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Survival Analysis: From Square One to Square Two

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Title: Survival Analysis: From Square One to Square Two


1
Survival Analysis From Square One to Square Two
  • Yin Bun Cheung, Ph.D.
  • Paul Yip, Ph.D.

Readings
2
Lecture structure
  • Basic concepts
  • Kaplan-Meier analysis
  • Cox regression
  • Computer practice

3
Whats in a name?
  • time-to-event data
  • failure-time data
  • censored data
  • (unobserved outcome)

4
Types of censoring
  • loss to follow-up during the study period
  • study closure

5
Examples of survival analysis
  • 1. Marital status mortality
  • 2. Medical treatments tumor recurrence
    mortality in cancer patients
  • 3. Size at birth developmental milestones in
    infants

6
Why survival analysis ?
  • Censoring (time of event not observed)
  • Unequal follow-up time

7
What is time?What is the origin of time?
  • In epidemiology
  • Age (birth as time 0) ?
  • Calendar time since a baseline survey ?

8
What is the origin of time?
  • In clinical trials
  • Since randomisation ?
  • Since treatment begins ?
  • Since onset of exposure ?

9
The choice of origin of time
  • Onset of continuous exposure
  • Randomisation to treatment
  • Strongest effect on the hazard

10
Types of survival analysis
1. Non-parametric method Kaplan-Meier
analysis 2. Semi-parametric method Cox
regression 3. Parametric method
11
Square 1 to square 2
  • This lecture focuses on two commonly used methods
  • Kaplan-Meier method
  • Cox regression model

12
KM survival curve
ddeath, ccensored, survsurvival
13
KM survival curve
14
No. of expected deaths
  • Expected death in group A at time i, assuming
    equality in survival
  • EAi no. at risk in group A i ? death i
  • total no. at risk i
  • Total expected death in group A EA ?
    EAi

15
Log rank test
  • A comparison of the number of expected and
    observed deaths.
  • The larger the discrepancy, the less plausible
    the null hypothesis of equality.

16
An approximation
  • The log rank test statistic is often approximated
    by
  • X2 (OA-EA)2/EA (OB-EB)2/EB,
  • where OA EA are the observed expected number
    of deaths in group A, etc.

17
Proportional hazard assumption
Log rank test preferred (PH true )
Breslow test preferred (non-PH)
18
Risk, conditional risk, hazard
19
Another look of PH


Hazard
Hazard
0
5
10
15
20
0
5
10
15
20
Time
Time
Log rank test preferred (PH true )
Breslow test preferred (non-PH)
20
Cox regression model
  • Handles ?1 exposure variables.
  • Covariate effects given as Hazard Ratios.
  • Semi-parametric only assumes proportional hazard.

21
Cox model in the case of a single variable
  • . hi(t) hB(t) ? exp(BXi)
  • . hj(t) hB(t) ? exp(BXj)
  • . hi(t)/hj(t) expB(Xi-Xj)
  • exp(B) is a Hazard Ratio

22
Test of proportional hazard assumption
  • Scaled Schoenfeld residuals
  • Grambsch-Therneau test
  • Test for treatment?period interaction
  • Example mortality of widows

23
Computer practice
  • A clinical trial of
  • stage I bladder tumor
  • Thiotepa vs Control
  • Data from StatLib

24
Data structure
  • Two most important variables
  • Time to recurrence (gt0)
  • Indicator of failure/censoring
  • (0censored 1recurrence)
  • (coding depends on software)

25
KM estimates
Thiotepa
Control
26
Log rank test
chi2(1) 1.52 Prgtchi2 0.22
27
Cox regression models
28
Test of PH assumption
  • Grambsch-Therneau test
  • for PH in model II
  • Thiotepa P0.55
  • Number of tumor P0.60

29
Major References (Examples)
  • Ex 1. Cheung. Int J Epidemiol 20002993-99.
  • Ex 2. Sauerbrei et al. J Clin Oncol
    20001894-101.
  • Ex 3. Cheung et al. Int J Epidemiol 20013066-74.

30
Major References (General)
  • Allison. Survival Analysis using the SAS System.
  • Collett. Modelling Survival Data in Medical
    Research.
  • Fisher, van Belle. Biostatistics A Methodology
    for the Health Sciences.
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