基于基本无创健康检查、社会人口特征和饮食信息预测糖尿病血糖的机器学习网络应用程序:案例研究

Q2 Medicine JMIR Diabetes Pub Date : 2023-11-24 DOI:10.2196/49113
Masuda Begum Sampa, Topu Biswas, Md Siddikur Rahman, Nor Hidayati Binti Abdul Aziz, Md Nazmul Hossain, Nor Azlina Ab Aziz
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引用次数: 0

摘要

背景:在过去的几十年里,糖尿病已成为世界范围内严重的公共卫生问题,特别是在孟加拉国。人工智能的进步可以用于预测血糖水平,从而更好地进行健康管理。然而,利用来自孟加拉国等中低收入国家的数据预测健康参数的机器学习(ML)技术的实际有效性非常低。具体而言,孟加拉国缺乏基于基本无创临床测量以及饮食和社会人口信息的ML技术预测血糖水平的研究。目的:为制定公共卫生规划和糖尿病控制策略,本研究旨在开发一个个性化的ML模型,预测孟加拉国城市企业员工的血糖水平。方法:基于271名孟加拉格莱珉银行员工的基本无创伤健康体检结果、饮食信息和社会人口学特征,采用线性回归、增强决策树回归、神经网络、决策森林回归和贝叶斯线性回归5种ML模型预测血糖水平。本研究使用连续的血糖数据对模型进行训练,然后使用训练后的数据预测新的血糖值。结果:增强决策树回归在所有评估模型中表现出最大的预测性能(均方根误差=2.30)。这意味着,平均而言,我们的模型预测的血糖水平偏离实际血糖水平约2.30毫克/分升。研究人群的平均血糖值为128.02 mg/dL (SD 56.92),表明大多数样本处于边缘值(正常值为140 mg/dL)。这表明个人应该定期监测他们的血糖水平。结论:这个基于机器学习的血糖预测网络应用程序可以帮助个人自我监测他们的健康状况。开发该应用程序时,考虑到了孟加拉国等中低收入国家偏远地区的社区。这些地区通常缺乏卫生设施,合格的医生和护士数量不足。基于web的应用程序是一种简单、实用和有效的解决方案,可以被社区采用。使用web应用程序可以节省医疗费用、时间和健康管理费用。所建立的系统还有助于实现可持续发展目标,特别是在确保社区中的每个人都享有良好的健康和福祉以及降低总发病率和死亡率方面。
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A Machine Learning Web App to Predict Diabetic Blood Glucose Based on a Basic Noninvasive Health Checkup, Sociodemographic Characteristics, and Dietary Information: Case Study.

Background: Over the past few decades, diabetes has become a serious public health concern worldwide, particularly in Bangladesh. The advancement of artificial intelligence can be reaped in the prediction of blood glucose levels for better health management. However, the practical validity of machine learning (ML) techniques for predicting health parameters using data from low- and middle-income countries, such as Bangladesh, is very low. Specifically, Bangladesh lacks research using ML techniques to predict blood glucose levels based on basic noninvasive clinical measurements and dietary and sociodemographic information.

Objective: To formulate strategies for public health planning and the control of diabetes, this study aimed to develop a personalized ML model that predicts the blood glucose level of urban corporate workers in Bangladesh.

Methods: Based on the basic noninvasive health checkup test results, dietary information, and sociodemographic characteristics of 271 employees of the Bangladeshi Grameen Bank complex, 5 well-known ML models, namely, linear regression, boosted decision tree regression, neural network, decision forest regression, and Bayesian linear regression, were used to predict blood glucose levels. Continuous blood glucose data were used in this study to train the model, which then used the trained data to predict new blood glucose values.

Results: Boosted decision tree regression demonstrated the greatest predictive performance of all evaluated models (root mean squared error=2.30). This means that, on average, our model's predicted blood glucose level deviated from the actual blood glucose level by around 2.30 mg/dL. The mean blood glucose value of the population studied was 128.02 mg/dL (SD 56.92), indicating a borderline result for the majority of the samples (normal value: 140 mg/dL). This suggests that the individuals should be monitoring their blood glucose levels regularly.

Conclusions: This ML-enabled web application for blood glucose prediction helps individuals to self-monitor their health condition. The application was developed with communities in remote areas of low- and middle-income countries, such as Bangladesh, in mind. These areas typically lack health facilities and have an insufficient number of qualified doctors and nurses. The web-based application is a simple, practical, and effective solution that can be adopted by the community. Use of the web application can save money on medical expenses, time, and health management expenses. The created system also aids in achieving the Sustainable Development Goals, particularly in ensuring that everyone in the community enjoys good health and well-being and lowering total morbidity and mortality.

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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
期刊最新文献
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