通过提供机器学习驱动的预测和个性化可视化结果,增强糖尿病患者的能力

Ankit Gupta, N. Basit
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引用次数: 0

摘要

尽管数以百万计的患者患有糖尿病,但要解释历史上导致糖尿病的症状往往是一项挑战。为了解决这一差异,我们创建了一个端到端平台,使用随机森林模型预测早期糖尿病,准确率为95.6%,然后将症状相似的患者数据可视化。用户输入五种相关性最强的糖尿病症状的数据后,该模型就会预测用户是否患有糖尿病。因此,这个项目改变了病人交流他们自己数据的方式,从而作为一种机制,开始与他们的医生或世界各地的其他人进行重要的对话。
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Empowering Diabetes Patients by Providing Machine Learning-Driven Predictions and Personalized Visualization Results
Although millions of patients have diabetes, it is often challenging to interpret symptoms that historically lead to the condition. To solve this disparity, we created an end-to-end platform that uses a Random Forest model that predicts early-stage diabetes with 95.6% accuracy, then visualizes patient data for those with similar symptoms. After users enter their data for the five most strongly-correlated diabetes symptoms, the model predicts whether the user has diabetes. As a result, this project transforms how patients communicate about their own data, thereby serving as a mechanism to start important conversations with their doctors or others around the world.
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