A cure Weibull gamma-frailty survival model and its application to exploring the prognosis factors of neuroblastoma.
 

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04-30-09 08:23 AM
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A cure Weibull gamma-frailty survival model and its application to exploring the prognosis factors of neuroblastoma.
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A cure Weibull gamma-frailty survival model and its application to exploring the prognosis factors of neuroblastoma.

Hiroshima J Med Sci. 2009 Mar;58(1):25-35

Authors: Dokhi M, Ohtaki M, Hiyama E

The log rank test and the Cox regression, or modifications thereof, emphasize the effect of covariates on survival rate parameter. In some cases, cured individuals, i.e., individuals who may not experience the event of interest may exist in the population of interest. In this situation, we may wish to examine the effect of covariates on both survival rate and cured fraction parameters. Motivated by the Japanese neuroblastoma dataset, we consider a cure model that accounted for the effect of covariates on both of the abovementioned parameters. To deal with heterogeneity that is not explained by covariates, as well as individual random heterogeneity, we perform a frailty variable. Moreover, some nested models are fitted to deal with the principle of parsimony. The effect of covariates was then evaluated by the best nested model. From a statistical point of view, we found that the model of analysis is flexible and adequate to describe the abovementioned dataset. From a medical point of view, we confirmed AGE and STAGE to be the most dominant prognosis factor of neuroblastoma. We also conclude that NMYC and FERRITIN are the other most important prognosis factors. The analysis designated that some of the prognosis factors of neuroblastoma probably just affected the median life of patients and some others are the fatal prognosis factor indicated by their effect which significance on both of survival rate and cured fraction parameters. The present model of analysis is also potentially extendable to facilitate other aspects of inferences.

PMID: 19400554 [PubMed - in process]