Analysis of Frailty in Peritoneal Dialysis Patients Based on Logistic Regression Model and XGBoost Model
Qi Liu,
Guanchao Tong,
Qiong Ye
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. Cli… Show more
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