Smart System for Dengue Fever Diagnosis: A Machine Learning Approach

Salah AL-Hagree,Khaled M. Alalayah, Nashwan Ahmed Al-Majmar,Ayedh Abdulaziz Mohsen, Amal Aqlan, Mostafa Alhel-iani, Merown Mohammed, Mohammad Albazel, Fahd Al-qasem, Motea Mohammed aljafari, Abdulbaset Musleh, Ibrahim Alnedam

2023 3rd International Conference on Emerging Smart Technologies and Applications (eSmarTA)(2023)

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摘要
Dengue fever is a serious illness that can lead to death in areas where epidemics spread and in third world countries. Early diagnosis is crucial in preventing the severity of the disease and avoiding fatalities. To address this issue, a smart Android application has been developed that uses machine learning algorithms such as the decision tree to diagnose dengue patients. The decision tree algorithm was found to be the most accurate, with an accuracy rate of 93.7%, while other algorithms like close neighborhood had an accuracy rate of 74.29 % , naïve bays had an accuracy rate of 93.07%, and SVM had an accuracy rate of 68.32%. The system's response is based on specific data that is entered and processed through the decision tree algorithm. Overall, the development of this smart system can greatly improve early diagnosis of dengue fever and potentially save lives.
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关键词
Machine Learning,Dengue Fever Diagnosis,Decision Tree,Android Application
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