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Novel, non-invasive imaging approach to identify patients with advanced non-small cell lung cancer at risk of hyperprogressive disease with immune checkpoint blockade

机译:具有免疫检查点封闭的高前来疾病风险的新型非侵入性成像方法,鉴定患有高前来疾病的高级疾病患者

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Purpose Hyperprogression is an atypical response pattern to immune checkpoint inhibition that has been described within non-small cell lung cancer (NSCLC). The paradoxical acceleration of tumor growth after immunotherapy has been associated with significantly shortened survival, and currently, there are no clinically validated biomarkers to identify patients at risk of hyperprogression.Experimental design A total of 109 patients with advanced NSCLC who underwent monotherapy with Programmed cell death protein-1 (PD1)/Programmed death-ligand-1 (PD-L1) inhibitors were included in the study. Using RECIST measurements, we divided the patients into responders (n=50) (complete/partial response or stable disease) and non-responders (n=59) (progressive disease). Tumor growth kinetics were used to further identify hyperprogressors (HPs, n=19) among non-responders. Patients were randomized into a training set (D1=30) and a test set (D2=79) with the essential caveat that HPs were evenly distributed among the two sets. A total of 198 radiomic textural patterns from within and around the target nodules and features relating to tortuosity of the nodule associated vasculature were extracted from the pretreatment CT scans.Results The random forest classifier using the top features associated with hyperprogression was able to distinguish between HP and other radiographical response patterns with an area under receiver operating curve of 0.85±0.06 in the training set (D1=30) and 0.96 in the validation set (D2=79). These features included one peritumoral texture feature from 5 to 10 mm outside the tumor and two nodule vessel-related tortuosity features. Kaplan-Meier survival curves showed a clear stratification between classifier predicted HPs versus non-HPs for overall survival (D2: HR=2.66, 95% CI 1.27 to 5.55; p=0.009).Conclusions Our study suggests that image-based radiomics markers extracted from baseline CTs of advanced NSCLC treated with PD-1/PD-L1 inhibitors may help identify patients at risk of hyperprogressions.
机译:目的超出是一种非小细胞肺癌(NSCLC)中描述的免疫检查点抑制的非典型响应模式。肿瘤生长的免疫治疗后的矛盾加速已显著生存期缩短有关,目前,还没有临床验证的生物标志物在hyperprogression.Experimental设计一共有109例晚期NSCLC患者谁与程序性细胞死亡经历单一的风险,以确定患者在研究中包括蛋白-1(PD1)/编程死亡 - 配体-1(PD-L1)抑制剂。使用再循环测量,我们将患者划分为反应者(n = 50)(完全/部分反应或稳定疾病)和非响应者(n = 59)(渐进疾病)。肿瘤生长动力学用于在非响应者中进一步鉴定高备用者(HPS,N = 19)。患者被随机被随机分成训练组(D1 = 30),并且具有基本警告的测试组(D2 = 79),即HPS在两组中均匀分布。从预处理CT扫描中提取了来自目标结节内部和围绕的目标结节内和周围的射出纹理图案。从预处理CT扫描中提取了与结节相关脉管系统的曲折相关的特征。使用与超出超出相关的顶部特征可以区分HP的顶部特征来提取随机林分类器和其他射线图响应模式,在验证组中的训练集(D1 = 30)和0.96中的接收器操作曲线下的接收器操作曲线(D2 = 79)。这些特征包括肿瘤外的5至10毫米的一个Peritumoral纹理特征,两种结节血管相关的曲折特征。 Kaplan-Meier存活曲线在分类器预测的HPS与非HPS之间存在明显的分层,用于整体存活(D2:HR = 2.66,95%CI 1.27至5.55; P = 0.009)。结论我们的研究表明,提取了基于图像的辐射瘤标记从PD-1 / PD-L1抑制剂处理的高级NSCLC的基线CTS可能有助于识别患者患有超出的风险。

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