A Machine Learning Based Intelligent Diabetic and Hypertensive Patient Prediction Scheme and A Mobile Application for Patients Assistance

Md. Amdad Hossain, Mahfuzulhoq Chowdhury
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Abstract

The inaccurate detection of diabetes and hypertension causes’ time wastage and a cost burden due to higher amounts of medicine intake and health problems. The previous works did not investigate machine learning (ML)-based diabetic and hypertension patient prediction by using multiple characteristics. This paper utilizes ML algorithms to predict the presence of diabetes and hypertension in patients. By analyzing patient data, including medical records, symptoms, and risk factors, the proposed system can provide accurate predictions for early detection and intervention. This paper makes a list of eighteen characteristics that can be used for data set preparation. With a classification accuracy of 93%, the Support Vector Machine is the best ML model in our work and is used for the diabetic and hypertension disease prediction models. This paper also gives a new mobile application that alleviates the time and cost burden by detecting diabetic and hypertensive patients, doctors, and medical information. The user evaluation and rating analysis results showed that more than sixty five percent of users declared the necessity of the proposed application features.
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基于机器学习的糖尿病和高血压患者智能预测方案和用于患者援助的移动应用程序
糖尿病和高血压的检测不准确会造成时间浪费,并因更多的药物摄入和健康问题而造成成本负担。以往的研究没有研究基于机器学习(ML)的糖尿病和高血压患者预测,而是利用多种特征进行预测。本文利用 ML 算法预测患者是否患有糖尿病和高血压。通过分析患者数据(包括病历、症状和风险因素),所提出的系统可为早期检测和干预提供准确预测。本文列出了可用于数据集准备的十八种特征。支持向量机的分类准确率高达 93%,是我们的工作中最好的 ML 模型,并被用于糖尿病和高血压疾病预测模型。本文还给出了一个新的移动应用程序,通过检测糖尿病和高血压患者、医生和医疗信息,减轻了时间和成本负担。用户评价和评分分析结果显示,超过百分之六十五的用户表示有必要使用所提出的应用功能。
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