使用数据挖掘技术预测糖尿病和心脏病

Ammar Aldallal, Amina Abdul Aziz Al-Moosa
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引用次数: 14

摘要

生活的现代化和商业化导致不健康的生活方式,导致心脏病和糖尿病等非传染性疾病增加。非传染性疾病对人们的不作为、不活动和懒惰有直接影响。心脏病和糖尿病是影响社会的两个最危险的杀手。本研究旨在生产应用软件,供医生和其他医疗从业人员用于预测非传染性疾病(NCDs)的发生或复发。该项目采用了预测数据挖掘模型。从巴林国防军医院获得的患者记录被用来检查拟议的软件应用程序。该应用程序由上述医院的实际从业人员执行和测试。结果表明,该预测系统能够有效、高效地预测非传染性疾病,最重要的是能够即时预测非传染性疾病。这个应用程序能够帮助医生对病人的健康风险做出正确的决定。
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Using Data Mining Techniques to Predict Diabetes and Heart Diseases
Modernization and commercialization of life lead to an unhealthy Lifestyle that results in increasing non-communicable diseases such as heart diseases and diabetes. Non-communicable diseases have direct impact on inaction, inactivity, and idleness of people. Heart diseases and diabetes are two of the most dangerous killers affecting the society. This research aims to produce application software to be used by doctors and other medical practitioners to predict the occurrence or recurrence of non-communicable diseases (NCDs). The predictive data-mining model was applied in this project. Patients records obtained from Bahrain Defense Force Hospital were used to examine the proposed software application. This application was executed and tested by the actual practitioner in the mentioned hospital. The results showed that the prediction system is capable of predicting NCDs’ diseases effectively, efficiently and most importantly, instantly. This application is capable of helping a physician in making proper decisions towards patient health risks.
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