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一种基于放射组学的方法来评估肿瘤浸润 CD8 细胞与抗 PD-1 或抗 PD-L1 免疫治疗反应的关系:一项影像学生物标志物、回顾性多队列研究。

A radiomics approach to assess tumour-infiltrating CD8 cells and response to anti-PD-1 or anti-PD-L1 immunotherapy: an imaging biomarker, retrospective multicohort study.

机构信息

Gustave Roussy-CentraleSupélec-Therapanacea Centre of Artificial Intelligence in Radiation Therapy and Oncology, Gustave Roussy Cancer Campus, Villejuif, France; Radiomics Team, Molecular Radiotherapy INSERM U1030, Paris-Sud University, Gustave Roussy Cancer Campus, and University of Paris-Saclay, Villejuif, France; Department of Radiation Oncology, Gustave Roussy Cancer Campus, Villejuif, France.

Gustave Roussy-CentraleSupélec-Therapanacea Centre of Artificial Intelligence in Radiation Therapy and Oncology, Gustave Roussy Cancer Campus, Villejuif, France; Centre for Visual Computing, University of Paris-Saclay, Gif-sur-Yvette, France.

出版信息

Lancet Oncol. 2018 Sep;19(9):1180-1191. doi: 10.1016/S1470-2045(18)30413-3. Epub 2018 Aug 14.

DOI:10.1016/S1470-2045(18)30413-3
PMID:30120041
Abstract

BACKGROUND

Because responses of patients with cancer to immunotherapy can vary in success, innovative predictors of response to treatment are urgently needed to improve treatment outcomes. We aimed to develop and independently validate a radiomics-based biomarker of tumour-infiltrating CD8 cells in patients included in phase 1 trials of anti-programmed cell death protein (PD)-1 or anti-programmed cell death ligand 1 (PD-L1) monotherapy. We also aimed to evaluate the association between the biomarker, and tumour immune phenotype and clinical outcomes of these patients.

METHODS

In this retrospective multicohort study, we used four independent cohorts of patients with advanced solid tumours to develop and validate a radiomic signature predictive of immunotherapy response by combining contrast-enhanced CT images and RNA-seq genomic data from tumour biopsies to assess CD8 cell tumour infiltration. To develop the radiomic signature of CD8 cells, we used the CT images and RNA sequencing data of 135 patients with advanced solid malignant tumours who had been enrolled into the MOSCATO trial between May 1, 2012, and March 31, 2016, in France (training set). The genomic data, which are based on the CD8B gene, were used to estimate the abundance of CD8 cells in the samples and data were then aligned with the images to generate the radiomic signatures. The concordance of the radiomic signature (primary endpoint) was validated in a Cancer Genome Atlas [TGCA] database dataset including 119 patients who had available baseline preoperative imaging data and corresponding transcriptomic data on June 30, 2017. From 84 input variables used for the machine-learning method (78 radiomic features, five location variables, and one technical variable), a radiomics-based predictor of the CD8 cell expression signature was built by use of machine learning (elastic-net regularised regression method). Two other independent cohorts of patients with advanced solid tumours were used to evaluate this predictor. The immune phenotype internal cohort (n=100), were randomly selected from the Gustave Roussy Cancer Campus database of patient medical records based on previously described, extreme tumour-immune phenotypes: immune-inflamed (with dense CD8 cell infiltration) or immune-desert (with low CD8 cell infiltration), irrespective of treatment delivered; these data were used to analyse the correlation of the immune phenotype with this biomarker. Finally, the immunotherapy-treated dataset (n=137) of patients recruited from Dec 1, 2011, to Jan 31, 2014, at the Gustave Roussy Cancer Campus, who had been treated with anti-PD-1 and anti-PD-L1 monotherapy in phase 1 trials, was used to assess the predictive value of this biomarker in terms of clinical outcome.

FINDINGS

We developed a radiomic signature for CD8 cells that included eight variables, which was validated with the gene expression signature of CD8 cells in the TCGA dataset (area under the curve [AUC]=0·67; 95% CI 0·57-0·77; p=0·0019). In the cohort with assumed immune phenotypes, the signature was also able to discriminate inflamed tumours from immune-desert tumours (0·76; 0·66-0·86; p<0·0001). In patients treated with anti-PD-1 and PD-L1, a high baseline radiomic score (relative to the median) was associated with a higher proportion of patients who achieved an objective response at 3 months (vs those with progressive disease or stable disease; p=0·049) and a higher proportion of patients who had an objective response (vs those with progressive disease or stable disease; p=0·025) or stable disease (vs those with progressive disease; p=0·013) at 6 months. A high baseline radiomic score was also associated with improved overall survival in univariate (median overall survival 24·3 months in the high radiomic score group, 95% CI 18·63-42·1; vs 11·5 months in the low radiomic score group, 7·98-15·6; hazard ratio 0·58, 95% CI 0·39-0·87; p=0·0081) and multivariate analyses (0·52, 0·35-0·79; p=0·0022).

INTERPRETATION

The radiomic signature of CD8 cells was validated in three independent cohorts. This imaging predictor provided a promising way to predict the immune phenotype of tumours and to infer clinical outcomes for patients with cancer who had been treated with anti-PD-1 and PD-L1. Our imaging biomarker could be useful in estimating CD8 cell count and predicting clinical outcomes of patients treated with immunotherapy, when validated by further prospective randomised trials.

FUNDING

Fondation pour la Recherche Médicale, and SIRIC-SOCRATE 2.0, French Society of Radiation Oncology.

摘要

背景

由于癌症患者对免疫疗法的反应存在差异,因此迫切需要创新的治疗反应预测因子,以改善治疗效果。我们旨在开发并独立验证一种基于肿瘤浸润 CD8 细胞的放射组学生物标志物,用于纳入抗程序性细胞死亡蛋白 1(PD-1)或抗程序性细胞死亡配体 1(PD-L1)单药治疗的 1 期临床试验的患者。我们还旨在评估该生物标志物与肿瘤免疫表型和这些患者的临床结局之间的关联。

方法

在这项回顾性多队列研究中,我们使用四个独立的晚期实体瘤患者队列,通过结合对比增强 CT 图像和肿瘤活检的 RNA 测序基因组数据来评估 CD8 细胞肿瘤浸润,从而开发和验证预测免疫治疗反应的放射组学生物标志物。为了开发 CD8 细胞的放射组学生物标志物,我们使用了 135 名患有晚期实体恶性肿瘤的患者的 CT 图像和 RNA 测序数据,这些患者于 2012 年 5 月 1 日至 2016 年 3 月 31 日期间在法国参加了 MOSCATO 试验(训练集)。基于 CD8B 基因的基因组数据用于估计样本中 CD8 细胞的丰度,然后将数据与图像对齐以生成放射组学生物标志物。使用癌症基因组图谱 [TCGA] 数据库数据集(包括 119 名患者,这些患者于 2017 年 6 月 30 日具有可用的基线术前成像数据和相应的转录组数据)验证了放射组学生物标志物的一致性(主要终点)。从用于机器学习方法的 84 个输入变量(78 个放射组学特征、5 个位置变量和 1 个技术变量)中,使用机器学习(弹性网正则化回归方法)构建了 CD8 细胞表达特征的放射组学预测器。另外两个独立的晚期实体瘤患者队列用于评估该预测器。免疫表型内部队列(n=100)是根据先前描述的极端肿瘤免疫表型,从 Gustave Roussy 癌症园区患者病历数据库中随机选择的:免疫浸润(密集的 CD8 细胞浸润)或免疫荒漠(低 CD8 细胞浸润),无论接受何种治疗;这些数据用于分析免疫表型与该生物标志物的相关性。最后,使用 Gustave Roussy 癌症园区于 2011 年 12 月 1 日至 2014 年 1 月 31 日招募的接受抗 PD-1 和抗 PD-L1 单药治疗的 1 期临床试验的患者数据集(n=137),评估该生物标志物在临床结局方面的预测价值。

发现

我们开发了一种 CD8 细胞的放射组学生物标志物,其中包含 8 个变量,在 TCGA 数据集的 CD8 细胞基因表达特征中得到了验证(曲线下面积[AUC]=0.67;95%CI 0.57-0.77;p=0.0019)。在假设的免疫表型队列中,该标志物还能够区分炎症性肿瘤和免疫荒漠性肿瘤(0.76;0.66-0.86;p<0.0001)。在接受抗 PD-1 和 PD-L1 治疗的患者中,基线时较高的放射组学生物标志物评分(相对于中位数)与 3 个月时客观缓解比例较高相关(与进展性疾病或疾病稳定相比;p=0.049),与客观缓解(与进展性疾病或疾病稳定相比;p=0.025)或疾病稳定(与进展性疾病相比;p=0.013)的患者比例较高。基线时较高的放射组学生物标志物评分也与单变量(高放射组学生物标志物评分组的中位总生存期为 24.3 个月,95%CI 18.63-42.1;低放射组学生物标志物评分组为 11.5 个月,95%CI 7.98-15.6;风险比 0.58,95%CI 0.39-0.87;p=0.0081)和多变量分析(0.52,0.35-0.79;p=0.0022)中的总生存期相关。

解释

CD8 细胞的放射组学生物标志物在三个独立队列中得到了验证。这种影像学预测因子为预测肿瘤的免疫表型和推断接受抗 PD-1 和 PD-L1 治疗的癌症患者的临床结局提供了一种很有前途的方法。我们的成像生物标志物在进一步的前瞻性随机试验中得到验证后,可能有助于估计 CD8 细胞计数并预测免疫治疗患者的临床结局。

资金

法国医学研究基金会和 SIRIC-SOCRATE 2.0,法国放射肿瘤学会。

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