[基于机器学习的慢性鼻炎伴鼻息肉预后模型探索]。

Q4 Medicine
S J Jiang, S B Xie, H Zhang, Z H Xie, W H Jiang
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引用次数: 0

摘要

研究目的分析慢性鼻炎伴鼻息肉(CRSwNP)的分子特征,揭示其病理生理机制,并建立能有效预测术后复发的预后模型。研究方法整合三个数据集(GSE198950、GSE179265和GSE136825)的数据,包括39例对照病例、16例无鼻息肉慢性鼻炎病例和89例CRSwNP病例。根据调整后的 P1 确定了差异表达基因(DEGs)。进行了 KEGG 和 GO 富集分析以及 STRING 节点评分。使用随机森林和最小绝对收缩与选择算子回归(LASSO)进行变量选择,并通过交叉分析确定关键节点。采用 Mann-Whitney U 检验和 PResults 检验变量:这项研究显示了 CRSwNP 中 DEGs 的上调和下调,激活了神经活性配体-受体相互作用和 IL-17 信号传导等通路,同时抑制了钙信号传导和间隙连接。通过随机森林和 LASSO 确定的关键节点,包括 G 蛋白亚基 γ4 (U=3.00,P=0.028)、胆囊收缩素(U=0.50,P=0.006)、表皮生长因子(U=1.00,P=0.008)和 Neurexin-1 (U=0.00,P=0.004),在外部验证中显示出统计学意义。以折线图显示的预后模型具有很高的可靠性(C-index=0.875,AUC=0.866)。外部验证的 ROC 曲线显示其预测术后复发的有效性(AUC=0.859)。结论:本研究整合了 CRSwNP 的多个数据集,对其分子特征进行了全面描述。该预后模型建立在通过随机森林和 LASSO 分析确定的关键节点上,在内部和外部验证中均表现出较高的准确性,从而为制定 CRSwNP 的个性化治疗策略提供了有力支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Exploration of prognostic models for chronic rhinosinusitis with nasal polyps based on machine learning].

Objective: To analysis the molecular characteristics of chronic rhinosinusitis with nasal polyps (CRSwNP), to unravel its pathophysiological mechanisms, and to develop a prognostic model capable of effectively predicting postoperative recurrence. Methods: The data from three datasets (GSE198950, GSE179265, and GSE136825) were integrated, comprising 39 control cases, 16 cases of chronic rhinosinusitis without nasal polyps, and 89 cases of CRSwNP. Differential expression genes (DEGs) were identified based on adjusted P<0.05 and Log2FC>1. KEGG and GO enrichment analyses, as well as STRING node scoring, were conducted. Variable selection was performed using random forest and least absolute shrinkage and selection operator regression (LASSO), with key nodes identified through intersection analysis. Mann-Whitney U test was applied, and variables with P<0.05 were included in the model. A prognostic model for CRSwNP was constructed using logistic regression, externally validated using RNA-seq data, and evaluated with receiver operating characteristic (ROC) curve analysis to calculate the area under the curve (AUC). Results: This research illustrated both upregulated and downregulated DEGs in CRSwNP, activating pathways like neuroactive ligand-receptor interaction and IL-17 signaling, while inhibiting calcium signaling and gap junctions. Key nodes identified through random forest and LASSO, including G protein subunit γ4 (U=3.00 P=0.028), Cholecystokinin (U=0.50, P=0.006), Epidermal growth factor (U=1.00 P=0.008), and Neurexin-1 (U=0.00, P=0.004), showing statistical significance in external validation. The prognostic model, visualized in a line graph, exhibited high reliability (C-index=0.875,AUC=0.866). The ROC curve in external validation indicated its effectiveness in predicting postoperative recurrence (AUC=0.859). Conclusions: This study integrates multiple datasets on CRSwNP to provide a comprehensive description of its molecular features. The prognostic model, built upon key nodes identified through random forest and LASSO analyses, demonstrates high accuracy in both internal and external validations, thus providing robust support for the development of personalized treatment strategies for CRSwNP.

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