Enrichment Analysis and Deep Learning in Biomedical Ontology: Applications and Advancements

Q2 Medicine Chinese Medical Sciences Journal Pub Date : 2025-03-01 Epub Date: 2025-04-25 DOI:10.24920/004464
Hong-Yu Fu, Yang-Yang Liu, Mei-Yi Zhang, Hai-Xiu Yang
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Abstract

Biomedical big data, characterized by its massive scale, multi-dimensionality, and heterogeneity, offers novel perspectives for disease research, elucidates biological principles, and simultaneously prompts changes in related research methodologies. Biomedical ontology, as a shared formal conceptual system, not only offers standardized terms for multi-source biomedical data but also provides a solid data foundation and framework for biomedical research. In this review, we summarize enrichment analysis and deep learning for biomedical ontology based on its structure and semantic annotation properties, highlighting how technological advancements are enabling the more comprehensive use of ontology information. Enrichment analysis represents an important application of ontology to elucidate the potential biological significance for a particular molecular list. Deep learning, on the other hand, represents an increasingly powerful analytical tool that can be more widely combined with ontology for analysis and prediction. With the continuous evolution of big data technologies, the integration of these technologies with biomedical ontologies is opening up exciting new possibilities for advancing biomedical research.
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生物医学本体中的富集分析和深度学习:应用与进展。
生物医学大数据具有大规模、多维度、异质性等特点,为疾病研究提供了新的视角,阐明了生物学原理,同时也推动了相关研究方法的变革。生物医学本体作为一个共享的形式化概念系统,不仅为多源生物医学数据提供了标准化的术语,而且为生物医学研究提供了坚实的数据基础和框架。本文从生物医学本体的结构和语义标注特性两方面综述了生物医学本体的富集分析和深度学习,重点介绍了技术进步如何使本体信息得到更全面的利用。富集分析是本体论在阐明特定分子序列潜在生物学意义方面的重要应用。另一方面,深度学习代表了一种越来越强大的分析工具,可以更广泛地与本体相结合,进行分析和预测。随着大数据技术的不断发展,这些技术与生物医学本体的整合为推进生物医学研究开辟了令人兴奋的新可能性。
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来源期刊
Chinese Medical Sciences Journal
Chinese Medical Sciences Journal Medicine-Medicine (all)
CiteScore
2.40
自引率
0.00%
发文量
1275
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