简要报告:circRUNX1 作为表皮生长因子受体(EGFR)突变阳性的手术切除 NSCLC 癌症复发的潜在生物标记物

IF 3 Q2 ONCOLOGY
Carlos Pedraz-Valdunciel PhD , Masaoki Ito MD , Stavros Giannoukakos PhD student , Ana Giménez-Capitán MSc , Miguel Ángel Molina-Vila PhD , Rafael Rosell MD, PhD
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引用次数: 0

摘要

导言:最近的 ADAURA 试验证明,大多数 IB 期至 IIIA 期切除的表皮生长因子受体突变肺腺癌患者都能从奥希替尼的辅助治疗中获益。然而,这些患者中仍有超过10%的人对反应和复发的预测标志物仍有需求未得到满足。据报道,一些环状 RNA(circRNA)在肿瘤生长和增殖中发挥作用。在本项目中,我们研究了福尔马林固定、石蜡包埋的肺部肿瘤样本中的循环RNA表达水平,以探索其生物标记物的潜力,并开发出一种基于机器学习(ML)的特征,该特征可预测EGFR突变型NSCLC患者辅助EGFR酪氨酸激酶抑制剂的获益情况。方法2007年2月至2015年12月期间,我们招募了手术切除的EGFR突变阳性、I期至IIIB期NSCLC患者。从随访时间超过或等于36个月的患者中回顾性收集了福尔马林固定、石蜡包埋的肿瘤样本(N = 76)。对临床病理特征进行了注释。在使用我们的 circRNA 定制面板进行 nCounter 处理之前,对总 RNA 进行纯化和量化。在进行数据分析和ML时,会考虑到circRNA表达水平和无复发生存期(RFS)。无复发生存期(RFS)的定义是从手术当天到放射学检测到复发或因任何原因死亡的那一天。结果在纳入研究的76例表皮生长因子受体突变阳性NSCLC患者中,34例在切除术后3年内复发。复发患者的中位年龄为71.5岁(49-89岁)。大多数患者为非吸烟者(21 人;61.8%)和女性(21 人;61.8%)。大多数病例(n = 17;50%)出现 21 号外显子突变,而分别有 15 名和 4 名患者出现 19 号外显子和 18 号外显子突变。差异表达分析表明,circRUNX1、circFUT8和circAASDH在复发患者中上调(p< 0.05和>2倍变化)。我们建立了一个基于 ML 的 circRNA 特征,该特征包括 circRUNX1,可预测表皮生长因子受体突变阳性 NSCLC 患者的复发。我们的最终模型包括所选的6个循环RNA特征和随机森林算法,能够对复发患者进行分类,准确率为83%,接收者操作特征曲线下面积为0.91。与被分类为非复发的患者相比,不仅循环RUNX1高表达与低表达亚组的RFS明显缩短,而且被ML循环RNA特征分类为复发的患者的RFS也明显缩短。结论我们的研究结果表明,circRUNX1和提出的ML开发的特征可以成为预测表皮生长因子受体突变型NSCLC患者辅助治疗表皮生长因子受体酪氨酸激酶抑制剂在RFS方面获益的新工具。我们的ML特征的训练和验证阶段将在更大的独立队列中进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brief Report: circRUNX1 as Potential Biomarker for Cancer Recurrence in EGFR Mutation-Positive Surgically Resected NSCLC

Introduction

As recently evidenced by the ADAURA trial, most patients with stages IB to IIIA of resected EGFR-mutant lung adenocarcinoma benefit from osimertinib as adjuvant therapy. Nevertheless, predictive markers of response and recurrence are still an unmet need for more than 10% of these patients. Some circular RNAs (circRNAs) have been reported to play a role in tumor growth and proliferation. In this project, we studied circRNA expression levels in formalin-fixed, paraffin-embedded lung tumor samples to explore their biomarker potential and develop a machine learning (ML)-based signature that could predict the benefit of adjuvant EGFR tyrosine kinase inhibitors in patients with EGFR-mutant NSCLC.

Methods

Patients with surgically resected EGFR mutant-positive, stages I to IIIB NSCLC were recruited from February 2007 to December 2015. Formalin-fixed, paraffin-embedded tumor samples were retrospectively collected from those patients with a follow-up period of more than or equal to 36 months (N = 76). Clinicopathologic features were annotated. Total RNA was purified and quantified prior nCounter processing with our circRNA custom panel. Data analysis and ML were performed taking into consideration circRNA expression levels and recurrence-free survival (RFS). RFS was defined from the day of surgery to the day when recurrence was detected radiologically or the death owing to any cause.

Results

Of the 76 patients with EGFR mutation-positive NSCLC included in the study, 34 relapsed within 3 years after resection. The median age of the relapsing cohort was 71.5 (range: 49–89) years. Most patients were nonsmokers (n = 21; 61.8%) and of female sex (n = 21; 61.8%). Most cases (n = 17; 50%) presented an exon 21 mutation, whereas 15 and four patients had an exon 19 and exon 18 mutation, respectively. Differential expression analysis revealed that circRUNX1, along with circFUT8 and circAASDH, was up-regulated in relapsing patients (p < 0.05 and >2 fold-change). A ML-based circRNA signature predictive of recurrence in patients with EGFR mutation-positive NSCLC, comprising circRUNX1, was developed. Our final model including selected 6-circRNA signature with random forest algorithm was able to classify relapsing patients with an accuracy of 83% and an area under the receiver operating characteristic curve of 0.91.

RFS was significantly shorter not only for the subgroup of patients with high versus low circRUNX1 expression but also for the group classified as recurrent by the ML circRNA signature when compared with those classified as nonrecurrent.

Conclusions

Our findings suggest that circRUNX1 and the presented ML-developed signature could be novel tools to predict the benefit of adjuvant EGFR tyrosine kinase inhibitors with regard to RFS in patients with EGFR-mutant NSCLC. The training and validation phases of our ML signature will be conducted including bigger independent cohorts.

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CiteScore
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