Analysis of Frailty in Peritoneal Dialysis Patients Based on Logistic Regression Model and XGBoost Model

Qi Liu, Guanchao Tong, Qiong Ye
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Abstract

Purpose: The aim of this study was to establish a model that would enable healthcare providers to use routine follow-up measures of peritoneal dialysis to predict frailty in those patients. Design: A cross-sectional design with Logistic regression and XGBoost machine learning algorithms analysis. Methods: One hundred and twenty-three cases of peritoneal dialysis patients who underwent regular follow-up at our center were included in this study. We use the FRAIL scale to confirm the frailty of the patients. Clinical and Laboratory data were obtained from the peritoneal dialysis registration system. Factors associated with patient Frailty were identified through regularized logistic regression and validated using an XGBoost model. The final selected variables were in-cluded in the unregularized Logistic Regression to construct the model Findings: A total of 123 patients were reviewed in this study, with an average age of 61.58 years, and the median dialysis Duration was 38.5(18.07,60.53) months. 39 patients (31.71%) were female, 54 PD patients (43.9%) were classified as frail. Age, Ferritin, and TCH are the top three im-portant features labeled by the XGBoost. The results are consistent with the regularized logistic regression. Conclusions: In this study, age, total cholesterol, and ferritin are the most important features associated with the frailty in peritoneal dialysis patients. This model can be used to predict frailty status and help health monitoring of peritoneal dialysis patients.
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基于 Logistic 回归模型和 XGBoost 模型的腹膜透析患者虚弱程度分析
目的:本研究旨在建立一个模型,使医疗服务提供者能够利用腹膜透析的常规随访措施来预测这些患者的虚弱程度。设计:横断面设计,采用 Logistic 回归和 XGBoost 机器学习算法分析。方法本研究纳入了在本中心接受定期随访的 123 例腹膜透析患者。我们使用 FRAIL 量表来确认患者的虚弱程度。临床和实验室数据来自腹膜透析登记系统。通过正则逻辑回归确定了与患者虚弱相关的因素,并使用 XGBoost 模型进行了验证。最后选定的变量被纳入非规则化逻辑回归,以构建模型:本研究共审查了 123 名患者,平均年龄为 61.58 岁,中位透析持续时间为 38.5(18.07,60.53)个月。39名患者(31.71%)为女性,54名透析患者(43.9%)被归类为体弱者。年龄、铁蛋白和 TCH 是 XGBoost 标注的前三个重要特征。结果与正则化逻辑回归一致。结论在这项研究中,年龄、总胆固醇和铁蛋白是与腹膜透析患者虚弱相关的最重要特征。该模型可用于预测虚弱状态,有助于腹膜透析患者的健康监测。
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