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Biostat/Stat 576

Biostat/Stat 576. Chapter 6 Selected Topics on Recurrent Event Data Analysis. Introduction. Recurrent event data Observation of sequences of events occurring as time progresses Incidence cohort sampling Prevalent cohort sampling Can be viewed as point processes

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Biostat/Stat 576

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  1. Biostat/Stat 576 Chapter 6Selected Topics on Recurrent Event Data Analysis

  2. Introduction • Recurrent event data • Observation of sequences of events occurring as time progresses • Incidence cohort sampling • Prevalent cohort sampling • Can be viewed as point processes • Three perspectives to view point processes • Intensity perspective • Counting perspective • Gap time (recurrence) perspective

  3. Data Structure • Prototype of observed data: • : ith individual, jth event • : ith censoring time • : last censored gap time:

  4. Subject i Subject j Can we pool all the gap times to calculate a Kaplan-Meier estimate?

  5. Subject i Subject j

  6. Probability Structure • Last censored gap time: • Always biased • Example: • Suppose gap times are Bernoulli trials with success probability • Censoring time is a fixed integer • Observation of recurrences stops when we observe heads. • This means

  7. Probability Structure • Example (Cont’d) • Suppose we have to include the last gap time to calculate the sample mean of recurrent gap times • Then its expected value would be always larger than , because we know

  8. Probability Structure • Example (Cont’d) • But the estimator would be asymptotically unbiased, because additional one head and one additional one coin flip would not matter as sample size gets large • Reference: • Wang and Chang (1999, JASA)

  9. Probability Structure • Complete recurrences • First recurrences • The complete recurrences are in fact sampled from the truncated distributions • The censoring time for jth complete gap time is

  10. Probability Structure • Suppose underlying gap times follow exactly the same density functions, i.e., • Right-truncated complete gap times would be because

  11. Probability Structure • Risk set for usual right censored times • Risk set for right-truncated gap times

  12. Risk set for left-truncated and right-censored times • Need one more dimension about censoring time • Risk set for left-truncated times

  13. Comparability of complete gap times • References • Wang and Chen (2000, Bmcs)

  14. Probability Structure • Summary • Last censored gap time is always subject to intercept sampling • Reference: • Vardi (1982, Ann. Stat.) • First complete gap times are always subject to right-truncation • Reference: • Chen, et al. (2004, Biostat.)

  15. Nonparametric Estimation (1) • Nonparametric of recurrent survival function: • Suppose observed data are

  16. Then we re-define the recurrences by • Total mass of risk set at time t is

  17. Those failed at time t is calculated by • A product-limit estimator is calculated as

  18. Reference: • Wang and Chang (1999, JASA)

  19. Nonparametric Estimation (2) • Total Times • Gap times • Data for two recurrences • Observed data

  20. Distribution functions • Without censoring, consider • This would estimate • What if we have censoring? • Replace by

  21. Then • Therefore • Now we can estimate H by

  22. G(.) is estimated by Kaplan-Meier estimators based on censoring times • Assuming that censoring times are relatively long such that G(.) can be positively estimated for every subject • Inverse probability of censoring weighting (IPCW) • First derive an estimator without censoring • Then weighted by censoring probabilities • Censoring probabilities are estimated Kaplan-Meier estimates • Assume identical censoring distributions • Can be extended to varying censoring distributions by regression modeling • References • Lin, et al. (1999, Bmka) • Wang and Wells (1998, Bmka) • Lin and Ying (2001, Bmcs)

  23. Nonparametric Estimation (3) • Nonparametric estimation of mean recurrences • Nelson-Aalen estimator for M(t) • Unbiased if • Assume that the censoring time (end-of-observation time) is independent of the counting processes • Reference • Lawless and Nadeau (1995, Technometrics)

  24. Graphical Display • Rate functions • Example of recurrent infections

  25. Estimation of rate functions • To estimate F-rate function • To estimate R-rate function • References • Pepe and Cai (1993)

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