数字聚合酶链反应
液体活检
多路复用
克拉斯
微小残留病
分析灵敏度
计算生物学
多重聚合酶链反应
循环肿瘤细胞
微流控
生物
癌症
癌症研究
聚合酶链反应
医学
基因
生物信息学
突变
纳米技术
病理
遗传学
免疫学
材料科学
替代医学
白血病
转移
作者
Chen-Yin Ou,Tam Vu,Jonathan T. Grunwald,Michael Toledano,Jan Zimak,Melody N Toosky,Byron Shen,Jason A. Zell,Enrico Gratton,Timothy J. Abram,Weian Zhao
出处
期刊:Lab on a Chip
[The Royal Society of Chemistry]
日期:2019-01-01
卷期号:19 (6): 993-1005
被引量:42
摘要
Current cancer detection systems lack the required sensitivity to reliably detect minimal residual disease (MRD) and recurrence at the earliest stages when treatment would be most effective. To address this issue, we present a novel liquid biopsy approach that utilizes an integrated comprehensive droplet digital detection (IC3D) digital PCR system which combines microfluidic droplet partitioning, fluorescent multiplex PCR chemistry, and our rapid 3D, large-volume droplet counting technology. The IC3D ddPCR assay can detect cancer-specific, ultra-rare genomic targets due to large sample input and high degree of partitioning. We first demonstrate our droplet digital PCR assay can robustly detect common cancer mutants including KRAS G12D spiked in wild-type genomic background or isolated from patient samples with 100% specificity. We then demonstrate that the IC3D ddPCR system can detect oncogenic KRAS G12D mutant alleles against a background of wild-type genomes at a sensitivity of 0.00125-0.005% with a false positive rate of 0% which is 50 to 1000× more sensitive than existing commercial liquid biopsy ddPCR and qPCR platforms, respectively. In addition, our technology can uniquely enable detection of circulating tumor cells using their genetic markers without a pre-enrichment step, and analysis of total tumor DNA isolated from blood samples, which will increase clinical sensitivity and specificity, and minimize inter-assay variability. Therefore, our technology holds the potential to provide clinicians with a powerful decision-making tool to monitor and treat MRD with unprecedented sensitivity for earlier stage intervention.
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