Unravelling the metabolic landscape of cutaneous melanoma: Insights from single-cell sequencing analysis and machine learning for prognostic assessment of lactate metabolism

IF 3.5 3区 医学 Q1 DERMATOLOGY
Jiaheng Xie, Pengpeng Zhang, Chenfeng Ma, Qikai Tang, Xinxin Zhou, Xiaolong Xu, Min Zhang, Songyun Zhao, Liping Zhou, Min Qi
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Abstract

This manuscript presents a comprehensive investigation into the role of lactate metabolism-related genes as potential prognostic markers in skin cutaneous melanoma (SKCM). Bulk-transcriptome data from The Cancer Genome Atlas (TCGA) and GSE19234, GSE22153, and GSE65904 cohorts from GEO database were processed and harmonized to mitigate batch effects. Lactate metabolism scores were assigned to individual cells using the ‘AUCell’ package. Weighted Co-expression Network Analysis (WGCNA) was employed to identify gene modules correlated with lactate metabolism. Machine learning algorithms were applied to construct a prognostic model, and its performance was evaluated in multiple cohorts. Immune correlation, mutation analysis, and enrichment analysis were conducted to further characterize the prognostic model's biological implications. Finally, the function of key gene NDUFS7 was verified by cell experiments. Machine learning resulted in an optimal prognostic model, demonstrating significant prognostic value across various cohorts. In the different cohorts, the high-risk group showed a poor prognosis. Immune analysis indicated differences in immune cell infiltration and checkpoint gene expression between risk groups. Mutation analysis identified genes with high mutation loads in SKCM. Enrichment analysis unveiled enriched pathways and biological processes in high-risk SKCM patients. NDUFS7 was found to be a hub gene in the protein–protein interaction network. After the expression of NDUFS7 was reduced by siRNA knockdown, CCK-8, colony formation, transwell and wound healing tests showed that the activity, proliferation and migration of A375 and WM115 cell lines were significantly decreased. This study offers insights into the prognostic significance of lactate metabolism-related genes in SKCM.

揭开皮肤黑色素瘤的代谢图谱:单细胞测序分析和机器学习对乳酸代谢预后评估的启示。
本手稿全面研究了乳酸代谢相关基因作为皮肤黑色素瘤(SKCM)潜在预后标志物的作用。对来自癌症基因组图谱(TCGA)和GEO数据库的GSE19234、GSE22153和GSE65904队列的大量转录组数据进行了处理和统一,以减轻批次效应。使用 "AUCell "软件包为单个细胞分配乳酸代谢分数。加权共表达网络分析(WGCNA)用于识别与乳酸代谢相关的基因模块。应用机器学习算法构建预后模型,并在多个队列中对其性能进行评估。为了进一步确定预后模型的生物学意义,还进行了免疫相关性分析、突变分析和富集分析。最后,通过细胞实验验证了关键基因 NDUFS7 的功能。机器学习产生了一个最佳预后模型,在不同队列中显示出显著的预后价值。在不同队列中,高风险组的预后较差。免疫分析表明,不同风险组的免疫细胞浸润和检查点基因表达存在差异。突变分析确定了SKCM中突变负荷较高的基因。富集分析揭示了高风险SKCM患者的富集通路和生物过程。研究发现,NDUFS7是蛋白-蛋白相互作用网络中的一个枢纽基因。通过 siRNA 敲除减少 NDUFS7 的表达后,CCK-8、集落形成、跨孔和伤口愈合试验表明,A375 和 WM115 细胞系的活性、增殖和迁移均显著降低。本研究有助于了解乳酸代谢相关基因在 SKCM 中的预后意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Experimental Dermatology
Experimental Dermatology 医学-皮肤病学
CiteScore
6.70
自引率
5.60%
发文量
201
审稿时长
2 months
期刊介绍: Experimental Dermatology provides a vehicle for the rapid publication of innovative and definitive reports, letters to the editor and review articles covering all aspects of experimental dermatology. Preference is given to papers of immediate importance to other investigators, either by virtue of their new methodology, experimental data or new ideas. The essential criteria for publication are clarity, experimental soundness and novelty. Letters to the editor related to published reports may also be accepted, provided that they are short and scientifically relevant to the reports mentioned, in order to provide a continuing forum for discussion. Review articles represent a state-of-the-art overview and are invited by the editors.
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