在化学结构和概念知识之间架起桥梁,可以准确预测化合物与蛋白质之间的相互作用。

IF 4.4 1区 生物学 Q1 BIOLOGY
Wen Tao, Xuan Lin, Yuansheng Liu, Li Zeng, Tengfei Ma, Ning Cheng, Jing Jiang, Xiangxiang Zeng, Sisi Yuan
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引用次数: 0

摘要

背景:准确预测化合物-蛋白质相互作用(CPI)在药物发现中起着至关重要的作用。现有的数据驱动方法旨在从化合物和蛋白质的化学结构中学习,但忽略了概念知识,即生物医学知识图谱(KG)中基本元素之间的相互关系。知识图谱提供了超越单个化合物和蛋白质的实体和关系的综合视图。知识图谱涵盖了大量信息,如路径、疾病和生物过程,为 CPI 预测提供了更丰富的背景信息。这种上下文信息可用于识别间接相互作用、推断潜在关系并提高预测准确性。在实际应用中,知识缺失化合物和蛋白质的普遍存在是将知识注入数据驱动模型的关键障碍:在此,我们提出了一个数据和知识双驱动框架--BEACON,它将化学结构和概念知识连接起来,用于 CPI 预测。所提出的 BEACON 通过最大化化学结构与概念知识之间的互信息来学习一致的表征,并通过最小化其条件熵来预测缺失的表征。与其他竞争方法相比,BEACON 在多个数据集上取得了最先进的性能,特别是在 BIOSNAP 和 DrugBank 数据集上分别提高了 5.1% 和 6.6%。此外,BEACON 是唯一一种能够有效预测缺乏知识的化合物和蛋白质的知识表征的方法:总之,我们的工作提供了一种直接注入概念知识以提高 CPI 预测性能的通用方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bridging chemical structure and conceptual knowledge enables accurate prediction of compound-protein interaction.

Background: Accurate prediction of compound-protein interaction (CPI) plays a crucial role in drug discovery. Existing data-driven methods aim to learn from the chemical structures of compounds and proteins yet ignore the conceptual knowledge that is the interrelationships among the fundamental elements in the biomedical knowledge graph (KG). Knowledge graphs provide a comprehensive view of entities and relationships beyond individual compounds and proteins. They encompass a wealth of information like pathways, diseases, and biological processes, offering a richer context for CPI prediction. This contextual information can be used to identify indirect interactions, infer potential relationships, and improve prediction accuracy. In real-world applications, the prevalence of knowledge-missing compounds and proteins is a critical barrier for injecting knowledge into data-driven models.

Results: Here, we propose BEACON, a data and knowledge dual-driven framework that bridges chemical structure and conceptual knowledge for CPI prediction. The proposed BEACON learns the consistent representations by maximizing the mutual information between chemical structure and conceptual knowledge and predicts the missing representations by minimizing their conditional entropy. BEACON achieves state-of-the-art performance on multiple datasets compared to competing methods, notably with 5.1% and 6.6% performance gain on the BIOSNAP and DrugBank datasets, respectively. Moreover, BEACON is the only approach capable of effectively predicting knowledge representations for knowledge-lacking compounds and proteins.

Conclusions: Overall, our work provides a general approach for directly injecting conceptual knowledge to enhance the performance of CPI prediction.

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来源期刊
BMC Biology
BMC Biology 生物-生物学
CiteScore
7.80
自引率
1.90%
发文量
260
审稿时长
3 months
期刊介绍: BMC Biology is a broad scope journal covering all areas of biology. Our content includes research articles, new methods and tools. BMC Biology also publishes reviews, Q&A, and commentaries.
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