Comprehensive genetic variant analysis reveals combination of KRAS and LRP1B as a predictive biomarker of response to immunotherapy in patients with non-small cell lung cancer.

IF 11.4 1区 医学 Q1 ONCOLOGY
Ella A Eklund, Johanna Svensson, Louise Stauber Näslund, Maria Yhr, Sama I Sayin, Clotilde Wiel, Levent M Akyürek, Per Torstensson, Volkan I Sayin, Andreas Hallqvist, Sukanya Raghavan, Anna Rohlin
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引用次数: 0

Abstract

Background: In non-small cell lung cancer (NSCLC), the rapid advancement of predictive genetic testing of tumors by identifying specific pathogenic driver variants has significantly improved treatment guidance. However, immune checkpoint blockade (ICB) is typically administered to patients with tumors in the absence of such driver variants. Since only about 30% of patients will respond to ICB treatment, identifying novel genetic biomarkers of clinical response is crucial and will improve treatment decisions. This prospective clinical study aims to combine molecular biology, advanced bioinformatics and clinical data on response to treatment with ICB from a prospective cohort of NSCLC patients to identify single or combination of genetic variants in the tumor that can serve as predictive biomarkers of clinical response.

Methods: In this prospective bi-center clinical study, we performed next-generation sequencing (NGS) of 597 cancer-associated genes in a prospective cohort of 49 patients as the final cohort analyzed, with stage III or IV NSCLC, followed by establishment of an in-house developed bioinformatics-based molecular classification method that integrates, interprets and evaluates data from multiple databases and variant prediction tools. Overall survival (OS) and progression-free survival (PFS) were analyzed for selected candidate genes and variants identified using our novel methodology including molecular tools, databases and clinical information.

Results: Our novel molecular interpretation and classification method identified high impact variants in frequently altered genes KRAS, LRP1B, and TP53. Analysis of these genes as single predictive biomarkers in ICB-treated patients revealed that the presence of likely pathogenic variants and variants of unclear significance in LRP1B was associated with improved OS (p = 0.041). Importantly, further analysis of variant combinations in the tumor showed that co-occurrence of KRAS and LRP1B variants significantly improved OS (p = 0.003) and merged PFS (p = 0.008). Notably, the triple combination of variants in KRAS, LRP1B, and TP53 positively impacted both OS (p = 0.026) and merged PFS (p = 0.003).

Conclusions: This study suggests that combination of the LRP1B and KRAS variants identified through our novel molecular classification scheme leads to better outcomes following ICB treatment in NSCLC. The addition of TP53 improves the outcome even further. To our knowledge, this is the first report indicating that harboring a combination of KRAS, LRP1B, and TP53 variants can significantly enhance the response to ICB, suggesting a novel predictive biomarker combination for NSCLC patients.

综合遗传变异分析显示,KRAS和LRP1B联合表达可作为非小细胞肺癌患者免疫治疗应答的预测性生物标志物。
背景:在非小细胞肺癌(NSCLC)中,通过识别特定致病驱动变异来预测肿瘤基因检测的快速发展显著改善了治疗指导。然而,免疫检查点阻断(ICB)通常用于缺乏此类驱动变异的肿瘤患者。由于只有约30%的患者对ICB治疗有反应,因此确定临床反应的新型遗传生物标志物至关重要,并将改善治疗决策。这项前瞻性临床研究旨在结合来自非小细胞肺癌患者前瞻性队列的分子生物学、先进生物信息学和对ICB治疗反应的临床数据,以确定肿瘤中单个或组合的遗传变异,这些变异可以作为临床反应的预测性生物标志物。方法:在这项前瞻性双中心临床研究中,我们对49名III期或IV期非小细胞肺癌患者进行了597个癌症相关基因的新一代测序(NGS),作为最后的队列分析,随后建立了一种基于生物信息学的分子分类方法,该方法整合、解释和评估来自多个数据库和变异预测工具的数据。总生存期(OS)和无进展生存期(PFS)分析选定的候选基因和变异使用我们的新方法,包括分子工具,数据库和临床信息。结果:我们的新分子解释和分类方法确定了KRAS, LRP1B和TP53基因的高影响变异。将这些基因作为icb治疗患者的单一预测性生物标志物进行分析,发现LRP1B中可能的致病变异和意义不明的变异与OS的改善相关(p = 0.041)。重要的是,对肿瘤中变异组合的进一步分析表明,KRAS和LRP1B变异的共同出现显著改善了OS (p = 0.003)和合并的PFS (p = 0.008)。值得注意的是,KRAS、LRP1B和TP53变异的三重组合对OS (p = 0.026)和合并PFS (p = 0.003)都有积极影响。结论:本研究表明,通过我们的新分子分类方案鉴定的LRP1B和KRAS变体的组合可以在非小细胞肺癌的ICB治疗后获得更好的结果。TP53的加入进一步改善了结果。据我们所知,这是第一篇报道表明KRAS、LRP1B和TP53变体的组合可以显著增强对ICB的反应,这提示了一种新的非小细胞肺癌患者预测性生物标志物组合。
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来源期刊
CiteScore
18.20
自引率
1.80%
发文量
333
审稿时长
1 months
期刊介绍: The Journal of Experimental & Clinical Cancer Research is an esteemed peer-reviewed publication that focuses on cancer research, encompassing everything from fundamental discoveries to practical applications. We welcome submissions that showcase groundbreaking advancements in the field of cancer research, especially those that bridge the gap between laboratory findings and clinical implementation. Our goal is to foster a deeper understanding of cancer, improve prevention and detection strategies, facilitate accurate diagnosis, and enhance treatment options. We are particularly interested in manuscripts that shed light on the mechanisms behind the development and progression of cancer, including metastasis. Additionally, we encourage submissions that explore molecular alterations or biomarkers that can help predict the efficacy of different treatments or identify drug resistance. Translational research related to targeted therapies, personalized medicine, tumor immunotherapy, and innovative approaches applicable to clinical investigations are also of great interest to us. We provide a platform for the dissemination of large-scale molecular characterizations of human tumors and encourage researchers to share their insights, discoveries, and methodologies with the wider scientific community. By publishing high-quality research articles, reviews, and commentaries, the Journal of Experimental & Clinical Cancer Research strives to contribute to the continuous improvement of cancer care and make a meaningful impact on patients' lives.
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