应用智能决策支持框架预测糖尿病高危再入院患者

N. Kumar, N. Sathyanarayana
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引用次数: 0

摘要

糖尿病患者比非糖尿病患者更容易再次入院。再入院可能性较大的患者越早得到监测和照顾越好。本研究的目的是建立一个决策框架,可以识别早期再入院风险的糖尿病患者。许多数据分析方法已被用于执行此操作。本研究利用计算机视觉技术建立了一种新的模型。在早期阶段优先考虑需要再次入院的高危并发症患者,从而降低医疗费用,提高医院的声誉,从而提高医疗服务水平并节省资金。使用机器学习做出的预测比使用传统方法做出的预测更准确。在本研究中,可以通过使用标准标量、决策树和随机森林分类、CATboost分类特征和XGBoost分类器来预测患者的再入院情况。当应用于实际数据时,结合深度学习技术的机器学习方法优于其他方法。作为对许多模块(包括提取特征)的响应,分析得到了增强,并创建了一个更有用的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Diabetic Patients with High Risk of Readmission using Smart Decision Support Framework
Patients with diabetes are more likely to be readmitted to the hospital than those who are nondiabetic. The earlier patients with a strong probability of readmission are monitored and cared for, the better. The goal of this research is to develop a decision - making framework that can identify diabetes patients who are at risk of early readmission. Many data analysis approaches have been employed to perform this. Computer vision is used to create a novel model in this study. Individuals at high risk of complications to be readmitted are prioritized in the early stages, which in turn reduces healthcare costs and improves the reputation of the hospital, thus enhancing the health service and saving money. Predictions made using machine learning are more accurate than those made using traditional methods. In this study, patients' hospital readmissions may be predicted by utilizing a standard scaler, a decision tree, and random forests for classification, CATboost for categorical features, and XGBoost classifiers. When applied to real-world data, a machine learning method that incorporates deep learning technique has outperformed the other methods. As a response to a number of modules, including extracting features, the analysis has been enhanced and a more useful framework has been created.
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