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Identification of Heart Failure by Using Unstructured Data of Cardiac Patients

机译:使用心脏病患者的非结构化数据鉴定心力衰竭

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Heart Failure (HF) occurrence is increasing day by day and is the leading death cause disease in our society. HF is among the most expensive diseases as well. Social and individual burden of this disease can be reduced by early detection of HF. This would provide the means that may helpful to slow progression of the disease as well as to recover patient to good health. In this research study, we have applied data mining techniques to get useful information from medical reports of patients and using machine learning classification algorithm, we propose a risk model to predict 1-year or more survival for HF diagnosed patients. To perform multi-class classification we use multi-nominal Nai?ve Bayes (NB) classification algorithm. We got our required data from the Armed Forces Institute of Cardiology (AFIC), Pakistan, in the form of medical reports of patients which are available in the structured and unstructured format. Unfortunately, a lot of information is buried in unstructured data format. Our proposed model achieved an accuracy and Area under the Curve (AUC) of 86.7% and 92.4%, respectively.
机译:心力衰竭(HF)的发生日复一日,是我们社会中的主要死亡导致疾病。 HF也是最昂贵的疾病之一。通过早期检测HF,可以减少这种疾病的社会和个人负担。这将提供可能有助于缓慢疾病进展的手段,以及恢复患者身体健康。在这项研究中,我们已经应用了数据挖掘技术,从患者的医学报告中获取有用的信息并使用机器学习分类算法,我们提出了一种风险模型来预测HF诊断患者的1年或更高存活。要执行多级分类,我们使用多名称nai?ve贝叶斯(NB)分类算法。我们从患者的医学报告的形式获得了武装部队心脏病学(AFIC)(AFIC)(AFIC)的所需数据,这些患者以结构化和非结构化格式提供。不幸的是,许多信息以非结构化的数据格式埋葬。我们所提出的模型分别实现了86.7%和92.4%的曲线(AUC)下的精度和面积。

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