使用多关系图卷积网络的基于知识图谱的疾病基因预测系统。

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2023-04-29 eCollection Date: 2022-01-01
Zhenxiang Gao, Yiheng Pan, Pingjian Ding, Rong Xu
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引用次数: 0

摘要

确定疾病与基因的关联对于了解疾病的分子机制、寻找诊断标记和治疗靶点非常重要。人们提出了许多计算方法,通过将不同的生物数据库整合成异构网络来预测疾病相关基因。然而,如何利用多源生物数据中的异构拓扑和语义信息来增强疾病基因预测仍是一项具有挑战性的任务。在本研究中,我们提出了一种基于知识图谱的疾病基因预测系统(GenePredict-KG),通过对从各种基因型和表型数据库中提取的语义关系进行建模。我们首先构建了一个知识图谱,其中包括 14 种表型和基因型关系以及 7 种实体类型的 73,358 个实体之间的 2,292,609 种关联。我们开发了一个知识图谱嵌入模型来学习实体和关系的低维表示,并利用这些嵌入来推断新的疾病-基因相互作用。我们使用多种评估指标将 GenePredict-KG 与几种最先进的模型进行了比较。GenePredict-KG取得了很高的性能[AUROC(接收者操作特征下面积)= 0.978,AUPR(精度-召回下面积)= 0.343和MRR(平均倒数等级)= 0.244],优于其他先进方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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A knowledge graph-based disease-gene prediction system using multi-relational graph convolution networks.

Identifying disease-gene associations is important for understanding molecule mechanisms of diseases, finding diagnostic markers and therapeutic targets. Many computational methods have been proposed to predict disease related genes by integrating different biological databases into heterogeneous networks. However, it remains a challenging task to leverage heterogeneous topological and semantic information from multi-source biological data to enhance disease-gene prediction. In this study, we propose a knowledge graph-based disease-gene prediction system (GenePredict-KG) by modeling semantic relations extracted from various genotypic and phenotypic databases. We first constructed a knowledge graph that comprised 2,292,609 associations between 73,358 entities for 14 types of phenotypic and genotypic relations and 7 entity types. We developed a knowledge graph embedding model to learn low-dimensional representations of entities and relations, and utilized these embeddings to infer new disease-gene interactions. We compared GenePredict-KG with several state-of-the-art models using multiple evaluation metrics. GenePredict-KG achieved high performances [AUROC (the area under receiver operating characteristic) = 0.978, AUPR (the area under precision-recall) = 0.343 and MRR (the mean reciprocal rank) = 0.244], outperforming other state-of-art methods.

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