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Pro gradu –thesis Tuija Hevonkorpi.  Basic of survival analysis  Weibull model  Frailty models  Accelerated failure time model  Case study.

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Presentation on theme: "Pro gradu –thesis Tuija Hevonkorpi.  Basic of survival analysis  Weibull model  Frailty models  Accelerated failure time model  Case study."— Presentation transcript:

1 Pro gradu –thesis Tuija Hevonkorpi

2  Basic of survival analysis  Weibull model  Frailty models  Accelerated failure time model  Case study

3  Analysis of data from a given time origin until occurence of a specific point in time  Two main difficulties: Observed survival time are often incomplete Specifying the true survival time

4  Occurs when the favoured endpoint is not observed  Complicates the exact distribution theory and the estimation of quantiles  Special statistical models and methods for analysing data arises

5  Moment in time when the patient was recruited until endpoint occurs  Only calculated for those who encounter the endpoint  Survivor function summarises the distribution of the survival times  Censoring time and survival time are statistically independent random variables

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7  Describes patient´s probability to survive from the time origin t 0 over a specific time t.  The probability that survival time is less than t is described with the distribution function of T, F(t).

8  The approximate probability for a patient encountering the endpoint in the next point in time t i+1, on condition that the endpoint has not been encountered at time t i  Connection b/w the hazard and the survivor function can be easily made, where

9  Useful connections between the functions used in the analysis of survival data

10  Survivor function of the Weibull distribution is at the same time a proportional hazards model and an accelerated failure time (AFT) model  Mathematically easy to handle  Characterised by the scale,, and the shape,, parameter  The hazard function:, for 0≤ t < ∞  The proportional hazards model for a patient i is

11 hazard decreases monotonically hazard increases monotonically reduces to constant exponential hazard

12  Often survival times are not independent  More than one endpoint occuring for one patient – repeated event times within a patient  The random effect is refered to as frailty  Frailty is unobserved variation between patients - the most frail encounter the endpoint earlier than those not so frail

13  An alternative way to model failure time data  Hazard function does not have to follow a specific distribution  Regression parameters are robust towards the neglected covariates  Best described by the survivor function  The per cent of patients in the group A that live longer than t, is equal to the per cent of patients in the group B that live longer than t  The survival time is speeded up or slowed down by the effect of the explanatory variable

14  Main objective is to evaluate the time to significant pain relief with the active medication group compared to placebo group  Three models: A proportional hazards model with Weibull distributed event times and gamma frailty term A proportional hazards model with Weibull distributed event times and log- normal frailty term An AFT model with log-normal distributed event times and log-normal frailty term

15  Patients were randomised in 3:1 ratio in the two treatment groups  113 patients experienced two pain episodes, 6 patients only one. Pain episode Treatment group N% FirstPlacebo3025.21 Active8974.79 SecondPlacebo2925.66 Active8474.34

16 Pain episodeTreatment group Time to pain relief N% FirstPlacebo5 min1254.44 10 min522.73 15 min418.18 20 min14.55 Active5 min3656.25 10 min1726.56 15 min69.38 20 min34.69 30 min23.13

17  The model for the log-likelihood function with gamma frailty effect which in the NLMIXED- procedure can be written for patient i as

18  Kaplan-Meier estimate and the population survivor function for the two treatment groups separately

19  The population survivor function is calculated as  The subject specific estimated survivor functions are obtained from where u i is the predicted frailty term and H 0 (t) the Weibull baseline hazard,

20  Individual and population survivor function estimate for the active treatment group

21  There is no explicit form for the the marginal likelihood  Instead of integrating out the frailty, numerical integration is done using the NLMIXED-procedure in SAS software  The log-likelihood function is of from

22  AFT model with log-normally distributed event times and log-normal frailty term  The log-likelihood function is where, in where is the cumulative distribution function of the standard normal distribution.

23  The functions cross because different treatment is given to different patients when the usual re- parametrisation of the survivor function of the AFT model does not occur necessary

24 Model- 2 log-likelihoodAIC No frailty1408.71416.7 Gamma frailty1199.61207.6 Log-normal frailty1251.01259.0 AFT model with frailty1250.51258.5  All but log-normal frailty and AFT with frailty differ from each other statistically significantly  In all analyses, the hazard ratio, or the accelerator factor in AFT model, was calculated, and the difference between the two models was not statistically significant

25 Questions?


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