浆细胞特征预测肺腺癌的预后和治疗效果。

IF 4.9 2区 医学 Q2 CELL BIOLOGY Cellular Oncology Pub Date : 2024-04-01 Epub Date: 2023-10-09 DOI:10.1007/s13402-023-00883-w
Long Shu, Jun Tang, Shuang Liu, Yongguang Tao
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引用次数: 0

摘要

目的:本研究旨在确定调节肿瘤浸润性浆细胞(PC)的关键基因,为创新免疫疗法提供新的见解。方法:在肺腺癌(LUAD)患者中使用机器学习方法鉴定与PC相关的关键基因。使用TCGA数据开发了一个名为PC评分的预后模型,并在GEO队列中进行了验证。我们评估了高PC评分组的分子背景、免疫特征和药物敏感性。实时PCR用于评估中枢基因在定位LUAD患者和LUAD细胞系中的表达。结果:我们基于17个PC相关中枢基因(ELOVL6、MFI2、FURIN、DOK1、ERO1LB、CLEC7A、ZNF431、KIAA1324、NUCB2、TXNDC11、ICAM3、CR2、CLIC6、CARNS1、P2RY13、KLF15和SLC24A4)构建了PC评分。较高的年龄、TNM分期和PC评分独立预测较短的总生存期。一年、三年和五年总生存期的PC评分的AUC值分别为0.713、0.716和0.690。综合年龄、分期和PC评分的列线图模型显示出比单独分期显著更高的预测值(P 结论:我们提出了一种可以有效识别高危LUAD患者的预测模式,并发现了三个与PC肿瘤浸润密切相关的新基因。
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Plasma cell signatures predict prognosis and treatment efficacy for lung adenocarcinoma.

Purpose: This study aims to identify key genes regulating tumor infiltrating plasma cells (PC) and provide new insights for innovative immunotherapy.

Methods: Key genes related to PC were identified using machine learning in lung adenocarcinoma (LUAD) patients. A prognostic model called PC scores was developed using TCGA data and validated with GEO cohorts. We assessed the molecular background, immune features, and drug sensitivity of the high PC scores group. Real-time PCR was utilized to assess the expression of hub genes in both localized LUAD patients and LUAD cell lines.

Results: We constructed PC scores based on seventeen PC-related hub genes (ELOVL6, MFI2, FURIN, DOK1, ERO1LB, CLEC7A, ZNF431, KIAA1324, NUCB2, TXNDC11, ICAM3, CR2, CLIC6, CARNS1, P2RY13, KLF15, and SLC24A4). Higher age, TNM stage, and PC scores independently predicted shorter overall survival. The AUC value of PC scores for one year, three years, and five years of overall survival were 0.713, 0.716, and 0.690, separately. The nomogram model that integrated age, stage, and PC scores showed significantly higher predictive value than stage alone (P < 0.01). High PC scores group exhibited an immune suppressing microenvironment with lower B, CD8 + T, CD4 + T, and dendritic cell infiltration. Docetaxel, gefitinib, and erlotinib had lower IC50 in high PC groups (P < 0.001). After validation through the local cohort and in vitro experiments, we ultimately confirmed three key potential targets: MFI2, KLF15, and CLEC7A.

Conclusion: We proposed a prediction mode which can effectively identify high-risk LUAD patients and found three novel genes closely correlated with PC tumor infiltration.

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来源期刊
Cellular Oncology
Cellular Oncology ONCOLOGY-CELL BIOLOGY
CiteScore
10.30
自引率
1.50%
发文量
86
审稿时长
12 months
期刊介绍: The Official Journal of the International Society for Cellular Oncology Focuses on translational research Addresses the conversion of cell biology to clinical applications Cellular Oncology publishes scientific contributions from various biomedical and clinical disciplines involved in basic and translational cancer research on the cell and tissue level, technical and bioinformatics developments in this area, and clinical applications. This includes a variety of fields like genome technology, micro-arrays and other high-throughput techniques, genomic instability, SNP, DNA methylation, signaling pathways, DNA organization, (sub)microscopic imaging, proteomics, bioinformatics, functional effects of genomics, drug design and development, molecular diagnostics and targeted cancer therapies, genotype-phenotype interactions. A major goal is to translate the latest developments in these fields from the research laboratory into routine patient management. To this end Cellular Oncology forms a platform of scientific information exchange between molecular biologists and geneticists, technical developers, pathologists, (medical) oncologists and other clinicians involved in the management of cancer patients. In vitro studies are preferentially supported by validations in tumor tissue with clinicopathological associations.
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