School of Computer Science and Engineering, Central South University, China.
Hunan Provincial Key Lab on Bioinformatics, School of Computer Science and Engineering, Central South University, Changsha, Hunan 410083, China.
Brief Bioinform. 2022 Mar 10;23(2). doi: 10.1093/bib/bbac006.
In recent decades, exploring potential relationships between diseases has been an active research field. With the rapid accumulation of disease-related biomedical data, a lot of computational methods and tools/platforms have been developed to reveal intrinsic relationship between diseases, which can provide useful insights to the study of complex diseases, e.g. understanding molecular mechanisms of diseases and discovering new treatment of diseases. Human complex diseases involve both external phenotypic abnormalities and complex internal molecular mechanisms in organisms. Computational methods with different types of biomedical data from phenotype to genotype can evaluate disease-disease associations at different levels, providing a comprehensive perspective for understanding diseases. In this review, available biomedical data and databases for evaluating disease-disease associations are first summarized. Then, existing computational methods for disease-disease associations are reviewed and classified into five groups in terms of the usages of biomedical data, including disease semantic-based, phenotype-based, function-based, representation learning-based and text mining-based methods. Further, we summarize software tools/platforms for computation and analysis of disease-disease associations. Finally, we give a discussion and summary on the research of disease-disease associations. This review provides a systematic overview for current disease association research, which could promote the development and applications of computational methods and tools/platforms for disease-disease associations.
近几十年来,探索疾病之间潜在关系一直是一个活跃的研究领域。随着与疾病相关的生物医学数据的快速积累,已经开发出许多计算方法和工具/平台来揭示疾病之间的内在关系,这可以为复杂疾病的研究提供有用的见解,例如了解疾病的分子机制和发现疾病的新治疗方法。人类复杂疾病既涉及外部表型异常,也涉及生物体内部复杂的分子机制。具有不同类型生物医学数据(从表型到基因型)的计算方法可以在不同层次上评估疾病-疾病关联,为理解疾病提供全面的视角。在这篇综述中,首先总结了可用于评估疾病-疾病关联的生物医学数据和数据库。然后,综述了现有的疾病-疾病关联计算方法,并根据生物医学数据的用途将其分为五类,包括基于疾病语义、表型、功能、表示学习和文本挖掘的方法。此外,我们总结了用于计算和分析疾病-疾病关联的软件工具/平台。最后,我们对疾病-疾病关联的研究进行了讨论和总结。这篇综述为当前的疾病关联研究提供了一个系统的概述,这将促进疾病-疾病关联的计算方法和工具/平台的发展和应用。