基于机器学习的糖尿病症状预测

Xingchen Xu, Xiao Huang, Jinhui Ma, Xuejianwei Luo
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引用次数: 2

摘要

由于糖尿病的破坏对整个世界都很重要,我们希望关注它,并从症状和疾病之间的相关性中提取有用的信息。UCI获得的数据集是研究的基础资源。为了保证项目结论的准确性,我们使用了三种不同的方法来相互验证:文献分析、数据分析和机器学习。文献部分主要包含前人对糖尿病所做的工作和大量的医学研究。数据分析包括数据预处理和可视化,从而揭示数据集隐藏的信息。机器学习就是利用前两部分的启发来获得一个适合糖尿病预测的模型。该项目最终提供了糖尿病的不同症状及其与糖尿病的关系的知识。它还详细阐述了如何利用症状来预测疾病。最后,对糖尿病的预防和潜在疾病的监测提出了建议。
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Prediction of Diabetes with its Symptoms Based on Machine Learning
As the destruction of diabetes is significant to the whole world, we want to focus on it and extract useful information from the correlation between symptoms and disease. The dataset obtained from UCI is the fundamental resource for the research. In order to ensure the accuracy of the project conclusions, three different approaches were used to verify each other: literature analysis, data analysis and machine learning. Literature part mainly contains previous work and large quantities of medical research done on diabetes. Data analysis included data preprocessing and visualization so as to unfold the concealed information of the dataset. Machine learning is to use the inspiration from the previous two parts to attain a suitable model for diabetes prediction. The project finally provides knowledge of different symptoms of diabetes and their relation with diabetes. It also elaborates how symptoms can be used to predict disease. Finally, we put forward suggestions for the prevention of diabetes and monitoring of potential disease.
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