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免疫和缺氧基因特征的整合改善了乳腺癌放射敏感性的预测。

Integration of immune and hypoxia gene signatures improves the prediction of radiosensitivity in breast cancer.

作者信息

Yan Derui, Cai Shang, Bai Lu, Du Zixuan, Li Huijun, Sun Peng, Cao Jianping, Yi Nengjun, Liu Song-Bai, Tang Zaixiang

机构信息

Department of Biostatistics, School of Public Health, Medical College of Soochow University Suzhou 215123, Jiangsu, China.

Suzhou Key Laboratory of Medical Biotechnology, Suzhou Vocational Health College Suzhou 215009, Jiangsu, China.

出版信息

Am J Cancer Res. 2022 Mar 15;12(3):1222-1240. eCollection 2022.

Abstract

Immunity and hypoxia are two important factors that affect the response of cancer patients to radiotherapy. At the same time, considering the limited predictive value of a single predictive model and the uncertainty of grouping patients near the cutoff value, we developed and validated a combined model based on immune- and hypoxia-related gene expression profiles to predict the radiosensitivity of breast cancer patients. This study was based on breast cancer data from The Cancer Genome Atlas (TCGA). Spike-and-slab Lasso regression analysis was performed to select three immune-related genes and develop a radiosensitivity model. Lasso Cox regression modeling selected 11 hypoxia-related genes for development of radiosensitivity model. Three independent datasets (Molecular Taxonomy of Breast Cancer International Consortium [METABRIC], E-TABM-158, GSE103746) were used to validate the predictive value of radiosensitivity signatures. In the TCGA dataset, the 10-year survival probabilities of the immune radioresistant (IRR) and hypoxia radioresistant (HRR) groups were 0.189 (0.037, 0.973) and 0.477 (0.293, 0.776), respectively. The 10-year survival probabilities of the immune radiosensitive (IRS) and hypoxia radiosensitive (HRS) groups were 0.778 (0.676, 0.895) and 0.824 (0.723, 0.939), respectively. Based on these two gene signatures, we further constructed a combined model and divided all patients into three groups (IRS/HRS, mixed, IRR/HRR). We identified the IRS/HRS patients most likely to benefit from radiotherapy; the 10-year survival probability was 0.886 (0.806, 0.976). The 10-year survival probability of the IRR/HRR group was 0. In conclusion, a combined model integrating immune- and hypoxia-related gene signatures could effectively predict the radiosensitivity of breast cancer and more accurately identify radiosensitive and radioresistant patients than a single model.

摘要

免疫和缺氧是影响癌症患者放疗反应的两个重要因素。同时,考虑到单一预测模型的预测价值有限以及在临界值附近对患者进行分组的不确定性,我们开发并验证了一种基于免疫和缺氧相关基因表达谱的联合模型,以预测乳腺癌患者的放射敏感性。本研究基于来自癌症基因组图谱(TCGA)的乳腺癌数据。进行了尖峰和平板套索回归分析以选择三个免疫相关基因并建立放射敏感性模型。套索Cox回归建模选择了11个缺氧相关基因用于建立放射敏感性模型。使用三个独立数据集(国际乳腺癌分子分类联盟[METABRIC]、E-TABM-158、GSE103746)来验证放射敏感性特征的预测价值。在TCGA数据集中,免疫放射抵抗(IRR)组和缺氧放射抵抗(HRR)组的10年生存概率分别为0.189(0.037,0.973)和0.477(0.293,0.776)。免疫放射敏感(IRS)组和缺氧放射敏感(HRS)组的10年生存概率分别为0.778(0.676,0.895)和0.824(0.723,0.939)。基于这两个基因特征,我们进一步构建了一个联合模型,并将所有患者分为三组(IRS/HRS、混合、IRR/HRR)。我们确定了最有可能从放疗中获益的IRS/HRS患者;10年生存概率为0.886(0.806,0.976)。IRR/HRR组的10年生存概率为0。总之,整合免疫和缺氧相关基因特征的联合模型可以有效预测乳腺癌的放射敏感性,并且比单一模型更准确地识别放射敏感和放射抵抗患者。

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A novel immune-related gene signature predicting survival in sarcoma patients.一种预测肉瘤患者生存情况的新型免疫相关基因特征。
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Drug Resist Updat. 2021 Dec;59:100787. doi: 10.1016/j.drup.2021.100787. Epub 2021 Nov 18.
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Personalized medicine: Stem cells in colorectal cancer treatment.个性化医学:结直肠癌治疗中的干细胞。
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Breast cancer.乳腺癌。
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