Taneja Sanya B, Dilán-Pantojas Israel O, Boyce Richard D
University of Pittsburgh, Pittsburgh, PA, USA.
AMIA Jt Summits Transl Sci Proc. 2025 Jun 10;2025:556-565. eCollection 2025.
Natural product-drug interactions (NPDIs) occurring due to concomitant exposure to botanical products and prescription drug therapies could lead to adverse events or reduced treatment efficacy. To better understand and address potential safety concerns, researchers investigate the underlying NPDI mechanisms using in vitro and clinical studies. Given that natural products are complex mixtures of compounds that are often not well characterized, it is important to advance computational methods for novel NPDI research. Biomedical knowledge graphs (KGs) can aid in identifying potential mechanisms to support such research efforts. We evaluated the ability of several KG embedding methods to improve NPDI prediction on NP-KG, a large-scale, heterogeneous, biomedical KG. We found that the ComplEx model outperformed other KG embedding approaches in both intrinsic and extrinsic evaluations. Future work will focus on utilizing the embeddings to identify underlying mechanisms of novel, potential NPDIs.
由于同时接触植物产品和处方药疗法而发生的天然产物-药物相互作用(NPDIs)可能会导致不良事件或降低治疗效果。为了更好地理解和解决潜在的安全问题,研究人员使用体外和临床研究来探究潜在的NPDI机制。鉴于天然产物是通常特征不明确的化合物的复杂混合物,推进用于新型NPDI研究的计算方法很重要。生物医学知识图谱(KGs)有助于识别潜在机制以支持此类研究工作。我们评估了几种KG嵌入方法在NP-KG(一个大规模、异构的生物医学KG)上改善NPDI预测的能力。我们发现ComplEx模型在内在和外在评估中均优于其他KG嵌入方法。未来的工作将专注于利用这些嵌入来识别新型潜在NPDIs的潜在机制。