Predicting risk factors for postoperative pneumonia in patients with lower limb fractures based on logistic regression model
Conghui Wei,
Yiqinwen Xiao,
Xiaodan Lin
et al.
Abstract:Purpose: Lower limb fracture is a frequent cause of hospitalization, and postoperative pneumonia is an important marker of hospital cost and quality of care provided. As an extension of traditional statistical methods, machine learning provides the possibility of accurately predicting the postoperative pneumonia. The aim of this paper is to retrospectively identify predictive factors of postoperative pneumonia by using multivariate logistic regression model.
Methods: The incidence and admission of postoperativ… Show more
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