Abstract

Precise identification of the time when a change in a hospital outcome has occurred enables clinical experts to search for a potential special cause more effectively. In this paper, we develop change point estimation methods for survival time of a clinical procedure in the presence of patient mix in a Bayesian framework. We apply Bayesian hierarchical models to formulate the change point where there exists a step change in the mean survival time of patients who underwent cardiac surgery. The data are right censored since the monitoring is conducted over a limited follow-up period. We capture the effect of risk factors prior to the surgery using a Weibull accelerated failure time regression model. Markov Chain Monte Carlo is used to obtain posterior distributions of the change point parameters including location and magnitude of changes and also corresponding probabilistic intervals and inferences. The performance of the Bayesian estimator is investigated through simulations and the result shows that precise estimates can be obtained when they are used in conjunction with the risk-adjusted survival time CUSUM control charts for different magnitude scenarios. The proposed estimator shows a better performance where a longer follow-up period, censoring time, is applied. In comparison with the alternative built-in CUSUM estimator, more accurate and precise estimates are obtained by the Bayesian estimator. These superiorities are enhanced when probability quantification, flexibility and generalizability of the Bayesian change point detection model are also considered.

Highlights

  • A control chart monitors the behavior of a process over time by taking into account the stability and dispersion of the process

  • Performance Analysis To demonstrate the results of Bayesian change point detection in risk-adjusted control charts, we induced a jump and a drop of sizes k~4:0 and k~0:25, respectively, at time t~500 in an incontrol process with an overall survival time of l0~42133:6

  • In this paper, using a Bayesian framework, we modeled change point estimation in time-to-event data for a clinical process with dichotomous outcomes, death and survival, where patient mix was present

Read more

Summary

Introduction

A control chart monitors the behavior of a process over time by taking into account the stability and dispersion of the process. In monitoring hospital outcomes it is necessary to consider the impact of patient health on process outcomes To this end, risk adjustment has been taken into account in the development of control charts. Steiner et al [2] developed a risk-adjusted type of cumulative sum control chart (CUSUM) to monitor surgical outcomes, death, which are influenced by the state of a patient’s health, age and other factors. This approach has been extended to exponential moving average control charts (EWMA) [3,4]. Both modified procedures have been intensively reviewed and are well established for monitoring clinical outcomes where the observations are recorded as binary data [5,6,7]

Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.