TB Research

Influencing factors of death in patients with MDR-TB based on Bayesian Cox regression model.

Zhiyong Wang, Yuqi Zhang, Wenlong Gao, Zongyu Li, Ming Li, Qiuxia Luo, Yuanyuan Xiang, Kai Bao

PubMed · 2023-11

Abstract

OBJECTIVES: Multidrug-resistant tuberculosis (MDR-TB) has a high mortality and is always one of the major challenges in global TB prevention and control. Analyzing the factors that may impact the adverse outcomes of MDR-TB patients is helpful for improving the systematic management and optimizing the treatment strategies for MDR-TB patients. For follow-up data, the Cox proportional hazards regression model is an important multifactor analysis method. However, the method has significant limitations in its application, such as the fact that it is difficult to deal with the impacts of small sample sizes and other practical issues on the model. Therefore, Bayesian and conventional Cox regression models were both used in this study to analyze the influencing factors of death in MDR-TB patients during the anti-TB therapy, and compare the differences between these 2 methods in their application. METHODS: range indicated the more reliable parameter estimation. RESULTS: ranges of other variables in the Bayesian Cox model were significantly smaller than those in the conventional model, except for parameter standard deviations of receiving regular follow-up (Bayesian model was 0.77; conventional model was 0.72) and pulmonary cavities (Bayesian model was 0.73; conventional model was 0.73). CONCLUSIONS: The first year of anti-TB therapy is a high-risk period for mortality in MDR-TB patients. Complications are the main risk factors of death in MDR-TB patients, while patients who received regular follow-up and had positive first sputum culture presented a lower risk of death. For data with a small sample size and low incidence of outcome, the Bayesian Cox regression model provides more reliable parameter estimation than the conventional Cox model.

MeSH terms

  • Proportional hazards model
  • Medicine
  • Confidence interval
  • Hazard ratio
  • Statistics
  • Bayesian probability
  • Regression analysis
  • Credible interval
  • Survival analysis
  • Tuberculosis
  • Internal medicine