He Bing-Xi, Zhong Yi-Fan, Zhu Yong-Bei, Deng Jia-Jun, Fang Meng-Jie, She Yun-Lang, Wang Ting-Ting, Yang Yang, Sun Xi-Wen, Belluomini Lorenzo, Watanabe Satoshi, Dong Di, Tian Jie, Xie Dong
Beijing Advanced Innovation Center for Big Data-Based Precision Medicine, School of Engineering Medicine, Beihang University, Beijing, China.
Key Laboratory of Big Data-Based Precision Medicine, Beihang University, Ministry of Industry and Information Technology, Beijing, China.
Transl Lung Cancer Res. 2022 Apr;11(4):670-685. doi: 10.21037/tlcr-22-244.
Radiomics based on computed tomography (CT) images is potential in promoting individualized treatment of non-small cell lung cancer (NSCLC), however, its role in immunotherapy needs further exploration. The aim of this study was to develop a CT-based radiomics score to predict the efficacy of immune checkpoint inhibitor (ICI) monotherapy in patients with advanced NSCLC.
Two hundred and thirty-six ICI-treated patients were retrospectively included and divided into a training cohort (n=188) and testing cohort (n=48) at a ratio of 8 to 2. The efficacy outcomes of ICI were evaluated based on overall survival (OS) and progression-free survival (PFS). We designed a survival network and combined it with a Cox regression model to obtain patients' OS risk score (OSRS) and PFS risk score (PFSRS).
Based on OSRS and PFSRS, patients were divided into high- and low-risk groups in the training cohort and the test cohort with distinctly different [training cohort, log-rank P<0.001, hazard ratio (HR): 4.14; test cohort, log-rank P=0.014, HR: 4.54] and PFS (training cohort, log-rank P<0.001, HR: 4.52; test cohort, log-rank P<0.001, HR: 6.64). Further joint evaluation of OSRS and PFSRS showed that both were significant in the Cox regression model (P<0.001), and multi-overall survival risk score (MOSRS) displayed more outstanding stratification capabilities than OSRS in both the training (P<0.001) and test cohorts (P=0.002). None of the clinical characteristics were significant in the Cox regression model, and the score that predicted the best immune response was not as good as the risk score from follow-up information in the performance of prognostic stratification.
We developed a CT imaging-based score with the potential to become an independent prognostic factor to screen patients who would benefit from ICI treatment, which suggested that CT radiomics could be applied for individualized immunotherapy of NSCLC. Our findings should be further validated by future larger multicenter study.
基于计算机断层扫描(CT)图像的放射组学在促进非小细胞肺癌(NSCLC)个体化治疗方面具有潜力,然而,其在免疫治疗中的作用尚需进一步探索。本研究的目的是开发一种基于CT的放射组学评分,以预测晚期NSCLC患者免疫检查点抑制剂(ICI)单药治疗的疗效。
回顾性纳入236例接受ICI治疗的患者,并按8:2的比例分为训练队列(n = 188)和测试队列(n = 48)。基于总生存期(OS)和无进展生存期(PFS)评估ICI的疗效结果。我们设计了一个生存网络,并将其与Cox回归模型相结合,以获得患者的OS风险评分(OSRS)和PFS风险评分(PFSRS)。
基于OSRS和PFSRS,训练队列和测试队列中的患者被分为高风险组和低风险组,两组的总生存期(训练队列,对数秩检验P<0.001,风险比[HR]:4.14;测试队列,对数秩检验P = 0.014,HR:4.54)和无进展生存期(训练队列,对数秩检验P<0.001,HR:4.52;测试队列,对数秩检验P<0.001,HR:6.64)有明显差异。对OSRS和PFSRS进行进一步联合评估显示,两者在Cox回归模型中均具有显著性(P<0.001),并且多总生存风险评分(MOSRS)在训练队列(P<0.001)和测试队列(P = 0.002)中均显示出比OSRS更出色的分层能力。在Cox回归模型中,没有一项临床特征具有显著性,并且在预测最佳免疫反应方面,该评分在预后分层表现上不如来自随访信息的风险评分。
我们开发了一种基于CT成像的评分,有潜力成为独立的预后因素,用于筛选可能从ICI治疗中获益的患者,这表明CT放射组学可应用于NSCLC的个体化免疫治疗。我们的研究结果应通过未来更大规模的多中心研究进一步验证。