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首页> 外文期刊>American Journal of Translational Research >Identification and validation of significant gene mutations to predict clinical benefit of immune checkpoint inhibitors in lung adenocarcinoma
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Identification and validation of significant gene mutations to predict clinical benefit of immune checkpoint inhibitors in lung adenocarcinoma

机译:重大基因突变的鉴定与验证,以预测肺腺癌免疫检查点抑制剂的临床益处

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Objective: Immune checkpoint inhibitors (ICI) has achieved remarkable clinical benefit in advanced lung adenocarcinoma (LUAD). However, effective clinical use of ICI agents is encumbered by the high rate of innate resistance. The aim of our research is to identify significant gene mutations which can predict clinical benefit of immune checkpoint inhibitors in LUAD. Methods: The “mafComapre” function of “MafTools” package was used to screen the differentially mutated genes between durable clinical benefit (DCB) group and no durable clinical benefit (NDB) group based on the somatic mutation data from NSCLc_PD1_mSK_2018. Machine learning was performed to select significantly mutated genes to accurately classify patients into DCB group and NDB group. A nomogram model was constructed based on the significantly mutated genes to predict the susceptibility of patients to ICI. Finally, we explored the correlation between two classifications of immune cell infiltration, PD-1 and PD-L1 expression, tumor mutational burden (TMB) and prognosis. Results: Through utilize machine learning, 6 significantly mutated genes were obtained from 8 differentially mutated genes and used to accurately classify patients into DCB group and NDB group. The DCA curve and clinical impact curve revealed that the patients can benefit from the decisions made based on the nomogram model. Patients highly sensitive to ICI have elevated immune activity, higher expression of PD-1 and PD-L1, increased TMB, and well prognosis if they accept ICI treatment. Conclusions: Our research selected 6 significantly mutated genes that can predict clinical benefit of ICI in LUAD patients.
机译:目的:免疫检查点抑制剂(ICI)在晚期肺腺癌(Luad)中取得了显着的临床益处。然而,ICI试剂的有效临床应用受到先天性抗性的高速率。我们的研究目的是鉴定显着的基因突变,可以预测拉德免疫检查点抑制剂的临床效益。方法:“Mafeools”包装的“MAFComapre”功能用于筛选耐用临床益处(DCB)组之间的差异突变基因,并且基于来自NSCLC_PD1_MSK_2018的体细胞突变数据的耐用临床益处(NDB)组。进行机器学习以选择显着突变的基因,以准确地将患者分类为DCB组和NDB组。基于显着突变的基因构建了一种NOMAPROM模型,以预测患者对ICI的敏感性。最后,我们探讨了免疫细胞浸润,PD-1和PD-L1表达,肿瘤突变(TMB)和预后的两个分类之间的相关性。结果:通过利用机器学习,从8个差异突变的基因获得6个显着突变的基因,并用来准确地将患者分为DCB组和NDB组。 DCA曲线和临床影响曲线揭示了患者可以从基于Rommogram模型所作的决定中受益。对ICI高度敏感的患者具有升高的免疫活动,PD-1和PD-L1的表达更高,TMB增加,如果它们接受ICI治疗,则良好预后。结论:我们的研究选定了6种显着突变的基因,可以预测耐候患者ICI的临床益处。

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