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Development of automated methods for the critical condition risk prevention, based on the analysis of the knowledge obtained from patient medical records

机译:基于分析患者医疗记录所获得的知识的临界条件风险预防自动化方法的开发

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This paper describes the methods of development of ontologies and ontological models in medicine. A four-level model of knowledge representation is suggested. Algorithms for prevention of critical condition risks and complications are developed on the basis of ontological methods of knowledge representation. The work is based on the model-theoretic approach to representation of medical knowledge. The knowledge is represented through partial atomic diagrams of algebraic systems, as well as representation of patient's case data via Boolean-valued models. Ontology and ontological model of the “spinal deformity and degenerative diseases of the spine” subject domain have been developed. The ontology model contains: a) universal knowledge that is true for all patients, b) data on specific patients, and c) estimated (fuzzy) knowledge that is used for recommendations for doctors. Estimated knowledge is a set of probabilistic hypotheses on the possibility of emergence of patient's critical condition or complication. An algorithm for generation of estimated (fuzzy) knowledge, based on the analysis of medical records, has been developed. A software system for generating recommendations to prevent and reduce the risk of patient's critical condition has been implemented. The software system has been tested on the data of patients with spinal deformity and degenerative diseases of the spine.
机译:本文介绍了医学中的本体和本体模型的发展方法。提出了一种四级知识表示模型。用于预防关键条件风险和并发症的算法是在知识表示的本体论方法的基础上开发的。这项工作是基于模型 - 理论方法来表示医学知识。知识通过代数系统的部分原子图来表示,以及通过布尔值模型的患者案例数据的表示。已经开发了本体论“脊柱畸形和脊柱脊柱畸形疾病的本体论模型。本体模型包含:a)对于所有患者,b)关于特定患者数据的普遍知识,以及C)估计(模糊)知识用于医生的建议。估计的知识是一系列概率假设,就患者危重病症或并发症出现的可能性。已经开发了一种基于医疗记录的分析来产生估计(模糊)知识的算法。已经实施了一种用于生成预防和降低患者临界条件风险的建议的软件系统。软件系统已经过对脊柱脊柱畸形和退行性疾病的患者的数据进行了测试。

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