基于计算毒理学、机器学习与分子对接的聚对苯二甲酸乙二醇酯微塑料与抑郁症潜在机制关联预测

    Prediction of the potential mechanisms underlying the association between polyethylene terephthalate microplastics and depression based on computational toxicology, machine learning, and molecular docking

    • 摘要:
      目的 基于计算毒理学、机器学习与分子对接策略, 预测并分析聚对苯二甲酸乙二醇酯(polyethylene terephthalate, PET)诱发抑郁症的潜在分子机制及作用机制。
      方法 自GEO数据库下载并整合3个抑郁症外周血转录组数据集(GSE52790、GSE38206、GSE76826), 经差异表达分析(|log2FC|>0.25, Padj<0.05)与WGCNA筛选, 获得645个抑郁症相关基因; 利用SwissTargetPrediction、SEA及Pharmmapper数据库预测PET可能的作用靶点567个, 与抑郁症基因交集得32个共同靶点; 构建蛋白互作网络(PPI)并进行GO、KEGG富集分析; 采用7种机器学习算法构建110个模型, 以Enet模型性能最佳(AUC最高), 结合SHAP解析关键基因; 对核心基因(ADORA2B、JAK2、PYGL、RAN)与PET进行分子对接验证。
      结果 32个交集靶点主要富集于Th17/Th1/Th2细胞分化、坏死性凋亡、内源性凋亡信号及体液水平调控等通路; 机器学习显示PYGL、JAK2、RAN、ADORA2B为最具预测价值的特征基因, 其中PYGL在独立验证集中AUC达0.817;分子对接显示PET与上述4个靶点结合能介于-7.8~-8.9 kcal/mol, 表明结合稳定。
      结论 本研究从计算毒理学角度提出PET-MPs可能通过干扰JAK2、ADORA2B、PYGL、RAN等关键分子诱发抑郁症。

       

      Abstract:
      Objective To predict and analyze the potential molecular mechanisms by which polyethylene terephthalate (PET) may induce depression, based on computational toxicology, machine learning, and molecular docking strategies.
      Methods The peripheral blood transcriptome datasets of depression (GSE52790, GSE38206, and GSE76826) were downloaded and integrated from the GEO database. Through differential expression analysis (|log2FC|> 0.25, Padj < 0.05) and weighted gene co-expression network analysis (WGCNA), 645 depression-related genes were identified. Potential PET targets (n=567) were predicted using the SwissTargetPrediction, SEA, and PharmMapper databases. Intersection with depression-related genes yielded 32 common targets. A protein-protein interaction (PPI) network was constructed, and GO and KEGG enrichment analyses were performed. Seven machine learning algorithms were used to construct 110 models; the elastic net (Enet) model showed the best performance (highest area under the curve AUC), and key genes were interpreted using SHAP. Molecular docking was performed between PET and the core genes (ADORA2B, JAK2, PYGL, and RAN) for validation.
      Results The 32 intersecting targets were mainly enriched in pathways related to Th17/Th1/Th2 cell differentiation, necroptosis, intrinsic apoptotic signaling, and regulation of humoral levels. Machine learning analysis identified PYGL, JAK2, RAN, and ADORA2B as the most predictive feature genes; among them, PYGL achieved an AUC of 0.817 in an independent validation dataset. Molecular docking showed that the binding energies between PET and the four targets ranged from -8.9 to -7.8 kcal/mol, indicating stable binding.
      Conclusion From the perspective of computational toxicology, this study suggests that PET microplastics may induce depression by interacting with key molecules, such as JAK2, ADORA2B, PYGL, and RAN.

       

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