使用机器学习降低糖尿病患病率的比较方法

Md. Rifatul Islam , Semonti Banik , Kazi Naimur Rahman , Mohammad Mizanur Rahman
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引用次数: 0

摘要

糖尿病是一种血糖水平升高的代谢性疾病,是一个重大的全球公共卫生问题。在早期阶段识别糖尿病可以减少病例的流行。这项工作的重点是开发一个基于机器学习的系统,这将对糖尿病患者的识别产生重大影响。为了开发这样一个系统,我们利用了从Sylhet糖尿病医院的患者那里获得的直接问卷组成的数据集。该数据集包含有关新患者或可能患有糖尿病的患者的体征和症状的信息。我们应用了14种不同的机器学习技术,其中梯度增强机(GBM)的F1和ROC得分最高,分别达到99.37%和99.92%,优于其他算法。我们还采用了各种基于集成的方法,以显示个体模型性能的竞争性能。
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A comparative approach to alleviating the prevalence of diabetes mellitus using machine learning

Diabetes mellitus, a metabolic disease with elevated blood sugar levels, is a significant global public health concern. Identification of diabetes at its very early stage can reduce the prevalence of cases. This work focuses on developing a machine learning-based system that will have a significant impact on diabetic patient identification. To develop such a system we utilized a dataset made up by acquiring direct questionnaires from Sylhet Diabetic Hospital patients. The dataset contains information about the signs and symptoms of patients who are new or likely to have diabetes. We applied 14 different machine-learning techniques where the Gradient Boosting Machine (GBM) outperformed other algorithms with the highest F1 and ROC scores of 99.37%, and 99.92% respectively. We also employed various ensemble-based approaches that show competitive performance to the individual model’s performance.

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5.90
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10 weeks
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