Review Article OPEN ACCESS
Assessing the regression to the
mean for non-normal populations via kernel estimators
Majnu John1, Abbas F. Jawad2
1Division of Biostatistics and
Epidemiology, Department of Public Health, Weill
Cornell Medical College, New York, USA.
2Division of Biostatistics and
Epidemiology, Department of Pediatrics, University of Pennsylvania,
Philadelphia, PA, USA.
Citation:
John M, Jawad AF. Assessing the
regression to the mean for non-normal populations via kernel estimators.
North
Am J Med Sci
2010; 2:
288-292.
Availability:
www.najms.org
ISSN:
1947 – 2714
Abstract
Background:
Part of the change over time of a response in longitudinal studies may be
attributed to the regression to the mean. The component of change due to
regression to the mean is more pronounced in the subjects with extreme
initial values. Das and Mulder proposed a nonparametric approach to estimate
the regression to the mean. Aim:
In
this
paper, Das and Mulder's method is made data-adaptive for empirical
distributions via kernel estimation approaches, while retaining the
original assumptions made by them.
Results: We use the best approaches for kernel density and hazard
function estimation in our methods. This makes our approach extremely user
friendly for a practitioner via the state of the art procedures and packages
available in statistical softwares such as SAS and R for kernel density and
hazard function estimation. We also estimate the standard error of our
estimates of regression to the mean via nonparametric bootstrap methods.
Finally, our methods are illustrated by analyzing the percent predicted FEV1
measurements available from the Cystic Fibrosis Foundation's National
Patient Registry. Conclusion:
The kernel based approach presented in this article is a user-friendly
method to assess the regression to the mean in non-normal populations.
Keywords:
regression to the mean, kernel density
estimation, kernel estimators for hazard function, bootstrap methods,
longitudinal clinical studies
Correspondence to:
Majnu John, Division of
Biostatistics and Epidemiology, Department of Public Health, Weill Cornell
Medical College, 402 East 67th Street, New York, NY 10065, USA.
Email:
maj2023@med.cornell.edu