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基于机器学习和生物信息学分析鉴定 I 型肺动脉高压的潜在生物标志物。

Identification of Potential Biomarkers for Group I Pulmonary Hypertension Based on Machine Learning and Bioinformatics Analysis.

机构信息

Center for Gene Diagnosis, Department of Clinical Laboratory Medicine, Zhongnan Hospital of Wuhan University, Wuhan 430071, China.

Department of Cardial Surgery, Zhongnan Hospital of Wuhan University, Wuhan 430060, China.

出版信息

Int J Mol Sci. 2023 Apr 28;24(9):8050. doi: 10.3390/ijms24098050.

Abstract

A number of processes and pathways have been reported in the development of Group I pulmonary hypertension (Group I PAH); however, novel biomarkers need to be identified for a better diagnosis and management. We employed a robust rank aggregation (RRA) algorithm to shortlist the key differentially expressed genes (DEGs) between Group I PAH patients and controls. An optimal diagnostic model was obtained by comparing seven machine learning algorithms and was verified in an independent dataset. The functional roles of key DEGs and biomarkers were analyzed using various in silico methods. Finally, the biomarkers and a set of key candidates were experimentally validated using patient samples and a cell line model. A total of 48 key DEGs with preferable diagnostic value were identified. A gradient boosting decision tree algorithm was utilized to build a diagnostic model with three biomarkers, PBRM1, CA1, and TXLNG. An immune-cell infiltration analysis revealed significant differences in the relative abundances of seven immune cells between controls and PAH patients and a correlation with the biomarkers. Experimental validation confirmed the upregulation of the three biomarkers in Group I PAH patients. In conclusion, machine learning and a bioinformatics analysis along with experimental techniques identified PBRM1, CA1, and TXLNG as potential biomarkers for Group I PAH.

摘要

已经有许多过程和途径被报道参与了 I 型肺动脉高压(Group I PAH)的发生发展;然而,为了更好地诊断和治疗,仍需要鉴定新的生物标志物。我们采用了一种稳健的排名聚合(RRA)算法,对 Group I PAH 患者和对照组之间的关键差异表达基因(DEGs)进行了筛选。通过比较七种机器学习算法,获得了一个最优的诊断模型,并在一个独立的数据集上进行了验证。利用各种计算方法分析了关键 DEGs 和生物标志物的功能作用。最后,利用患者样本和细胞系模型对生物标志物和一组关键候选物进行了实验验证。鉴定出了 48 个具有较好诊断价值的关键 DEGs。采用梯度提升决策树算法,利用三个生物标志物 PBRM1、CA1 和 TXLNG 构建了一个诊断模型。免疫细胞浸润分析显示,对照组和 PAH 患者之间七种免疫细胞的相对丰度存在显著差异,并且与生物标志物相关。实验验证证实了这三个生物标志物在 Group I PAH 患者中的上调。总之,机器学习和生物信息学分析以及实验技术鉴定出 PBRM1、CA1 和 TXLNG 为 Group I PAH 的潜在生物标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d07f/10178909/11a11ba43cae/ijms-24-08050-g001.jpg

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