Prediction of Diabetes Patient Stage Using Ontology Based Machine Learning System

V. Lakshmi, V. Nithya, K. Sripriya, C. Preethi, K. Logeshwari
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引用次数: 8

Abstract

Nowadays technology has improved the worldwide and has become vital part of our life. It aid for doctors to analyze and diagnose the medical problems and diseases. With help artificial intelligence in medicine science become high demand now. This work focuses on clinical decision support system which aid medical people to diagnose of disease. In this paper first present related work in various aspects of clinical decision support systems to provide diagnosis solutions to medical related problems. In this paper a proposed method to identify patient with diabetes disease risk level is indentified. In this work diabetes patient risk level is been detected by using ontology and machine learning technique. Ontology holds disease symptoms, causes and treatments. In machine learning, nave base algorithm is used to make decision on patient record also it defines possibilities of risk level. The proposed algorithm will be evaluated against the following metrics namely confusion matrix, precision level, mean and this proposed work is found to have better prediction level when compared with existing work.
基于本体的机器学习系统对糖尿病患者分期的预测
如今,科技已经改善了世界各地,并已成为我们生活的重要组成部分。它帮助医生分析和诊断医疗问题和疾病。在人工智能的帮助下,医学科学对人工智能的需求越来越高。本课题研究的重点是临床决策支持系统,该系统可辅助医务人员进行疾病诊断。本文首先介绍了临床决策支持系统在各个方面的相关工作,为医疗相关问题提供诊断解决方案。本文提出了一种识别糖尿病患者疾病危险水平的方法。本文采用本体和机器学习技术对糖尿病患者的风险水平进行检测。本体论包含疾病的症状、原因和治疗。在机器学习中,使用中基算法对患者病历进行决策,并定义风险级别的可能性。所提出的算法将根据以下指标进行评估,即混淆矩阵、精度水平、平均值,与现有工作相比,发现所提出的工作具有更好的预测水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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