Greene Stephanie B, Dago Angel E, Leitz Laura J, Wang Yipeng, Lee Jerry, Werner Shannon L, Gendreau Steven, Patel Premal, Jia Shidong, Zhang Liangxuan, Tucker Eric K, Malchiodi Michael, Graf Ryon P, Dittamore Ryan, Marrinucci Dena, Landers Mark
Epic Sciences, Inc., San Diego, CA, United States of America.
Genentech, Inc./ Roche, San Francisco, CA, United States of America.
PLoS One. 2016 Nov 16;11(11):e0165089. doi: 10.1371/journal.pone.0165089. eCollection 2016.
Genomic instability is a hallmark of cancer often associated with poor patient outcome and resistance to targeted therapy. Assessment of genomic instability in bulk tumor or biopsy can be complicated due to sample availability, surrounding tissue contamination, or tumor heterogeneity. The Epic Sciences circulating tumor cell (CTC) platform utilizes a non-enrichment based approach for the detection and characterization of rare tumor cells in clinical blood samples. Genomic profiling of individual CTCs could provide a portrait of cancer heterogeneity, identify clonal and sub-clonal drivers, and monitor disease progression. To that end, we developed a single cell Copy Number Variation (CNV) Assay to evaluate genomic instability and CNVs in patient CTCs. For proof of concept, prostate cancer cell lines, LNCaP, PC3 and VCaP, were spiked into healthy donor blood to create mock patient-like samples for downstream single cell genomic analysis. In addition, samples from seven metastatic castration resistant prostate cancer (mCRPC) patients were included to evaluate clinical feasibility. CTCs were enumerated and characterized using the Epic Sciences CTC Platform. Identified single CTCs were recovered, whole genome amplified, and sequenced using an Illumina NextSeq 500. CTCs were then analyzed for genome-wide copy number variations, followed by genomic instability analyses. Large-scale state transitions (LSTs) were measured as surrogates of genomic instability. Genomic instability scores were determined reproducibly for LNCaP, PC3, and VCaP, and were higher than white blood cell (WBC) controls from healthy donors. A wide range of LST scores were observed within and among the seven mCRPC patient samples. On the gene level, loss of the PTEN tumor suppressor was observed in PC3 and 5/7 (71%) patients. Amplification of the androgen receptor (AR) gene was observed in VCaP cells and 5/7 (71%) mCRPC patients. Using an in silico down-sampling approach, we determined that DNA copy number and genomic instability can be detected with as few as 350K sequencing reads. The data shown here demonstrate the feasibility of detecting genomic instabilities at the single cell level using the Epic Sciences CTC Platform. Understanding CTC heterogeneity has great potential for patient stratification prior to treatment with targeted therapies and for monitoring disease evolution during treatment.
基因组不稳定是癌症的一个标志,常与患者预后不良和对靶向治疗的耐药性相关。由于样本可用性、周围组织污染或肿瘤异质性,对整块肿瘤或活检组织中的基因组不稳定进行评估可能会很复杂。Epic Sciences循环肿瘤细胞(CTC)平台采用基于非富集的方法来检测和表征临床血液样本中的罕见肿瘤细胞。对单个CTC进行基因组分析可以描绘癌症异质性,识别克隆和亚克隆驱动因素,并监测疾病进展。为此,我们开发了一种单细胞拷贝数变异(CNV)检测方法,以评估患者CTC中的基因组不稳定和CNV。为了验证概念,将前列腺癌细胞系LNCaP、PC3和VCaP加入健康供体血液中,以创建类似患者的模拟样本用于下游单细胞基因组分析。此外,还纳入了7例转移性去势抵抗性前列腺癌(mCRPC)患者的样本以评估临床可行性。使用Epic Sciences CTC平台对CTC进行计数和表征。回收鉴定出的单个CTC,进行全基因组扩增,并使用Illumina NextSeq 500进行测序。然后对CTC进行全基因组拷贝数变异分析,随后进行基因组不稳定分析。测量大规模状态转换(LST)作为基因组不稳定的替代指标。可重复确定LNCaP、PC3和VCaP的基因组不稳定评分,且高于健康供体的白细胞(WBC)对照。在7例mCRPC患者样本内部和之间观察到广泛的LST评分范围。在基因水平上,在PC3细胞和5/7(71%)的患者中观察到PTEN肿瘤抑制基因的缺失。在VCaP细胞和5/7(71%)的mCRPC患者中观察到雄激素受体(AR)基因的扩增。使用计算机模拟下采样方法,我们确定仅用35万个测序读数就能检测到DNA拷贝数和基因组不稳定。此处所示数据证明了使用Epic Sciences CTC平台在单细胞水平检测基因组不稳定的可行性。了解CTC异质性在靶向治疗前对患者进行分层以及在治疗期间监测疾病进展方面具有巨大潜力。