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基于 Swanson 框架和生物信息学的疾病-药物潜在关联预测的探索与实践。

Exploration and practice of potential association prediction between diseases and drugs based on Swanson framework and bioinformatics.

机构信息

Shanxi Medical University, Jinzhong, China.

Second Medical Center of the Chinese PLA General Hospital, Beijing, China.

出版信息

Sci Rep. 2024 Nov 28;14(1):29643. doi: 10.1038/s41598-024-79587-6.

Abstract

Compared to traditional intermediate concepts, specific bioinformatics entities are more informative and higher directional. This study is based on the BITOLA system and combines bioinformatics methods to determine the intermediate concept which is key to improve efficiency of Literature-based Knowledge Discovery, proposes the concept of "Swanson framework + Bioinformatics", and conducts practice of Literature-based Knowledge Discovery to improve the scientificity and efficiency of research and development. Firstly, detected the disease related genes (i.e. differentially expressed genes) according to the results of gene functional analysis as intermediate concepts to carry out Literature-based Knowledge Discovery. Taking the disease "Autism Spectrum Disorder (ASD)" as an example, the potential "disease-drug" association was predicted, and the predicted drugs were verified from the perspective of bioinformatics. Two drugs potentially associated with ASD were found: Fish oil and Forskolin, which were closely related to ASD in bioinformatics analysis results and literature verification. The two "disease-drug" association results showed better scientificity. The BIOINF-ABC model improves the accuracy of calculations by 76% compared to using the BITOLA system alone. In addition, it also shows high accuracy and credibility in literature verification. The BIOINF-ABC model based on the "Swanson framework + Bioinformatics" has good practicality, applicability, and accuracy in conducting "disease-drug" association prediction in the biomedical field, and can be used for mining "disease-drug" relationships.

摘要

与传统的中间概念相比,特定的生物信息实体更具信息量和更高的方向性。本研究基于 BITOLA 系统,结合生物信息学方法来确定中间概念,这是提高基于文献的知识发现效率的关键,提出了“Swanson 框架+生物信息学”的概念,并进行了基于文献的知识发现实践,以提高研究和开发的科学性和效率。首先,根据基因功能分析的结果检测与疾病相关的基因(即差异表达基因)作为中间概念来进行基于文献的知识发现。以疾病“自闭症谱系障碍(ASD)”为例,预测了潜在的“疾病-药物”关联,并从生物信息学的角度验证了预测的药物。发现了两种可能与 ASD 相关的药物:鱼油和毛喉素,这两种药物在生物信息学分析结果和文献验证中与 ASD 密切相关。这两个“疾病-药物”关联结果显示出更好的科学性。BIOINF-ABC 模型与单独使用 BITOLA 系统相比,计算准确性提高了 76%。此外,在文献验证中也表现出了较高的准确性和可信度。基于“Swanson 框架+生物信息学”的 BIOINF-ABC 模型在生物医学领域进行“疾病-药物”关联预测方面具有良好的实用性、适用性和准确性,可以用于挖掘“疾病-药物”关系。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6e5b/11604654/e1c12f997454/41598_2024_79587_Fig1_HTML.jpg

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