A non-parametric test procedure is proposed to address the
random-interval observation with imbalanced count data in a medical follow
study. Proposed test statistics are constructed based on the integrated
weighted differences between the mean cumulative function of the recurrences
event with conditions on different treatment groups. The proposed
non-parametric test procedure can detect the departure from the null hypothesis
based on the weighted difference between conditional mean cumulative functions.
The proposed test procedure is concerned with non-parametric comparisons with
time-independent covariates and non-informative censoring processes. The mixed
Poisson process is constructed, and a multivariate non-homogeneous Poisson
process serves as a benchmark for the multivariate mixed Poisson process. The
performance of the proposed non-parametric test procedure is investigated
through a simulation study with an illustration of a numerical example in a
medical follow-up study obtained from the skin cancer chemoprevention trial
conducted by the University of Wisconsin Comprehensive Cancer Center.
Author(s)
Details
Tan Pei
Ling
Department of Mathematical and Data Science, Faculty of Computing
and Information Technology, Tunku Abdul Rahman University of Management and
Technology, 53300 Kuala Lumpur, Malaysia.
Noor
Akma Ibrahim
Institute for Mathematical Research, University Putra Malaysia,
43400 UPM Serdang, Selangor, Malaysia.
Please see the book here:- https://doi.org/10.9734/bpi/mcscd/v1/1114
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