Identification of diagnostic biomarkers and immune cell profiles associated with COPD integrated bioinformatics and machine learning

IF 5.3
Zirui Zhu, Zhuo Zeng, Baichen Song, Huishan Chen, Huiqing Zeng
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引用次数: 0

Abstract

This retrospective transcriptomic study leveraged bioinformatics and machine learning algorithms to identify novel gene biomarkers and explore immune cell infiltration profiles associated with chronic obstructive pulmonary disease (COPD). Utilizing an integrated analysis of metadata encompassing six gene expression omnibus (GEO) microarray datasets, 987 differentially expressed genes were identified. Further gene ontology and pathway enrichment analyses revealed the enrichment of these genes across various biological processes and pathways. Moreover, a systematic integration of two machine learning algorithms along with pathway-gene correlations identified six candidate biomarkers, which were validated in a separate cohort comprising six additional microarray datasets, ultimately identifying ADD3 and GNAS as diagnostic biomarkers for COPD. Subsequently, the diagnostic efficacy of ADD3 and GNAS was assessed, and the impact of their expression levels on overall survival was further evaluated and quantified in the validation cohort. Examination of immune cell subtype infiltration found increased proportions of cytotoxic CD8+ T cells, resting and activated NK cells, along with decreased M0 and M2 macrophages, in COPD versus control samples. Correlation analyses also uncovered significant associations between ADD3 and GNAS expression and infiltration of various immune cell types. In conclusion, this study elucidates crucial COPD diagnostic biomarkers and immune cell profiles which may illuminate the immunopathological drivers of COPD progression, representing personalized therapeutic targets warranting further investigation.

Abstract Image

鉴定与慢性阻塞性肺病相关的诊断生物标志物和免疫细胞图谱,集成生物信息学和机器学习。
这项回顾性转录组学研究利用生物信息学和机器学习算法来识别新型基因生物标记物,并探索与慢性阻塞性肺病(COPD)相关的免疫细胞浸润特征。通过对包含六个基因表达总库(GEO)微阵列数据集的元数据进行综合分析,确定了 987 个差异表达基因。进一步的基因本体和通路富集分析表明,这些基因在各种生物过程和通路中都有富集。此外,通过系统整合两种机器学习算法和通路-基因相关性,确定了六个候选生物标志物,并在由另外六个微阵列数据集组成的单独队列中进行了验证,最终确定 ADD3 和 GNAS 为慢性阻塞性肺病的诊断生物标志物。随后,对 ADD3 和 GNAS 的诊断效果进行了评估,并在验证队列中进一步评估和量化了它们的表达水平对总生存期的影响。对免疫细胞亚型浸润的研究发现,与对照样本相比,慢性阻塞性肺病样本中细胞毒性 CD8+ T 细胞、静息和活化的 NK 细胞比例增加,M0 和 M2 巨噬细胞减少。相关分析还发现,ADD3 和 GNAS 的表达与各种免疫细胞类型的浸润之间存在显著关联。总之,这项研究阐明了重要的慢性阻塞性肺病诊断生物标志物和免疫细胞图谱,它们可能揭示了慢性阻塞性肺病进展的免疫病理驱动因素,是值得进一步研究的个性化治疗靶点。
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来源期刊
CiteScore
11.50
自引率
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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