Assessment of the benefits of Discrete Conditional Survival models in modelling ambulance response times

Research output: Book/ReportOther report

98 Downloads (Pure)

Abstract

Many of the challenges faced in health care delivery can be informed through building models. In particular, Discrete Conditional Survival (DCS) models, recently under development, can provide policymakers with a flexible tool to assess time-to-event data. The DCS model is capable of modelling the survival curve based on various underlying distribution types and is capable of clustering or grouping observations (based on other covariate information) external to the distribution fits. The flexibility of the model comes through the choice of data mining techniques that are available in ascertaining the different subsets and also in the choice of distribution types available in modelling these informed subsets. This paper presents an illustrated example of the Discrete Conditional Survival model being deployed to represent ambulance response-times by a fully parameterised model. This model is contrasted against use of a parametric accelerated failure-time model, illustrating the strength and usefulness of Discrete Conditional Survival models.

Original languageEnglish
Number of pages43
Publication statusPublished - 01 Jul 2011

Fingerprint

Dive into the research topics of 'Assessment of the benefits of Discrete Conditional Survival models in modelling ambulance response times'. Together they form a unique fingerprint.

Cite this