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Blood Uric Acid Prediction With Machine Learning: Model Development and Performance Comparison

机译:用机器学习预测血液尿酸预测:模型开发和性能比较

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Background Uric acid is associated with noncommunicable diseases such as cardiovascular diseases, chronic kidney disease, coronary artery disease, stroke, diabetes, metabolic syndrome, vascular dementia, and hypertension. Therefore, uric acid is considered to be a risk factor for the development of noncommunicable diseases. Most studies on uric acid have been performed in developed countries, and the application of machine-learning approaches in uric acid prediction in developing countries is rare. Different machine-learning algorithms will work differently on different types of data in various diseases; therefore, a different investigation is needed for different types of data to identify the most accurate algorithms. Specifically, no study has yet focused on the urban corporate population in Bangladesh, despite the high risk of developing noncommunicable diseases for this population. Objective The aim of this study was to develop a model for predicting blood uric acid values based on basic health checkup test results, dietary information, and sociodemographic characteristics using machine-learning algorithms. The prediction of health checkup test measurements can be very helpful to reduce health management costs. Methods Various machine-learning approaches were used in this study because clinical input data are not completely independent and exhibit complex interactions. Conventional statistical models have limitations to consider these complex interactions, whereas machine learning can consider all possible interactions among input data. We used boosted decision tree regression, decision forest regression, Bayesian linear regression, and linear regression to predict personalized blood uric acid based on basic health checkup test results, dietary information, and sociodemographic characteristics. We evaluated the performance of these five widely used machine-learning models using data collected from 271 employees in the Grameen Bank complex of Dhaka, Bangladesh. Results The mean uric acid level was 6.63 mg/dL, indicating a borderline result for the majority of the sample (normal range 7.0 mg/dL). Therefore, these individuals should be monitoring their uric acid regularly. The boosted decision tree regression model showed the best performance among the models tested based on the root mean squared error of 0.03, which is also better than that of any previously reported model. Conclusions A uric acid prediction model was developed based on personal characteristics, dietary information, and some basic health checkup measurements. This model will be useful for improving awareness among high-risk individuals and populations, which can help to save medical costs. A future study could include additional features (eg, work stress, daily physical activity, alcohol intake, eating red meat) in improving prediction.
机译:背景技术尿酸与非传染性疾病如心血管疾病,慢性肾病,冠状动脉疾病,中风,糖尿病,代谢综合征,血管痴呆和高血压等疾病相关。因此,尿酸被认为是非传染性疾病发展的危险因素。大多数关于尿酸的研究已经在发达国家进行,并且在发展中国家尿酸预测中的机器学习方法应用很少见。不同的机器学习算法将在各种疾病的不同类型数据上以不同的方式工作;因此,不同类型的数据需要不同的调查来识别最准确的算法。具体而言,尽管为这一人民造成了巨大巨大的疾病的风险很高,但尚无研究尚未研究孟加拉国的城市企业人口。目的本研究的目的是通过使用机器学习算法基于基础健康检查测试结果,膳食信息和社会渗目特征来制定预测血尿酸值值的模型。健康检查测试测量的预测可以非常有帮助,以降低健康管理成本。方法在本研究中使用各种机器学习方法,因为临床输入数据并不完全独立,并且表现出复杂的相互作用。传统的统计模型有局限性要考虑这些复杂的相互作用,而机器学习可以考虑输入数据之间的所有可能的相互作用。我们使用提升决策树回归,决策森林回归,贝叶斯线性回归和线性回归,以基于基础健康检查测试结果,膳食信息和社会渗目特征来预测个性化血液尿酸。我们评估了这五种广泛使用的机器学习模型的表现,使用孟加拉国达卡格莱哈尔的格莱文银行复合体中的271名员工收集的数据。结果平均尿酸水平为6.63mg / dL,表明大多数样品的边界结果(正常范围<7.0mg / dl)。因此,这些人应定期监测它们的尿酸。增强决策树回归模型在基于0.03的根部平均平方误差测试的模型中显示了最佳性能,这也比任何先前报告的模型更好。结论基于个人特征,膳食信息和一些基本的健康检查测量开发了尿酸预测模型。该模型可用于提高高风险个人和人口的认识,这有助于节省医疗费用。未来的学习可以包括提高预测中的其他特征(例如,工作压力,日常体育活动,酒精摄入,吃红肉)。

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