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A digital PCR based assay to detect all ALK fusion species

机译:基于数字PCR的检测法可检测所有ALK融合物种

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Accurate detection of Anaplastic lymphoma kinase (ALK) fusion in lung cancer cells is essential to screen for patients suitable for targeted drug treatments such as crizotinib. ALK fusion involves multiple genes and different exon junctions. When an ALK fusion results in overexpression of the ALK protein, a malignant transformation can occur. The challenge is to develop a single test that will detect ALK overexpression from all fusion combinations including novel/unidentified fusion partner(s). In this study, we evaluated two strategies for detecting ALK fusion events using digital PCR: 5′/3′ imbalance and ALK overexpression relative to a reference gene. Our data shows that the determination of ALK RNA expression levels is a better option when a reference gene is included in the assay. We further determined the threshold to call for positive or negative samples and evaluated the analytical specifications of the assay in 28 FFPE samples from Non-small cell lung cancer (NSCLC) patients with know ALK fusion status. We validated this threshold with 36 clinical samples with ALK status determined by IHC. Digital PCR ALK assay we developed had a concordance of 97.2% (35/36). Testing the assay on clinical samples demonstrated consistency with reference assays, suggesting a great potential for the dPCR assay to service the clinical detection needs.
机译:准确检测肺癌细胞中的间变性淋巴瘤激酶(ALK)融合蛋白对于筛选适合靶向药物治疗的患者如crizotinib至关重要。 ALK融合涉及多个基因和不同的外显子连接。当ALK融合导致ALK蛋白过度表达时,可能发生恶性转化。面临的挑战是开发一个单一测试,该测试将检测所有融合组合(包括新的/未识别的融合伴侣)中的ALK过表达。在这项研究中,我们评估了使用数字PCR检测ALK融合事件的两种策略:相对于参考基因的5'/ 3'不平衡和ALK过表达。我们的数据表明,当测定中包含参考基因时,确定ALK RNA表达水平是一个更好的选择。我们进一步确定了需要检出阳性或阴性样品的阈值,并评估了来自已知ALK融合状态的非小细胞肺癌(NSCLC)患者的28份FFPE样品的分析分析规范。我们通过IHC确定的36例ALK状态临床样本验证了该阈值。我们开发的数字PCR ALK分析的一致性为97.2%(35/36)。在临床样品上测试该检测方法可证明与参考检测方法一致,这表明dPCR检测方法可满足临床检测需求。

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