计算机科学
嵌入
鉴定(生物学)
机器学习
图形
机制(生物学)
联想(心理学)
疾病
人工智能
情态动词
数据挖掘
理论计算机科学
医学
生物
心理学
认识论
植物
哲学
病理
化学
高分子化学
心理治疗师
作者
Mun Young Chang,Ji‐Young Ahn,Bong Gyun Kang,Sungroh Yoon
摘要
Abstract Knowledge graphs, powerful tools that explicitly transfer knowledge to machines, have significantly advanced new knowledge inferences. Discovering unknown relationships between diseases and genes/proteins in biomedical knowledge graphs can lead to the identification of disease development mechanisms and new treatment targets. Generating high‐quality representations of biomedical entities is essential for successfully predicting disease‐gene/protein associations. We developed a computational model that predicts disease‐gene/protein associations using the Precision Medicine Knowledge Graph, a biomedical knowledge graph. Embeddings of biomedical entities were generated using two different methods—a large language model (LLM) and the knowledge graph embedding (KGE) algorithm. The LLM utilizes information obtained from massive amounts of text data, whereas the KGE algorithm relies on graph structures. We developed a disease‐gene/protein association prediction model, “Cross‐Modal Embedding Integrator (CMEI),” by integrating embeddings from different modalities using a multi‐head attention mechanism. The area under the receiver operating characteristic curve of CMEI was 0.9662 (± 0.0002) in predicting disease‐gene/protein associations. In conclusion, we developed a computational model that effectively predicts disease‐gene/protein associations. CMEI may contribute to the identification of disease development mechanisms and new treatment targets.
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