Integrated machine learning reveals the role of tryptophan metabolism in clear cell renal cell carcinoma and its association with patient prognosis.

IF 5.7 2区 生物学 Q1 BIOLOGY Biology Direct Pub Date : 2024-12-21 DOI:10.1186/s13062-024-00576-w
Fan Li, Haiyi Hu, Liyang Li, Lifeng Ding, Zeyi Lu, Xudong Mao, Ruyue Wang, Wenqin Luo, Yudong Lin, Yang Li, Xianjiong Chen, Ziwei Zhu, Yi Lu, Chenghao Zhou, Mingchao Wang, Liqun Xia, Gonghui Li, Lei Gao
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Abstract

Background: Precision oncology's implementation in clinical practice faces significant constraints due to the inadequacies in tools for detailed patient stratification and personalized treatment methodologies. Dysregulated tryptophan metabolism has emerged as a crucial factor in tumor progression, encompassing immune suppression, proliferation, metastasis, and metabolic reprogramming. However, its precise role in clear cell renal cell carcinoma (ccRCC) remains unclear, and predictive models or signatures based on tryptophan metabolism are conspicuously lacking.

Methods: The influence of tryptophan metabolism on tumor cells was explored using single-cell RNA sequencing data. Genes involved in tryptophan metabolism were identified across both single-cell and bulk-cell dimensions through weighted gene co-expression network analysis (WGCNA) and its single-cell data variant (hdWGCNA). Subsequently, a tryptophan metabolism-related signature was developed using an integrated machine-learning approach. This signature was then examined in multi-omics data to assess its associations with patient clinical features, prognosis, cancer malignancy-related pathways, immune microenvironment, genomic characteristics, and responses to immunotherapy and targeted therapy. Finally, the genes within the signature were validated through experiments including qRT-PCR, Western blot, CCK8 assay, and transwell assay.

Results: Dysregulated tryptophan metabolism was identified as a potential driver of the malignant transformation of normal epithelial cells. The tryptophan metabolism-related signature (TMRS) demonstrated robust predictive capability for overall survival (OS) and progression-free survival (PFS) across multiple datasets. Moreover, a high TMRS risk score correlated with increased tumor malignancy, significant metabolic reprogramming, an inflamed yet dysfunctional immune microenvironment, heightened genomic instability, resistance to immunotherapy, and increased sensitivity to certain targeted therapeutics. Experimental validation revealed differential expression of genes within the signature between RCC and adjacent normal tissues, with reduced expression of DDAH1 linked to enhanced proliferation and metastasis of tumor cells.

Conclusion: This study investigated the potential impact of dysregulated tryptophan metabolism on clear cell renal cell carcinoma, leading to the development of a tryptophan metabolism-related signature that may provide insights into patient prognosis, tumor biological status, and personalized treatment strategies. This signature serves as a valuable reference for further exploring the role of tryptophan metabolism in renal cell carcinoma and for the development of clinical applications based on this metabolic pathway.

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综合机器学习揭示了色氨酸代谢在透明细胞肾细胞癌中的作用及其与患者预后的关系。
背景:精确肿瘤学在临床实践中的实施面临着很大的限制,因为缺乏详细的患者分层和个性化治疗方法的工具。色氨酸代谢失调已成为肿瘤进展的关键因素,包括免疫抑制、增殖、转移和代谢重编程。然而,其在透明细胞肾细胞癌(ccRCC)中的确切作用尚不清楚,基于色氨酸代谢的预测模型或特征明显缺乏。方法:利用单细胞RNA测序技术,探讨色氨酸代谢对肿瘤细胞的影响。通过加权基因共表达网络分析(WGCNA)及其单细胞数据变体(hdWGCNA),在单细胞和大细胞两个维度上鉴定了参与色氨酸代谢的基因。随后,使用集成的机器学习方法开发了色氨酸代谢相关的特征。然后在多组学数据中检查该特征,以评估其与患者临床特征、预后、癌症恶性相关途径、免疫微环境、基因组特征以及对免疫治疗和靶向治疗的反应的关联。最后,通过qRT-PCR、Western blot、CCK8、transwell等实验对签名中的基因进行验证。结果:色氨酸代谢失调被认为是正常上皮细胞恶性转化的潜在驱动因素。色氨酸代谢相关特征(TMRS)在多个数据集中显示出对总生存期(OS)和无进展生存期(PFS)的强大预测能力。此外,高TMRS风险评分与肿瘤恶性程度增加、显著的代谢重编程、炎症但功能失调的免疫微环境、高度的基因组不稳定性、对免疫治疗的耐药性以及对某些靶向治疗的敏感性增加相关。实验验证显示,RCC与邻近正常组织之间的特征基因表达存在差异,DDAH1表达的降低与肿瘤细胞的增殖和转移增强有关。结论:本研究探讨了色氨酸代谢失调对透明细胞肾细胞癌的潜在影响,导致色氨酸代谢相关特征的发展,可能为患者预后、肿瘤生物学状态和个性化治疗策略提供见解。这一特征为进一步探索色氨酸代谢在肾细胞癌中的作用以及基于这一代谢途径开发临床应用提供了有价值的参考。
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来源期刊
Biology Direct
Biology Direct 生物-生物学
CiteScore
6.40
自引率
10.90%
发文量
32
审稿时长
7 months
期刊介绍: Biology Direct serves the life science research community as an open access, peer-reviewed online journal, providing authors and readers with an alternative to the traditional model of peer review. Biology Direct considers original research articles, hypotheses, comments, discovery notes and reviews in subject areas currently identified as those most conducive to the open review approach, primarily those with a significant non-experimental component.
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