Data

Change point estimation in monitoring survival time: probability of the occurrence of the change point in the last {25, 50, 100, 200, 300, 400, 500} observations prior to signalling for RAST CUSUM

Queensland University of Technology
Assareh, Hassan ; Mengersen, Kerrie
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Licence & Rights:

Open Licence view details
CC-BY

Creative Commons Attribution 3.0
http://creativecommons.org/licenses/by/3.0/au/

Copyright: © 2012 Assareh, Mengersen.

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Other

Contact Information

Postal Address:
Distinguished Professor Kerrie Mengersen
Ph: +61 7 3138 2063

kerrie.mengersen@qut.edu.au

Full description

The dataset was collected to model change point estimation in time-to-event data for a clinical process with dichotomous outcomes, death and survival, where patient mix was present. Modelling was completed using a Bayesian framework. The performance of the Bayesian estimators was investigated through simulation in conjunction with RAST CUSUM control charts for monitoring right censored survival time of patients who underwent cardiac surgery procedures within a follow-up period of 30 days.

The dataset presents the probability of the occurrence of the change point in the last {25, 50, 100, 200, 300, 400, 500} observations prior to signalling for RAST CUSUM () where and .

Data time period: 2012 to 31 12 2012

This dataset is part of a larger collection

Click to explore relationships graph

153.55292,-26.7775 152.4528,-26.7775 152.4528,-28.03728 153.55292,-28.03728 153.55292,-26.7775

153.0028595,-27.40739

Identifiers