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Chapter 1: Biomedical Knowledge Integration

机译:第一章:生物医学知识整合

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摘要

The modern biomedical research and healthcare delivery domains have seen an unparalleled increase in the rate of innovation and novel technologies over the past several decades. Catalyzed by paradigm-shifting public and private programs focusing upon the formation and delivery of genomic and personalized medicine, the need for high-throughput and integrative approaches to the collection, management, and analysis of heterogeneous data sets has become imperative. This need is particularly pressing in the translational bioinformatics domain, where many fundamental research questions require the integration of large scale, multi-dimensional clinical phenotype and bio-molecular data sets. Modern biomedical informatics theory and practice has demonstrated the distinct benefits associated with the use of knowledge-based systems in such contexts. A knowledge-based system can be defined as an intelligent agent that employs a computationally tractable knowledge base or repository in order to reason upon data in a targeted domain and reproduce expert performance relative to such reasoning operations. The ultimate goal of the design and use of such agents is to increase the reproducibility, scalability, and accessibility of complex reasoning tasks. Examples of the application of knowledge-based systems in biomedicine span a broad spectrum, from the execution of clinical decision support, to epidemiologic surveillance of public data sets for the purposes of detecting emerging infectious diseases, to the discovery of novel hypotheses in large-scale research data sets. In this chapter, we will review the basic theoretical frameworks that define core knowledge types and reasoning operations with particular emphasis on the applicability of such conceptual models within the biomedical domain, and then go on to introduce a number of prototypical data integration requirements and patterns relevant to the conduct of translational bioinformatics that can be addressed via the design and use of knowledge-based systems.
机译:在过去的几十年中,现代生物医学研究和医疗保健提供领域的创新和新颖技术的增长空前。在关注于基因组和个性化医学的形成和交付的范式转变的公共和私人计划的催化下,对异构数据集的收集,管理和分析采用高通量和综合方法的需求已成为当务之急。在翻译生物信息学领域,这一需求尤为迫切,在该领域中,许多基础研究问题都需要整合大规模,多维临床表型和生物分子数据集。现代生物医学信息学的理论和实践已经证明了在这种情况下使用基于知识的系统所带来的独特好处。基于知识的系统可以定义为一种智能代理,它采用可计算的知识库或知识库来推理目标域中的数据并相对于此类推理操作重现专家表现。设计和使用此类代理的最终目标是提高复杂推理任务的可重复性,可伸缩性和可访问性。基于知识的系统在生物医学中的应用实例涵盖了广泛的范围,从执行临床决策支持到对公共数据集进行流行病学监测以检测新出现的传染病,再到大规模发现新的假设研究数据集。在本章中,我们将回顾定义核心知识类型和推理操作的基本理论框架,并特别强调此类概念模型在生物医学领域中的适用性,然后继续介绍一些原型数据集成要求和相关模式可以通过设计和使用基于知识的系统解决翻译生物信息学的问题。

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