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A Research Survey on State of the art Heart Disease Prediction Systems

机译:艺术心脏病预测系统状态研究调查

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Disease prediction systems are the better alternatives, to avoid the human errors in disease diagnosis and also assist in disease prevention with early detections. Highdemand in preventing the rapidly increasing heart disease death tolls expanded the horizons of the former research scholars for introducing the intelligent heart disease prediction systems. Prediction of heart disease from patient’s health record attributes is, a proven multi-dimensional decision-making system, which merely depends on mining attribute correlations too. Patient Health Records (PHR’s) with structured categorical data and unstructured text/image data are the major input resources for heart disease prediction. Heart disease dataset preparation, prediction system’s process flow design, process execution and results evaluation are the most common life cycle modules of any heart disease prediction system. Although many former research were introduced various heart disease prediction models, but they are still suffering from some common set of problems. Input dataset attributes modeling, attribute risk factor calculation, correlations mining; threshold determination and achieving the high accuracy in disease prediction are the major limitations of the existing heart disease prediction systems. As part of my research on designing intelligent heart disease prediction models, several research papers are analyzed and narrated that knowledge in a proper manner with detailed description. The main objective of this study is to represent the current scenario of heart disease prediction systems and their associated modules in brief.
机译:疾病预测系统是更好的替代品,避免疾病诊断中的人类误差,也有助于预防早期检测。预测迅速增加的心脏病死亡收费在预防智能心脏病预测系统中扩大了智能心脏病预测系统的地平线。从患者的健康记录属性预测心脏病是一种经过验证的多维决策系统,这也仅仅取决于挖掘属性相关性。患者健康记录(PHR)具有结构化分类数据和非结构化文本/图像数据是心脏病预测的主要输入资源。心脏病数据集准备,预测系统的过程流程设计,过程执行和结果评估是任何心脏病预测系统的最常见的生命周期模块。虽然许多以前的研究介绍了各种心脏病预测模型,但它们仍遭受一些常见的问题。输入数据集属性建模,属性风险因子计算,相关挖掘;阈值测定和实现疾病预测的高精度是现有心脏病预测系统的主要限制。作为我对设计智能心脏病预测模型的研究的一部分,分析了几个研究论文,并以适当的方式叙述了知识,详细描述。本研究的主要目的是表示心脏病预测系统及其相关模块的目前的情景。

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