基于机器学习的乳酸酰化相关基因LILRB4预测前列腺癌预后和免疫治疗

IF 5.3
Qinghua Wang, Xin Qin, Yan Zhao, Wei Jiang, Mingming Xu, Xilei Li, Haopeng Li, Juan Zhou, Gang Wu
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引用次数: 0

摘要

乳酸酰化在肿瘤细胞的代谢重编程、增殖、迁移和免疫逃避中起着关键作用。然而,其对前列腺癌(PCa)的具体影响仍知之甚少。本研究旨在探讨乳酸化相关基因(LRGs)在前列腺癌中的作用。使用来自癌症基因组图谱(TCGA)、DKFZ2018、GSE46602和GSE70768队列的数据鉴定和分析LRGs。采用无监督聚类将PCa患者分为两个不同的类。PCa的预后模型使用多种机器学习技术开发。通过训练集和验证集建立并验证LRGs签名。体外和体内研究了白细胞免疫球蛋白样受体B4 (LILRB4)在前列腺癌中的作用。分析前列腺癌患者的LRG表达和预后,发现两种不同的集群具有不同的生存率和免疫反应。机器学习模型展示了预测生存风险的能力,可能有助于制定个性化治疗策略。此外,LILRB4,一个关键的LRG,通过调节NF-κB和PI3K/AKT通路促进PCa的进展,突出了其作为治疗靶点的潜力。LRGs在前列腺癌中起关键作用,影响患者预后、免疫反应和药物敏感性。LRGs标记成为前列腺癌的重要预后工具和有希望的治疗靶点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Lactylation-Related Gene LILRB4 Predicts the Prognosis and Immunotherapy of Prostate Cancer Based on Machine Learning

Lactylation-Related Gene LILRB4 Predicts the Prognosis and Immunotherapy of Prostate Cancer Based on Machine Learning

Lactylation plays a pivotal role in the metabolic reprogramming, proliferation, migration and immune evasion of tumour cells. However, its specific impact on prostate cancer (PCa) remains poorly understood. This study aimed to investigate the role of lactylation related genes (LRGs) in PCa. LRGs were identified and analysed using data from The Cancer Genome Atlas (TCGA), DKFZ2018, GSE46602 and GSE70768 cohorts. Unsupervised clustering was employed to categorise patients with PCa into two distinct clusters. Prognostic models for PCa were developed using multiple machine learning techniques. LRGs signature was established and validated through training and validation sets. The role of leukocyte immunoglobulin-like receptor B4 (LILRB4) in PCa was examined both in vitro and in vivo. Analysis of LRG expression and prognosis in patients with PCa revealed two distinct clusters with differing survival rates and immune responses. Machine learning models demonstrated the ability to predict survival risks, potentially aiding in the development of personalised treatment strategies. Additionally, LILRB4, a key LRG, promotes PCa progression by modulating the NF-κB and PI3K/AKT pathways, highlighting its potential as a therapeutic target. LRGs exert a pivotal influence on PCa, impacting patient prognosis, immune response and drug sensitivity. The LRGs signature emerges as an essential prognostic tool and a promising therapeutic target for PCa.

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来源期刊
CiteScore
11.50
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0.00%
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期刊介绍: The Journal of Cellular and Molecular Medicine serves as a bridge between physiology and cellular medicine, as well as molecular biology and molecular therapeutics. With a 20-year history, the journal adopts an interdisciplinary approach to showcase innovative discoveries. It publishes research aimed at advancing the collective understanding of the cellular and molecular mechanisms underlying diseases. The journal emphasizes translational studies that translate this knowledge into therapeutic strategies. Being fully open access, the journal is accessible to all readers.
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