[Statlist] Research Webinar in Statistics *FRIDAY, 27 November 2020* GSEM, University of Geneva

gsem-support-instituts g@em-@upport-|n@t|tut@ @end|ng |rom un|ge@ch
Wed Nov 25 08:36:49 CET 2020


MMN - A ENVOYER LE 23.11.2020 AVEC L'AFFICHE


Dear All,

We are pleased to invite you to our next Research Webinar.

Looking forward to seeing you


Organizers :                                                                                   
E. Cantoni - S. Engelke - D. La Vecchia - E. Ronchetti
S. Sperlich - F. Trojani - M.-P. Victoria-Feser


FRIDAY, 27 NOVEMBER 2020 at 11:15am
ONLINE
Please join the Zoom research webinar: https://unige.zoom.us/j/99238951053?pwd=dkd5UlRlYXkvNzZicnY0UlBCeW5rdz09
Password: 419459


Right-Censoring Bias Correction for Growth Curve Linear Mixed Models
Dominique-Laurent COUTURIER - Cancer Research UK Cambridge Institute, UK


ABSTRACT:
Tumor growth inhibition studies typically involve analyzing tumor sizes measured regularly over a period of time. The aim is usually to detect differences in growth rate between experimental conditions. Many methods have been considered. Some summarize each growth curve into a single measure and compare the location parameter of these statistics between different experimental conditions by means of Welsh tests. Others consider mixed/longitudinal models, taking into account the time and within tumor dependence of the observations to provide a parametric fit on all collected data. As animals are culled when their tumor size exceeds a legal upper limit or when the discomfort level is considered too high, such data are often right censored, leading to biased growth estimates. Our objective is to develop a method allowing one to correct the bias of growth curve linear mixed models in the presence of right censoring due to a fixed upper tumor size limit. Simulations show that the iterative bootstrap bias corrected estimator we developed for random intercept and slope mixed models allows us to obtain unbiased growth rate estimates as well as confidence intervals showing coverages close to the nominal value.


Visit the website: https://www.unige.ch/gsem/en/research/seminars/rcs/



-------------- next part --------------
A non-text attachment was scrubbed...
Name: RCS_Seminar_DominiqueCOUTURIER.pdf
Type: application/pdf
Size: 2088509 bytes
Desc: RCS_Seminar_DominiqueCOUTURIER.pdf
URL: <https://stat.ethz.ch/pipermail/statlist/attachments/20201125/0c93426a/attachment.pdf>


More information about the Statlist mailing list