医学
肿瘤科
内科学
肺癌
危险系数
表皮生长因子受体
比例危险模型
临床试验
队列
癌症
置信区间
作者
Petros Christopoulos,Nicolas Girard,Claudia Proto,Marta Soares,Pilar Garrido,Anthonie J. van der Wekken,Sanjay Popat,Joris Diels,Claudio A. Schioppa,Jan Sermon,Nora Rahhali,Corinna Pick-Lauer,Agnieszka Adamczyk,J. Penton,Marie Wislez
出处
期刊:Cancers
[Multidisciplinary Digital Publishing Institute]
日期:2023-11-08
卷期号:15 (22): 5326-5326
被引量:2
标识
DOI:10.3390/cancers15225326
摘要
Patients with advanced non-small cell lung cancer (NSCLC) with epidermal growth factor receptor gene (EGFR) Exon 20 insertions (Exon20ins) at the second line and beyond (2L+) have an unmet need for new treatment. Amivantamab, a bispecific EGFR- and MET-targeted antibody, demonstrated efficacy in this setting in the phase 1b, open-label CHRYSALIS trial (NCT02609776). The primary objective was to compare the efficacy of amivantamab to the choices made by real-world physicians (RWPC) using an external control cohort from the real-world evidence (RWE) chart review study, CATERPILLAR-RWE. Adjustment was conducted to address differences in prognostic variables between cohorts using inverse probability weighting (IPW) and covariate adjustments based on multivariable regression. In total, 114 patients from CHRYSALIS were compared for 55 lines of therapy from CATERPILLAR-RWE. Baseline characteristics were comparable between the amivantamab and IPW-weighted RWPC cohorts. For amivantamab versus RWPC using IPW adjustment, the response rate ratio for the overall response was 2.14 (p = 0.0181), and the progression-free survival (PFS), time-to-next-treatment (TTNT) and overall survival (OS) hazard ratios (HRs) were 0.42 (p < 0.0001), 0.47 (p = 0.0063) and 0.48 (p = 0.0207), respectively. These analyses provide evidence of clinical and statistical benefits across multiple outcomes and adjustment methods, of amivantamab in platinum pre-treated patients with advanced NSCLC harboring EGFR Exon20ins. These results confirm earlier comparisons versus pooled national registry data.
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