Science in China Series A-Mathematics 2009, 52(6) 1169-1180 DOI:   10.1007/s11425-009-0059-x  ISSN: 1006-9283 CN: 11-1787/N

Current Issue | Archive | Search                                                            [Print]   [Close]
Special Issue in Honor of the Establishment of IMS China
Information and Service
This Article
Supporting info
PDF(257KB)
[HTML]
Reference
Service and feedback
Email this article to a colleague
Add to Bookshelf
Add to Citation Manager
Cite This Article
Email Alert
Keywords
asymptotic relative efficiency
frailty model
log-rank test
proportional mean test
recurrent events
robust variance estimation
Authors
LU WenBin
PubMed
Article by LU WenBin

Efficiency comparison between mean and log-rank tests for recurrent event time data

LU WenBin

Department of Statistics, North Carolina State University, Raleigh, NC 27695, USA

Abstract

Recurrent event time data are common in biomedical follow-up studies, in which a study subject may experience repeated occurrences of an event of interest. In this paper, we evaluate two popular nonparametric tests for recurrent event time data in terms of their relative efficiency. One is the log-rank test for classical survival data and the other a more recently developed nonparametric test based on comparing mean recurrent rates. We show analytically that, somewhat surprisingly, the log-rank test that only makes use of time to the first occurrence could be more efficient than the test for mean occurrence rates that makes use of all available recurrence times, provided that subject-to-subject variation of recurrence times is large. Explicit formula are derived for asymptotic relative efficiencies under the frailty model. The findings are demonstrated via extensive simulations.

Keywords asymptotic relative efficiency   frailty model   log-rank test   proportional mean test   recurrent events   robust variance estimation  
Received 2008-11-10 Revised 2009-01-14 Online:  
DOI: 10.1007/s11425-009-0059-x
Fund:

This work was supported by US National Science Foundation (Grant No. DMS-0504269)

Corresponding Authors:
Email: lu@stat.ncsu.edu
About author:

References:
Similar articles

Copyright by Science in China Series A-Mathematics