Comprehensive profiling of endocrine metabolism identifies a novel signature with robust predictive value in ovarian cancer

IF 3.2 4区 医学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Journal of Gene Medicine Pub Date : 2024-04-30 DOI:10.1002/jgm.3686
Dan Yu, Yan Luo, Rong Guo, Fang Ma, Yunyun Chang, Jianhong Dang
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Abstract

Background

The cell endocrine pathway is a critical physiological process composed of the endoplasmic reticulum, Golgi apparatus and associated vesicles. Loss of enzymes or proteins can cause dysfunction of endoplasmic reticulum and Golgi apparatus and affect secretion pathways leading to a variety of human diseases, including cancer.

Methods

The single-cell RNA sequencing and single nucleotide variant principal component analysis data of ovarian cancer were retrieved from The Cancer Genome Atlas and Gene Expression Omnibus (GEO) datasets. Eighty-four genes from SECRETORY_PATHWAYs were obtained from the gene set enrichment analysis (GSEA) website. Univariate cox regression analyses and ConsensusClusterPlus were used to identify prognostic genes and molecular subtypes, which were validated using the tumor immune dysfunction and exclusion (i.e. TIDE) analysis and gene mutation analysis. A prognosis model was established by randomForestSRC. Abundant infiltrated immune cells and pathway enrichment analyses were carried out, respectively, through ssGSEA, ESTIMATE, MCP-counter and GSEA. The drug sensitive analysis was performed using pRRophetic package. Immunotherapy datasets and pan-carcinoma analysis were used to examine the performance of prognostic model.

Results

Eighteen prognostic genes from SECRETORY_PATHWAYs were found in both TCGA and GEO datasets. Next, two clusters (C1 and C2) were determined, for which C1 with a poor prognosis had higher immune infiltration. Tumor-related pathways, such as PATHWAYS_IN_CANCER and B_CELL_RECEPTOR_SIGNALING_PATHWAY, were enriched in C1. Moreover, C2 was suitable for immunotherapy. A four-gene (DNAJA1, NDRG3, LUZP1 and ZCCHC24) signature was developed and successfully validated. RiskScore of higher levels were significantly associated with worse prognoses. An enhanced immune infiltration, increased pathways score and inappropriate immunotherapy were observed in the high RiskScore group. The high- and low-RiskScore groups had different drug sensitivities. Immunotherapy datasets and pan-carcinoma analysis indicated that the low RiskScore group may benefit from immunotherapy.

Conclusions

Based on the perspective of the secretory signaling pathway, a robust prognostic signature with great performances was determined, which may provide clues for clinical precision treatment of ovarian cancer.

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内分泌代谢综合分析确定了对卵巢癌具有强大预测价值的新特征
背景 细胞内分泌途径是一个关键的生理过程,由内质网、高尔基体和相关囊泡组成。酶或蛋白质的缺失会导致内质网和高尔基体功能失调,影响分泌途径,从而引发包括癌症在内的多种人类疾病。 方法 从癌症基因组图谱(The Cancer Genome Atlas)和基因表达总集(Gene Expression Omnibus,GEO)数据集中检索卵巢癌的单细胞 RNA 测序和单核苷酸变异主成分分析数据。从基因组富集分析(GSEA)网站获取了 SECRETORY_PATHWAYs 中的 84 个基因。利用单变量Cox回归分析和ConsensusClusterPlus确定预后基因和分子亚型,并通过肿瘤免疫功能障碍和排斥(即TIDE)分析和基因突变分析进行验证。随机森林SRC建立了预后模型。通过ssGSEA、ESTIMATE、MCP-counter和GSEA分别进行了大量浸润免疫细胞和通路富集分析。药物敏感性分析使用 pRRophetic 软件包进行。免疫治疗数据集和泛癌分析用于检验预后模型的性能。 结果 在TCGA和GEO数据集中发现了18个来自SECRETORY_PATHWAYs的预后基因。然后,确定了两个集群(C1 和 C2),其中预后较差的 C1 具有较高的免疫浸润。C1中富集了与肿瘤相关的通路,如PATHWAYS_IN_CANCER和B_CELL_RECEPTOR_SIGNALING_PATHWAY。此外,C2 适合免疫疗法。四基因(DNAJA1、NDRG3、LUZP1 和 ZCCHC24)特征被开发出来并成功验证。风险分数越高,预后越差。在高风险分数组中,可以观察到免疫浸润增强、路径评分增加和不适当的免疫疗法。高风险分数组和低风险分数组对药物的敏感性不同。免疫治疗数据集和泛癌分析表明,低风险分数组可能会从免疫治疗中获益。 结论 基于分泌信号通路的视角,确定了一个性能卓越的稳健预后特征,可为卵巢癌的临床精准治疗提供线索。
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来源期刊
Journal of Gene Medicine
Journal of Gene Medicine 医学-生物工程与应用微生物
CiteScore
6.40
自引率
0.00%
发文量
80
审稿时长
6-12 weeks
期刊介绍: The aims and scope of The Journal of Gene Medicine include cutting-edge science of gene transfer and its applications in gene and cell therapy, genome editing with precision nucleases, epigenetic modifications of host genome by small molecules, siRNA, microRNA and other noncoding RNAs as therapeutic gene-modulating agents or targets, biomarkers for precision medicine, and gene-based prognostic/diagnostic studies. Key areas of interest are the design of novel synthetic and viral vectors, novel therapeutic nucleic acids such as mRNA, modified microRNAs and siRNAs, antagomirs, aptamers, antisense and exon-skipping agents, refined genome editing tools using nucleic acid /protein combinations, physically or biologically targeted delivery and gene modulation, ex vivo or in vivo pharmacological studies including animal models, and human clinical trials. Papers presenting research into the mechanisms underlying transfer and action of gene medicines, the application of the new technologies for stem cell modification or nucleic acid based vaccines, the identification of new genetic or epigenetic variations as biomarkers to direct precision medicine, and the preclinical/clinical development of gene/expression signatures indicative of diagnosis or predictive of prognosis are also encouraged.
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