1 / 8

CREATE Biostatistics Core THRio Statistical Considerations

CREATE Biostatistics Core THRio Statistical Considerations. Analysis of baseline data—esp. truncation Analysis of main study data—esp. correlation. Outcome =. Outcome =. Outcome =. TB diagnosis in baseline follow. TB diagnosis in baseline follow. TB diagnosis in baseline follow. -.

Télécharger la présentation

CREATE Biostatistics Core THRio Statistical Considerations

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. CREATE Biostatistics CoreTHRio Statistical Considerations Analysis of baseline data—esp. truncation Analysis of main study data—esp. correlation

  2. Outcome = Outcome = Outcome = TB diagnosis in baseline follow TB diagnosis in baseline follow TB diagnosis in baseline follow - - - up period up period up period Primary Exposure = Primary Exposure = Primary Exposure = 1. No HAART & No IPT 1. No HAART & No IPT 1. No HAART & No IPT 2. HAART 2. HAART 2. HAART 3. IPT 3. IPT 3. IPT 4. Both HAART & IPT 4. Both HAART & IPT 4. Both HAART & IPT Sept 1 Sept 1 Sept 1 Sept 1 Sept 1 Sept 1 2003 2003 2003 2005 2005 2005 Baseline analysis

  3. Study definitions Start = Sept 1, 2003 or HIV diagnosis date if between Sept 1, 2003 and Sept 1, 2005 End = TB diagnosis date or Sept 1, 2005 IPT date = Date that IPT began HAART date = Date that HAART began HIV dx date = Earliest of HIV diagnosis date, initial CD4 date, HAART start date TB dx date = Date that tuberculosis diagnosis reported

  4. Table 3: Incidence Rate by exposure category

  5. THRio Baseline Analysis • Question: How much should we worry about bias due to truncation / prevalent cohort? --Sickest, by defn, will die earlier. Had to have made at least one visit to a clinic between 1 Sept 2003 and 1 Sept 2005. Not included if died before 1 Sept 2003. Also, someone who died in Nov 2003 would have had little chance to be included.

  6. truncation… I’m thinking this is somewhat mitigated by controlling for CD4/VL. --Like lining up an analysis of time from HIV seroconversion to TB by estimated conversion time, but staggering entry into risk set according to when came into the study. • We have 95% of data on month of first HIV dx. But data would get ‘thin’ if staggered!

  7. Thinness = entry, at risk Calendar timeline 1 Sept 2003 Time since HIV Dx timeline

  8. Handling Correlation • Currently, plan to form daily risk sets, do conditional logistic regression, with a dummy variable for whether each of the 29 clinics is in intervention status on that day (same as Cox model to TB) • Correlation can be handled with a sandwich covariance estimator; or, by bootstrapping entire clinic histories • Q: sandwich not a great idea when have lots of obs per cluster and few clusters; but what if those lots of obs only have a few events? Perhaps 10-20 TB events per clinic.

More Related