医学
内科学
实体瘤疗效评价标准
彭布罗利珠单抗
肿瘤科
临床终点
肺癌
置信区间
无进展生存期
随机对照试验
癌症
临床研究阶段
免疫疗法
化疗
作者
Valsamo Anagnostou,Cheryl Ho,Garth Nicholas,Rosalyn A. Juergens,Adrian G. Sacher,Andrea S. Fung,Paul Wheatley‐Price,Scott A. Laurie,Benjamin Levy,Julie R. Brahmer,Archana Balan,Noushin Niknafs,Egor Avrutin,Liting Zhu,Mark Sausen,Penelope A. Bradbury,Jill O’Donnell-Tormey,Pierre Olivier Gaudreau,Keyue Ding,Janet Dancey
出处
期刊:Nature Medicine
[Nature Portfolio]
日期:2023-10-01
卷期号:29 (10): 2559-2569
被引量:57
标识
DOI:10.1038/s41591-023-02598-9
摘要
Circulating tumor DNA (ctDNA) has shown promise in capturing primary resistance to immunotherapy. BR.36 is a multi-center, randomized, ctDNA-directed, phase 2 trial of molecular response-adaptive immuno-chemotherapy for patients with lung cancer. In the first of two independent stages, 50 patients with advanced non-small cell lung cancer received pembrolizumab as standard of care. The primary objectives of stage 1 were to ascertain ctDNA response and determine optimal timing and concordance with radiologic Response Evaluation Criteria in Solid Tumors (RECIST) response. Secondary endpoints included the evaluation of time to ctDNA response and correlation with progression-free and overall survival. Maximal mutant allele fraction clearance at the third cycle of pembrolizumab signified molecular response (mR). The trial met its primary endpoint, with a sensitivity of ctDNA response for RECIST response of 82% (90% confidence interval (CI): 52-97%) and a specificity of 75% (90% CI: 56.5-88.5%). Median time to ctDNA response was 2.1 months (90% CI: 1.5-2.6), and patients with mR attained longer progression-free survival (5.03 months versus 2.6 months) and overall survival (not reached versus 7.23 months). These findings are incorporated into the ctDNA-driven interventional molecular response-adaptive second stage of the BR.36 trial in which patients at risk of progression are randomized to treatment intensification or continuation of therapy. ClinicalTrials.gov ID: NCT04093167 .
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