α-羟基丁酸盐在调节脓毒症进展中的作用:通过多数据库数据挖掘、机器学习和无监督聚类识别关键靶点和生物标志物。

IF 4.8 2区 医学 Q1 PHARMACOLOGY & PHARMACY
Frontiers in Pharmacology Pub Date : 2025-09-17 eCollection Date: 2025-01-01 DOI:10.3389/fphar.2025.1615269
Qing Lu, Yujie Wu, Dayong Liao, Ying Sun
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引用次数: 0

摘要

背景:脓毒症仍然是世界范围内死亡和发病的主要原因。最近的研究表明,肠道微生物衍生的代谢物,如α-羟基丁酸酯(α-HB),可能在脓毒症的进展中起关键作用。然而,α-HB参与脓毒症的分子机制尚不清楚。本研究旨在通过多数据库数据挖掘、机器学习和无监督聚类分析来探索α-HB的靶点及其与脓毒症进展的关系。方法:通过SEA、SuperPred和SwissTargetPrediction三个数据库的综合数据挖掘,鉴定α- hb相关靶点。从GEO数据集GSE26440中获得脓毒症相关靶点,并分析这些数据集的交集以揭示共同靶点。功能富集分析、蛋白-蛋白相互作用(PPI)网络构建和机器学习算法(L1-LASSO、RF和SVM)被用于识别生物标志物。此外,构建nomogram来预测脓毒症的进展。通过聚类、GSVA和ssGSEA分析来探索脓毒症亚型。通过分子对接模拟研究α-HB与关键靶点之间的相互作用。结果:α-HB与脓毒症之间共鉴定出42个共同靶点,在免疫反应、缺氧和癌症相关途径中显著富集。基于机器学习的特征选择确定了与脓毒症相关的四种强大的生物标志物(APEX1, CTSD, SLC40A1, PIK3CB)。构建的nomogram对脓毒症风险具有较高的预测准确性。无监督聚类揭示了两种不同的α- hb相关脓毒症亚型,它们具有不同的免疫细胞浸润模式和途径活性,特别是涉及免疫和炎症途径。亚型1主要与非幸存者相关,而亚型2在幸存者中更为常见,显示出生存状态的显著差异。分子对接分析进一步揭示了α-HB与关键靶点(APEX1、CTSD、SLC40A1、PIK3CB)之间的潜在相互作用,为α-HB在脓毒症中的分子机制提供了新的见解。结论:本研究确定了脓毒症的关键α- hb相关靶点和生物标志物,为脓毒症的病理生理机制提供了新的认识。这些发现强调了α-HB在调节免疫应答中的潜力,并提示α-HB相关靶点可能成为脓毒症治疗的有希望的治疗靶点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The role of α-hydroxybutyrate in modulating sepsis progression: identification of key targets and biomarkers through multi-database data mining, machine learning, and unsupervised clustering.

Background: Sepsis remains a major cause of mortality and morbidity worldwide. Recent studies suggest that gut microbiota-derived metabolites, such as α-hydroxybutyrate (α-HB), may play a critical role in the progression of sepsis. However, the molecular mechanisms underlying α-HB's involvement in sepsis remain unclear. This study aims to explore the targets of α-HB and their association with sepsis progression using multi-database data mining, machine learning, and unsupervised clustering analyses.

Methods: α-HB-related targets were identified through comprehensive data mining from three databases: SEA, SuperPred, and SwissTargetPrediction. Sepsis-related targets were obtained from the GEO dataset GSE26440, and the intersection of these datasets was analyzed to reveal common targets. Functional enrichment analysis, protein-protein interaction (PPI) network construction, and machine learning algorithms (L1-LASSO, RF, and SVM) were applied to identify biomarkers. Additionally, a nomogram was constructed to predict sepsis progression. Clustering, GSVA, and ssGSEA analyses were performed to explore sepsis subtypes. Molecular docking simulations was conducted to investigate interactions between α-HB and key targets.

Results: A total of 42 common targets were identified between α-HB and sepsis, with significant enrichment in pathways related to immune response, hypoxia, and cancer. Machine learning-based feature selection identified four robust biomarkers (APEX1, CTSD, SLC40A1, PIK3CB) associated with sepsis. The constructed nomogram demonstrated high predictive accuracy for sepsis risk. Unsupervised clustering revealed two distinct α-HB-related sepsis subtypes with differential immune cell infiltration patterns and pathway activities, particularly involving immune and inflammatory pathways. Subtype 1 was predominantly associated with non-survivors, while Subtype 2 was more frequent among survivors, showing a significant difference in survival status. Molecular docking analysis further indicated potential interactions between α-HB and key targets (APEX1, CTSD, SLC40A1, PIK3CB), providing insights into the molecular mechanisms of α-HB in sepsis.

Conclusion: This study identifies key α-HB-related targets and biomarkers for sepsis, offering new insights into its pathophysiology. The findings highlight the potential of α-HB in modulating immune responses and suggest that α-HB-related targets could serve as promising therapeutic targets for sepsis management.

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来源期刊
Frontiers in Pharmacology
Frontiers in Pharmacology PHARMACOLOGY & PHARMACY-
CiteScore
7.80
自引率
8.90%
发文量
5163
审稿时长
14 weeks
期刊介绍: Frontiers in Pharmacology is a leading journal in its field, publishing rigorously peer-reviewed research across disciplines, including basic and clinical pharmacology, medicinal chemistry, pharmacy and toxicology. Field Chief Editor Heike Wulff at UC Davis is supported by an outstanding Editorial Board of international researchers. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide.
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