脑卒中医学本体支持基于人工智能的脑卒中生物信号预测系统

Soonhyun Kwon, Jaehak Yu, Se Jin Park, Jong-Arm Jun, C. Pyo
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引用次数: 5

摘要

在本文中,我们提出了一个脑卒中医学本体,该本体为基于肌电图信息的基于人工智能的脑卒中疾病预测系统的结果提供医学知识。这一系统的发展是由于上述局限性在以往的研究中遇到。我们从知识工程的角度来处理这个问题,目的是对与中风相关的医学知识进行建模。利用web本体语言(OWL)这一标准的本体语言,我们基于脑的解剖结构、损伤和与中风相关的疾病,开发了具有概念和属性的图式级中风本体。此外,我们还开发了一个实例级医学术语本体,该本体可以跨越标准医学术语,如国际疾病分类(ICD)、系统化医学术语-临床术语(SNOMED-CT)和解剖学基础模型(FMA)中的术语。上述模式本体和实例本体被有意义地相互映射,以应用将模式与实例分离的分层本体建模技术。通过基于语义网规则语言(SWRL)的推理,我们根据患者当前的病变和疾病预测病变、疾病和解剖脑结构涟漪效应。推导出的知识信息通过SPARQL协议和标准本体查询语言RDF查询语言(SPARQL)提供。为了验证本文提出的脑卒中医学本体,我们开发了一个基于本体的脑卒中疾病预测系统。通过将患者当前的病变和疾病与基于swrl的推理所发现的病变、疾病和残疾区域进行比较,该系统利用37例患者的实际卒中急诊数据,实现了67.82%的知识增强性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stroke Medical Ontology for Supporting AI-based Stroke Prediction System using Bio-Signals
In this paper, we propose a stroke medical ontology that provides medical knowledge to accompany AI-based stroke disease prediction system's results that were arrived at based on EMG information. This system was developed as a result of the limitations mentioned above being encountered in previous studies. We approached the problem from a viewpoint of knowledge engineering with the aim of modeling medical knowledge related to strokes. Using web ontology language (OWL), a standard ontology language, we developed schema-level stroke ontologies with concepts and properties based on the brain's anatomical structures, lesions, and disease related to strokes. Also, we developed an instance-level medical terms ontology that can span standard medical terms such as those in the international classification diseases (ICD), systematized nomenclature of medicine - clinical terms (SNOMED-CT), and foundational model of anatomy (FMA). The above schema ontology and instance ontology are meaningfully mapped to each other to apply layered ontology modeling techniques that separate schemas from instances. Through semantic web rule language (SWRL)-based inference, we predict lesions, diseases, and anatomical brain structural ripple effects based on the patient's current lesions and diseases. The inferred knowledge information is provided via the SPARQL protocol and RDF query language (SPARQL), a standard ontology query language. To verify the stroke medical ontology proposed in this paper, we developed an ontology-based stroke disease prediction system. This system achieved knowledge augmentation performance of 67.82% by comparing the patients' current lesions and diseases with the lesions, diseases, and areas of disability found by SWRL-based inference using actual stroke emergency data from 37 patients.
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