Pang Runming, Qin Chunxin
Department of Thyroid Breast Surgery, Weihai Municipal Hospital, Cheeloo College of Medicine, Shandong University, Weihai 264299, China.
Evid Based Complement Alternat Med. 2022 Jun 3;2022:5803077. doi: 10.1155/2022/5803077. eCollection 2022.
This study aimed to reveal the molecular characteristics and potential biomarker of immune-activated and immunosuppressive invasive thyroid carcinoma.
Expression and clinical data for invasive thyroid carcinoma were obtained from the TCGA database. Tumor samples were divided into immune-activated or immunosuppressive groups based on the immune enrichment score calculated by ssGSEA. Differentially expressed genes (DEGs) between tumor vs. normal groups or between immune-activated vs. immunosuppressive groups were screened, followed by functional enrichment. Immune infiltration was evaluated using the ESTIMATE, CIBERSORTx, and EPIC algorithms, respectively. A random forest algorithm and Lasso cox analysis were used to identify gene signatures for risk model construction.
Totally 1171 DEGs were screened between tumor vs. normal groups, and multiple tumorigenesis-associated pathways were significantly activated in invasive thyroid carcinoma. Compared to immune-activated samples, immunosuppressive samples showed higher tumor purity, lower immune/stromal scores, and lower expression of immune markers, as well as lower infiltration abundance of CD4+ T cells and CD8+ T cells. A risk model based on a 12-immune signature (CCR7, CD1B, CD86, CSF2RB, HCK, HLA-DQA1, LTA, LTB, LYZ, NOD2, TNFRSF9, and TNFSF11) was developed to evaluate the immune infiltration status (AUC = 0.998; AUC of 0.958 and 0.979 in the two external validation datasets), which showed a higher clinical benefit and high accuracy. Immune-activated samples presented lower IC50 value for bortezomib, MG.132, staurosporine, and AZD8055, indicating sensitivity to these drugs.
A 12-gene-based immune signature was developed to predict the immune infiltration status for invasive thyroid carcinoma patients and then to identify the subsets of invasive thyroid carcinoma patients who might benefit from immunotherapy.
本研究旨在揭示免疫激活型和免疫抑制型侵袭性甲状腺癌的分子特征及潜在生物标志物。
从TCGA数据库获取侵袭性甲状腺癌的表达数据和临床资料。根据单样本基因集富集分析(ssGSEA)计算的免疫富集评分,将肿瘤样本分为免疫激活组或免疫抑制组。筛选肿瘤组与正常组之间或免疫激活组与免疫抑制组之间的差异表达基因(DEG),随后进行功能富集分析。分别使用ESTIMATE、CIBERSORTx和EPIC算法评估免疫浸润情况。采用随机森林算法和套索cox分析确定用于构建风险模型的基因特征。
肿瘤组与正常组之间共筛选出1171个DEG,多种肿瘤发生相关通路在侵袭性甲状腺癌中显著激活。与免疫激活样本相比,免疫抑制样本显示出更高的肿瘤纯度、更低的免疫/基质评分、更低的免疫标志物表达,以及更低的CD4+T细胞和CD8+T细胞浸润丰度。基于12个免疫特征(CCR7、CD1B、CD86、CSF2RB、HCK、HLA-DQA1、LTA、LTB、LYZ、NOD2、TNFRSF9和TNFSF11)建立了一个风险模型,用于评估免疫浸润状态(曲线下面积[AUC]=0.998;在两个外部验证数据集中AUC分别为0.958和0.979),显示出更高的临床效益和高准确性。免疫激活样本对硼替佐米、MG.132、星形孢菌素和AZD8055的半数抑制浓度(IC50)值较低,表明对这些药物敏感。
建立了基于12个基因的免疫特征,以预测侵袭性甲状腺癌患者的免疫浸润状态,进而识别可能从免疫治疗中获益的侵袭性甲状腺癌患者亚组。