Re-hospitalization factors and economic characteristics of urinary tract infected patients using machine learning.

IF 2.9 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES DIGITAL HEALTH Pub Date : 2024-08-08 eCollection Date: 2024-01-01 DOI:10.1177/20552076241272697
Yul Hee Lee, Young Seo Baik, Young Jae Kim, Hye Jin Shi, Jong Youn Moon, Kwang Gi Kim
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Abstract

Objective: Urinary tract infection is one of the most prevalent bacterial infectious diseases in outpatient treatment, and 50-80% of women experience it more than once, with a recurrence rate of 40-50% within a year; consequently, preventing re-hospitalization of patients is critical. However, in the field of urology, no research on the analysis of the re-hospitalization status for urinary tract infections using machine learning algorithms has been reported to date. Therefore, this study uses various machine learning algorithms to analyze the clinical and nonclinical factors related to patients who were re-hospitalized within 30 days of urinary tract infection.

Methods: Data were collected from 497 patients re-hospitalized for urinary tract infections within 30 days and 496 patients who did not require re-hospitalization. The re-hospitalization factors were analyzed using four machine learning algorithms: gradient boosting classifier, random forest, naive Bayes, and logistic regression.

Results: The best-performing gradient boosting classifier identified respiratory rate, days of hospitalization, albumin, diastolic blood pressure, blood urea nitrogen, body mass index, systolic blood pressure, body temperature, total bilirubin, and pulse as the top-10 factors that affect re-hospitalization because of urinary tract infections. The 993 patients whose data were collected were divided into risk groups based on these factors, and the re-hospitalization rate, days of hospitalization, and medical expenses were observed to decrease from the high- to low-risk group.

Conclusions: This study showed new possibilities in analyzing the status of urinary tract infection-related re-hospitalization using machine learning. Identifying factors affecting re-hospitalization and incorporating preventable and reinforcement-based treatment programs can aid in reducing the re-hospitalization rate and average number of days of hospitalization, thereby reducing medical expenses.

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利用机器学习分析尿路感染患者的再住院因素和经济特征。
目的尿路感染是门诊治疗中最常见的细菌感染性疾病之一,50%-80% 的女性会经历一次以上的尿路感染,一年内的复发率为 40%-50%;因此,防止患者再次住院至关重要。然而,在泌尿外科领域,迄今为止还没有关于使用机器学习算法分析尿路感染再住院情况的研究报道。因此,本研究使用各种机器学习算法来分析尿路感染 30 天内再次住院患者的相关临床和非临床因素:收集了497名因尿路感染在30天内再次住院的患者和496名无需再次住院的患者的数据。使用梯度提升分类器、随机森林、天真贝叶斯和逻辑回归四种机器学习算法分析了再住院因素:结果:表现最好的梯度提升分类器将呼吸频率、住院天数、白蛋白、舒张压、血尿素氮、体重指数、收缩压、体温、总胆红素和脉搏确定为影响尿路感染再次住院的十大因素。根据这些因素将收集到数据的 993 名患者分为风险组,观察到从高风险组到低风险组的再住院率、住院天数和医疗费用均有所下降:这项研究显示了利用机器学习分析尿路感染相关再住院状况的新可能性。找出影响再住院的因素,并结合可预防和基于强化的治疗方案,有助于降低再住院率和平均住院天数,从而减少医疗费用。
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来源期刊
DIGITAL HEALTH
DIGITAL HEALTH Multiple-
CiteScore
2.90
自引率
7.70%
发文量
302
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