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整合癌症干性和新抗原负荷以预测对抗PD1/PDL1治疗的反应性。

Integration of cancer stemness and neoantigen load to predict responsiveness to anti-PD1/PDL1 therapy.

作者信息

Luo Kunpeng, Liu Shuqiang, Shen Xiuyun, Xu Jincheng, Shi Chunpeng, Chao Yuqiu, Wen Zhengchao, Zhang Kejiao, Wang Ru, Liu Bing, Jiang Yanan

机构信息

Department of Pharmacology State-Province Key Laboratories of Biomedicine-Pharmaceutics of China, Key Laboratory of Cardiovascular Research, Ministry of Education, College of Pharmacy, Harbin Medical University, Harbin, China.

Department of Gastroenterology and Hepatology, The Second Affiliated Hospital of Harbin Medical University, Harbin, China.

出版信息

Front Cell Dev Biol. 2022 Nov 17;10:1003656. doi: 10.3389/fcell.2022.1003656. eCollection 2022.

Abstract

Anti-programmed cell death 1/programmed cell death ligand 1 (PD1/PDL1) therapy is an important part of comprehensive cancer therapy. However, many patients suffer from non-response to therapy. Tumor neoantigen burden (TNB) and cancer stemness play essential roles in the responsiveness to therapy. Therefore, the identification of drug candidates for anti-PD1/PDL1 therapy remains an unmet need. Three anti-PD1/PDL1 therapy cohorts were obtained from GEO database and published literatures. Cancer immune characteristics were analyzed using CIBERSORTX, GSVA, and ESTIMATE. WGCNA was employed to identify the gene modules correlated with cancer TNB and stemness. A machine-learning method was used to construct the immunotherapy resistance score (TSIRS). Pharmacogenomic analysis was conducted to explore the potential alternative drugs for anti-PD1/PDL1 therapy resistant patients. CCK-8 assay, EdU assay and wound healing assay were used to validate the effect of the predicted drug on cancer cells. The therapy response and non-response cancer groups have different microenvironment features. TSIRS was developed based on tumor neoantigen and stemness. TSIRS can effectively predict the outcomes of patients with anti-PD1/PDL1 therapy in training, validation and meta cohorts. Meanwhile, TSIRS can reflect the characteristics of tumor microenvironment during anti-PD1/PDL1 therapy. PF-4708671 is identified as a potential alternative drug for patients with resistance to anti-PD1/PDL1 therapy. It possesses significant inhibitive effect on the proliferation and migration of BGC-823 cells. TSIRS is an effective tool in the identification of candidate patients who will be benefit from anti-PD1/PDL1 therapy. Small molecule drug PF-4708671 has the potential to be used in anti-PD1/PDL1 therapy resistant patients.

摘要

抗程序性细胞死亡蛋白1/程序性细胞死亡配体1(PD1/PDL1)疗法是癌症综合治疗的重要组成部分。然而,许多患者对该疗法无反应。肿瘤新抗原负荷(TNB)和癌症干性在治疗反应中起着至关重要的作用。因此,鉴定抗PD1/PDL1疗法的候选药物仍然是一个未满足的需求。从基因表达综合数据库(GEO)和已发表的文献中获取了三个抗PD1/PDL1疗法队列。使用CIBERSORTX、基因集变异分析(GSVA)和肿瘤免疫估计(ESTIMATE)分析癌症免疫特征。采用加权基因共表达网络分析(WGCNA)来鉴定与癌症TNB和干性相关的基因模块。使用机器学习方法构建免疫治疗抗性评分(TSIRS)。进行药物基因组学分析以探索抗PD1/PDL1疗法耐药患者的潜在替代药物。采用细胞计数试剂盒-8(CCK-8)检测、5-乙炔基-2'-脱氧尿苷(EdU)检测和伤口愈合检测来验证预测药物对癌细胞的作用。治疗反应组和无反应组的癌症具有不同的微环境特征。TSIRS是基于肿瘤新抗原和干性开发的。TSIRS能够在训练、验证和荟萃队列中有效预测抗PD1/PDL1疗法患者的治疗结果。同时,TSIRS能够反映抗PD1/PDL1疗法期间肿瘤微环境的特征。PF-4708671被鉴定为抗PD1/PDL1疗法耐药患者的潜在替代药物。它对人胃癌细胞系BGC-823的增殖和迁移具有显著抑制作用。TSIRS是识别将从抗PD1/PDL1疗法中获益的候选患者的有效工具。小分子药物PF-4708671有潜力用于抗PD1/PDL1疗法耐药的患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/313a/9714307/39ac289bb53e/fcell-10-1003656-g001.jpg

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