Analysis of Risk Prediction Models to Identify Patients at High Risk of Urinary Incontinence

Rizki Jaya Amal, Suherdy, Delfi Sanutra, Munawmarah, Jevo Rifan Sandikta
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Abstract

Introduction: Urinary incontinence (UI) is a common health problem and is often undiagnosed in hospital patients. UI can cause complications such as urinary tract infections, dermatitis, and decreased quality of life. This study aims to apply a risk prediction model to identify patients at high risk of experiencing UI at Tengku Peukan General Hospital, Southwest Aceh, Indonesia. Methods: This study used a prospective cohort design. Data was collected from 100 patients hospitalized at Tengku Peukan General Hospital, Southwest Aceh. A risk prediction model was developed using logistic regression. Model performance is measured by AUC-ROC values and accuracy. Results: The risk prediction model developed had an AUC-ROC value of 0.85 (95% CI: 0.78-0.92) and an accuracy of 82%. The most significant risk factors for UI are age, gender, history of UI, and use of diuretic medications. Conclusion: This risk prediction model can help nurses and doctors identify patients who are at high risk of experiencing UI at Tengku Peukan General Hospital, Southwest Aceh. Early intervention in high-risk patients can help prevent UI complications and improve the patient's quality of life.
识别尿失禁高危患者的风险预测模型分析
简介尿失禁(UI)是一种常见的健康问题,在医院病人中往往得不到诊断。尿失禁可引起尿路感染、皮炎和生活质量下降等并发症。本研究旨在应用风险预测模型,识别印尼西南亚齐省腾古培干综合医院的尿失禁高危患者。研究方法本研究采用前瞻性队列设计。研究人员收集了西南亚齐省 Tengku Peukan 综合医院 100 名住院患者的数据。采用逻辑回归法建立了一个风险预测模型。模型的性能通过 AUC-ROC 值和准确性来衡量。结果显示所建立的风险预测模型的 AUC-ROC 值为 0.85(95% CI:0.78-0.92),准确率为 82%。尿崩症最重要的风险因素是年龄、性别、尿崩症病史和使用利尿药。结论该风险预测模型可帮助护士和医生识别西南亚齐Tengku Peukan综合医院的尿失禁高危患者。对高危患者进行早期干预有助于预防尿失禁并发症,提高患者的生活质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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