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Detection of disseminated tumor cells in the bone marrow of breast cancer patients using multiplex gene expression measurements identifies new therapeutic targets in patients at high risk for the development of metastatic disease

机译:使用多重基因表达测量技术检测乳腺癌患者骨髓中已扩散的肿瘤细胞,可确定转移性疾病高危患者的新治疗靶点

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Disseminated tumor cells (DTCs) detected in the bone marrow (BM) of breast cancer patients identify women at high risk of recurrence. DTCs are traditionally detected by immunocytochemical staining for cytokeratins or single gene expression measurements, which limit both specificity and sensitivity. We evaluated the Nanostring nCounter? platform for multi-marker, gene expression-based detection and classification of DTCs in the BM of breast cancer patients. Candidate genes exhibiting tumor cell-specific expression were identified from microarray datasets and validated by qRT-PCR analysis in non-malignant human BM and identical samples spiked with predefined numbers of molecularly diverse breast tumor cell lines. Thirty-eight validated transcripts were designed for the nCounter? platform and a subset of these transcripts was technically validated against qRT-PCR measurements using identical spiked BM controls. Bilateral iliac crest BM aspirates were collected and analyzed from twenty breast cancer patients, prior to neoadjuvant therapy, using the full 38-gene nCounter? code set. Tumor cell-specific gene expression by nCounter? was detected with a sensitivity of one cancer cell per 1 × 106 nucleated BM cells after optimization. Measurements were quantitative, log linear over a 20-fold range, and correlated with qRT-PCR measurements. Using the nCounter? 38-gene panel, 6 of 8 patients (75 %) who developed metastatic disease had detectable expression of at least one transcript. Notably, three of these patients had detectable expression of ERBB2 in their BM, despite the fact that their corresponding primary tumors were HER2/ERBB2 negative and therefore did not receive trastuzumab therapy. Four of these patients also expressed the PTCH1 receptor, a newly recognized therapeutic target based on hedgehog signaling pathway inhibition. The presumptive detection and classification of DTCs in the BM of breast cancer patients, based on sensitive and quantitative multi-marker detection of gene expression using the nCounter? platform, provide an opportunity to both predict early distant recurrence and, more importantly, identify opportunities for preventing the spread of disease based on the expression of unique, therapeutically actionable gene targets. This study demonstrates the application of a new technology for multiplexed gene expression-based detection of DTCs in the BM of breast cancer patients and identifies at least two therapeutically targetable genes that are frequently expressed in the BM of patients who develop metastatic disease.
机译:在乳腺癌患者的骨髓(BM)中检测到的弥散性肿瘤细胞(DTC)确定了复发风险高的女性。传统上,DTC是通过免疫细胞化学染色检测细胞角蛋白或测量单个基因表达的,这限制了特异性和敏感性。我们评估了Nanostring nCounter?平台,用于基于基因表达的乳腺癌患者BM中DTC的多标记检测和分类。从微阵列数据集中鉴定出表现出肿瘤细胞特异性表达的候选基因,并通过qRT-PCR分析在非恶性人BM和掺有预定义数量的分子多样化乳腺肿瘤细胞系的相同样品中进行验证。为nCounter设计了38个经过验证的成绩单?使用相同的加标BM对照,针对qRT-PCR测量对平台和这些转录子的一部分进行了技术验证。在新辅助治疗之前,使用完整的38基因nCounter?收集了20名乳腺癌患者的双BM抽吸物并进行了分析。代码集。通过nCounter表达肿瘤细胞特异性基因?优化后,每1×106个有核BM细胞检测到一个癌细胞的敏感性。测量是定量的,在20倍范围内呈线性对数,并与qRT-PCR测量相关。使用nCounter? 38个基因组中,发生转移性疾病的8名患者中有6名(75%)具有可检测到的至少一种转录本的表达。值得注意的是,尽管他们的相应原发肿瘤为HER2 / ERBB2阴性,因此未接受曲妥珠单抗治疗,但其中三名患者的BM中有ERBB2的可检测表达。这些患者中有四名还表达了PTCH1受体,这是一种新的基于刺猬信号通路抑制作用的治疗靶标。基于使用nCounter?对基因表达进行灵敏和定量的多标记检测,对乳腺癌患者BM中的DTC进行推定检测和分类。平台,提供了一个机会,可以预测早期远距离复发,更重要的是,可以根据独特的可治疗性基因靶点的表达确定预防疾病传播的机会。这项研究证明了一种新技术在乳腺癌患者BM中基于DTC的多重基因表达检测的应用,并鉴定了至少两种在治疗转移性疾病的BM中经常表达的可治疗靶向基因。

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