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Degree of Disease possibility (DDP): A mining based statistical measuring approach for disease prediction in health care data mining

机译:疾病可能性程度(DDP):一种基于挖掘的统计测量方法,用于医疗保健数据挖掘中的疾病预测

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We propose a novel mining based statistical analysis approach to predict the scope of a disease by the given patient record. We labeled the proposed measuring process as Degree of Disease possibility. The said model is devising degree of disease possibility threshold (ddpt) and its lower and upper bounds. In regard to predict the ddpt, here we remodeled the HITs algorithm, which is popularly used to derive the hyper link weights of a given website. The experimental results explored in this paper indicating the significance of the proposed model.
机译:我们提出一种新颖的基于挖掘的统计分析方法,以通过给定的患者记录来预测疾病的范围。我们将建议的测量过程标记为“疾病可能性”。所述模型是设计疾病可能性阈值(ddpt)及其上限和下限。关于预测ddpt,这里我们对HITs算法进行了建模,该算法通常用于导出给定网站的超链接权重。本文探索的实验结果表明了该模型的重要性。

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