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Identification of Cardiovascular Diseases Risk Factors among Diabetes Patients Using Ontological Data Mining Techniques

机译:利用本体数据挖掘技术识别糖尿病患者心血管疾病的危险因素

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Healthcare environment is rich of data, but still needs knowledge extraction that is necessarily important for saving people lives. Medical Knowledge discovery is a process of extracting knowledge patterns from biomedical data, which is useful and crucial for making effective decisions especially in developing strategies and policies of preventive medical treatments. Data mining methods are the best-known way to recognize the hidden data standards. Ontology engineering used to improve knowledge domain representation, and further is considered for the enhancement and refinement of the mining techniques based on the discovered patterns driven from ontological data mining. In this paper, we apply ontology driven data mining techniques on a data set of diabetes patients who have cardiovascular disease. That process performed to identify the relationship between type two diabetes mellitus patients and their important laboratory tests specified by doctors. Doctors aim to investigate the probability of cardiovascular disease occurrence and stroke happening. Ontology driven Data mining techniques also used in experimental study as well as rule induction, association rules methods. In a late phase, we used frequent pattern discovery and rules induction method using ontological data mining algorithm (RMonto). The findings of this study reveals that the use of ontologies minimizes the number of attributes in the preprocessing stage and helps in all data mining stages; in addition to its important role in ontological data mining, we have a higher learning accuracy ratio exceeding 90%. The results of data mining methods and ontological data mining shows that the significance of some laboratory tests like: LP(a),CRP,HDL,FBG,TG,LDH and Chol to predict CVD risk among T2DM patients with a high accuracy.
机译:医疗保健环境具有丰富的数据,但仍然需要知识提取,这对于挽救人们的生命至关重要。医学知识发现是从生物医学数据中提取知识模式的过程,这对于制定有效的决策(特别是在制定预防性医学治疗的策略和政策时)非常有用且至关重要。数据挖掘方法是识别隐藏数据标准的最著名方法。本体工程用于改善知识领域的表示,并进一步考虑基于从本体数据挖掘驱动的发现模式来增强和完善挖掘技​​术。在本文中,我们将本体驱动的数据挖掘技术应用于患有心血管疾病的糖尿病患者的数据集。进行该过程是为了确定2型糖尿病患者与医生指定的重要实验室检查之间的关系。医生的目的是调查心血管疾病发生和中风发生的可能性。本体驱动的数据挖掘技术还用于实验研究以及规则归纳,关联规则方法。在后期阶段,我们使用了频繁的模式发现和使用本体数据挖掘算法(RMonto)进行规则归纳的方法。这项研究的结果表明,本体的使用可以最大程度地减少预处理阶段的属性数量,并有助于所有数据挖掘阶段。除了在本体数据挖掘中发挥重要作用外,我们的学习准确率还超过90%。数据挖掘方法和本体数据挖掘的结果表明,某些实验室测试(如LP(a),CRP,HDL,FBG,TG,LDH和Chol)对于准确预测T2DM患者中CVD风险的意义。

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