Determinants and predictors of early re-admission of patients with hyperglycemic crises: a machine learning-based analysis.

IF 1.6 Q4 ENDOCRINOLOGY & METABOLISM
Journal of Diabetes and Metabolic Disorders Pub Date : 2025-03-18 eCollection Date: 2025-06-01 DOI:10.1007/s40200-025-01586-9
Olubola Titilope Adegbosin, Michael Adeyemi Olamoyegun, Sunday Olakunle Olarewaju
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引用次数: 0

Abstract

Objectives: The predictors of early re-admission of patients with diabetes mellitus (DM) have been studied with classical statistical techniques. Considering the increasing application of artificial intelligence to drive advances in medicine, this study aimed to leverage machine learning techniques to identify patients at risk of early re-admission after being admitted for hyperglycemic crises.

Methods: We extracted relevant data from a publicly available dataset of patients with DM who were admitted in U.S. hospitals from 1999 to 2008. The target variable was re-admission within 30 days. Point-biserial and chi-square tests were used to assess correlations between the input and target variables. Three machine learning models were initially deployed; the model with the best recall for the positive class was selected.

Results: The prevalence of early re-admission among the patients was 13.32%. Statistical tests revealed weak correlations between early re-admission and race, sex, age, use of antidiabetic medication, and numbers of non-laboratory procedures, medications, diagnoses, and visits to the emergency and inpatient departments in the previous year (all p < 0.05). Extreme gradient boosting classifier predicted early-re-admission with 79% recall for the positive class. The area under the receiver-operating characteristic curve was 0.78. Age and numbers of medications, emergency and inpatient visits in the previous year, and non-laboratory procedures, were the most important features for the model's prediction.

Conclusions: Our findings highlight the usefulness of machine learning in making clinical decisions in the management of patients with diabetes, especially when classical statistical methods do not yield much significant information.

高血糖危象患者早期再入院的决定因素和预测因素:基于机器学习的分析。
目的:应用经典统计学方法研究糖尿病患者早期再入院的预测因素。考虑到人工智能在推动医学进步方面的应用越来越多,本研究旨在利用机器学习技术来识别因高血糖危机入院后早期再入院风险的患者。方法:我们从1999年至2008年在美国医院住院的糖尿病患者的公开数据集中提取相关数据。目标变量为30天内再次入院。采用点双列检验和卡方检验来评估输入变量和目标变量之间的相关性。最初部署了三种机器学习模型;选取正类召回率最高的模型。结果:患者早期再入院率为13.32%。统计试验显示,早期再入院与种族、性别、年龄、抗糖尿病药物使用、前一年非实验室手术次数、药物、诊断、急诊和住院次数之间存在弱相关性(均p)。我们的研究结果强调了机器学习在糖尿病患者管理的临床决策中的有用性,特别是当经典的统计方法不能产生很多重要的信息时。
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来源期刊
Journal of Diabetes and Metabolic Disorders
Journal of Diabetes and Metabolic Disorders Medicine-Internal Medicine
CiteScore
4.80
自引率
3.60%
发文量
210
期刊介绍: Journal of Diabetes & Metabolic Disorders is a peer reviewed journal which publishes original clinical and translational articles and reviews in the field of endocrinology and provides a forum of debate of the highest quality on these issues. Topics of interest include, but are not limited to, diabetes, lipid disorders, metabolic disorders, osteoporosis, interdisciplinary practices in endocrinology, cardiovascular and metabolic risk, aging research, obesity, traditional medicine, pychosomatic research, behavioral medicine, ethics and evidence-based practices.As of Jan 2018 the journal is published by Springer as a hybrid journal with no article processing charges. All articles published before 2018 are available free of charge on springerlink.Unofficial 2017 2-year Impact Factor: 1.816.
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