single BRAF microarray (three per CDH on three regions per slide), indicating that this method may dramatically decrease the experimental time, cost, and effort of mutation detection in BRAF and other genes amenable to microarray analysis.
机译:我们在本文中描述了称为竞争性DNA杂交(CDH)的敏感微阵列杂交方法的发展及其在BRAF体细胞突变分析中的用途。这些突变已在许多人类癌症中得到鉴定,并且有一天,快速,可靠的BRAF突变检测可能会促进对BRAF突变肿瘤的定向治疗。我们通过CDH进行的快速,可靠的突变检测基于以下原理:多个荧光标记的样品之间竞争与共享的野生型序列的结合应减少非特异性结果并增加未共享的突变序列的阳性信号。然后可以基于每个样品的标记(例如,使用Cy3,Cy5或Alexa-594)区分正信号。为了测试该方法,我们开发了包含65种突变类型(超过已知BRAF突变的95%)的BRAF寡核苷酸微阵列,并用20种具有BRAF突变的结直肠癌组织/癌细胞系和60种BRAF阴性样品验证了该微阵列。总而言之,我们能够在单个BRAF微阵列上筛选多达9个癌症样品(每个载玻片3个区域中每个CDH 3个),这表明该方法可以显着减少BRAF和其他方法中检测突变的实验时间,成本和工作量适于微阵列分析的基因。

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