Kinga Bernatowicz, Ramon Amat, Olivia Prior, Joan Frigola, Marta Ligero, Francesco Grussu, Christina Zatse, Garazi Serna, Paolo Nuciforo, Rodrigo Toledo, Manel Escobar, Elena Garralda, Enriqueta Felip, Raquel Perez-Lopez
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To address these challenges, we develop an ICI response signature by integrating radiomics with T cell-inflamed gene-expression profiles.</p><p><strong>Methods: </strong>We conducted a pan-cancer investigation into the utility of radiomics for TIME assessment, including 1360 tumors from 428 patients. Leveraging contrast-enhanced CT images, we characterized TIME through RNA gene expression analysis, using the T cell-inflamed gene expression signature. Subsequently, a pan-cancer CT-radiomic signature predicting inflamed TIME (CT-TIME) was developed and externally validated. Machine learning was employed to select robust radiomic features and predict inflamed TIME. The study also integrated independent cohorts with longitudinal CT images, baseline biopsies, and comprehensive immunohistochemistry panel evaluation to assess the pan-cancer biological associations, spatiotemporal landscape and clinical utility of the CT-TIME.</p><p><strong>Results: </strong>The CT-TIME signature, comprising four radiomic features linked to a T-cell inflamed microenvironment, demonstrated robust performance with AUCs (95% CI) of 0.85 (0.73 to 0.96) (training) and 0.78 (0.65 to 0.92) (external validation). CT-TIME scores exhibited positive correlations with CD3, CD8, and CD163 expression. Intrapatient analysis revealed considerable heterogeneity in TIME between tumors, which could not be assessed using biopsies. Evaluation of aggregated per-patient CT-TIME scores highlighted its promising clinical utility for dynamically assessing the immune microenvironment and predicting immunotherapy response across diverse scenarios in advanced cancer. Despite demonstrating progression disease at the first follow-up, patients within the inflamed status group, identified by CT-TIME, exhibited significantly prolonged progression-free survival (PFS), with some surpassing 5 months, suggesting a potential phenomenon of pseudoprogression. Cox models using aggregated CT-TIME scores from baseline images revealed a statistically significant reduction in the risk of PFS in the pan-cancer cohort (HR 0.62, 95% CI 0.44 to 0.88, p=0.007), and Kaplan-Meier analysis further confirmed substantial differences in PFS between patients with inflamed and uninflamed status (log-rank test p=0.009).</p><p><strong>Conclusions: </strong>The signature holds promise for impacting clinical decision-making, pan-cancer patient stratification, and treatment outcomes in immune checkpoint therapies.</p>","PeriodicalId":14820,"journal":{"name":"Journal for Immunotherapy of Cancer","volume":"13 1","pages":""},"PeriodicalIF":10.3000,"publicationDate":"2025-01-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11749429/pdf/","citationCount":"0","resultStr":"{\"title\":\"Radiomics signature for dynamic monitoring of tumor inflamed microenvironment and immunotherapy response prediction.\",\"authors\":\"Kinga Bernatowicz, Ramon Amat, Olivia Prior, Joan Frigola, Marta Ligero, Francesco Grussu, Christina Zatse, Garazi Serna, Paolo Nuciforo, Rodrigo Toledo, Manel Escobar, Elena Garralda, Enriqueta Felip, Raquel Perez-Lopez\",\"doi\":\"10.1136/jitc-2024-009140\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>The efficacy of immune checkpoint inhibitors (ICIs) depends on the tumor immune microenvironment (TIME), with a preference for a T cell-inflamed TIME. 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引用次数: 0
摘要
背景:免疫检查点抑制剂(ICIs)的疗效取决于肿瘤免疫微环境(TIME),尤其是T细胞炎症的TIME。然而,通过活组织检查进行基于组织的评估的挑战引发了对非侵入性替代方法的探索,例如放射组学,以全面评估不同癌症的TIME。为了解决这些挑战,我们通过将放射组学与T细胞炎症基因表达谱相结合,开发了ICI反应特征。方法:我们对放射组学在TIME评估中的应用进行了一项泛癌症调查,包括来自428名患者的1360个肿瘤。利用对比增强CT图像,我们通过RNA基因表达分析,利用T细胞炎症基因表达特征来表征TIME。随后,开发了一种预测炎症时间(CT-TIME)的泛癌症ct放射学特征,并进行了外部验证。采用机器学习选择稳健的放射学特征并预测炎症时间。该研究还整合了纵向CT图像、基线活检和综合免疫组织化学小组评估的独立队列,以评估CT- time的泛癌症生物学关联、时空景观和临床应用。结果:CT-TIME特征,包括与t细胞炎症微环境相关的四个放射学特征,显示出稳健的性能,auc (95% CI)为0.85(0.73至0.96)(训练)和0.78(0.65至0.92)(外部验证)。CT-TIME评分与CD3、CD8和CD163的表达呈正相关。患者内部分析显示肿瘤之间的TIME存在相当大的异质性,这无法通过活检来评估。对每位患者CT-TIME评分的评估强调了其在动态评估免疫微环境和预测晚期癌症不同情况下免疫治疗反应方面的临床应用前景。尽管在第一次随访时表现出疾病进展,但通过CT-TIME识别的炎症状态组患者表现出明显延长的无进展生存期(PFS),其中一些患者超过5个月,提示潜在的假进展现象。Cox模型使用来自基线图像的汇总CT-TIME评分显示,在泛癌症队列中PFS的风险有统计学意义的降低(HR 0.62, 95% CI 0.44至0.88,p=0.007), Kaplan-Meier分析进一步证实了炎症状态和非炎症状态患者PFS的显著差异(log-rank检验p=0.009)。结论:该签名有望影响免疫检查点治疗的临床决策、泛癌症患者分层和治疗结果。
Radiomics signature for dynamic monitoring of tumor inflamed microenvironment and immunotherapy response prediction.
Background: The efficacy of immune checkpoint inhibitors (ICIs) depends on the tumor immune microenvironment (TIME), with a preference for a T cell-inflamed TIME. However, challenges in tissue-based assessments via biopsies have triggered the exploration of non-invasive alternatives, such as radiomics, to comprehensively evaluate TIME across diverse cancers. To address these challenges, we develop an ICI response signature by integrating radiomics with T cell-inflamed gene-expression profiles.
Methods: We conducted a pan-cancer investigation into the utility of radiomics for TIME assessment, including 1360 tumors from 428 patients. Leveraging contrast-enhanced CT images, we characterized TIME through RNA gene expression analysis, using the T cell-inflamed gene expression signature. Subsequently, a pan-cancer CT-radiomic signature predicting inflamed TIME (CT-TIME) was developed and externally validated. Machine learning was employed to select robust radiomic features and predict inflamed TIME. The study also integrated independent cohorts with longitudinal CT images, baseline biopsies, and comprehensive immunohistochemistry panel evaluation to assess the pan-cancer biological associations, spatiotemporal landscape and clinical utility of the CT-TIME.
Results: The CT-TIME signature, comprising four radiomic features linked to a T-cell inflamed microenvironment, demonstrated robust performance with AUCs (95% CI) of 0.85 (0.73 to 0.96) (training) and 0.78 (0.65 to 0.92) (external validation). CT-TIME scores exhibited positive correlations with CD3, CD8, and CD163 expression. Intrapatient analysis revealed considerable heterogeneity in TIME between tumors, which could not be assessed using biopsies. Evaluation of aggregated per-patient CT-TIME scores highlighted its promising clinical utility for dynamically assessing the immune microenvironment and predicting immunotherapy response across diverse scenarios in advanced cancer. Despite demonstrating progression disease at the first follow-up, patients within the inflamed status group, identified by CT-TIME, exhibited significantly prolonged progression-free survival (PFS), with some surpassing 5 months, suggesting a potential phenomenon of pseudoprogression. Cox models using aggregated CT-TIME scores from baseline images revealed a statistically significant reduction in the risk of PFS in the pan-cancer cohort (HR 0.62, 95% CI 0.44 to 0.88, p=0.007), and Kaplan-Meier analysis further confirmed substantial differences in PFS between patients with inflamed and uninflamed status (log-rank test p=0.009).
Conclusions: The signature holds promise for impacting clinical decision-making, pan-cancer patient stratification, and treatment outcomes in immune checkpoint therapies.
期刊介绍:
The Journal for ImmunoTherapy of Cancer (JITC) is a peer-reviewed publication that promotes scientific exchange and deepens knowledge in the constantly evolving fields of tumor immunology and cancer immunotherapy. With an open access format, JITC encourages widespread access to its findings. The journal covers a wide range of topics, spanning from basic science to translational and clinical research. Key areas of interest include tumor-host interactions, the intricate tumor microenvironment, animal models, the identification of predictive and prognostic immune biomarkers, groundbreaking pharmaceutical and cellular therapies, innovative vaccines, combination immune-based treatments, and the study of immune-related toxicity.