Between-Subject and Within-Subject Model Mixtures for Classifying HIV Treatment Response

Cyprien Mbogning, Kevin Bleakley, Marc Lavielle

Abstract


We present a method for using longitudinal data  to classify individuals into clinically-relevant population subgroups. This is achieved by treating ``subgroup'' as a categorical covariate whose value is unknown for each individual, and predicting its value using mixtures of models that represent ``typical'' longitudinal data from each subgroup.  Under a nonlinear mixed effects model framework, two types of model mixtures are presented, both of which have their advantages. Following illustrative simulations, longitudinal viral load data for HIV-positive patients is used to predict whether they are responding -- completely, partially or not at all -- to a new drug treatment.

Full Text:

PDF


DOI: http://dx.doi.org/10.3968/j.pam.1925252820120402.S0801

DOI (PDF): http://dx.doi.org/10.3968/g3096

Refbacks

  • There are currently no refbacks.


Copyright (c)




Share us to:   


Reminder

We are currently accepting submissions via email only.

The registration and online submission functions have been disabled.

Please send your manuscripts to [email protected],or   [email protected]  for consideration.

We look forward to receiving your work.

 

 

 Articles published in Progress in Applied Mathematics are licensed under Creative Commons Attribution 4.0 (CC-BY).

 ROGRESS IN APPLIED MATHEMATICS Editorial Office

Address: 1055 Rue Lucien-L'Allier, Unit #772, Montreal, QC H3G 3C4, Canada.

Telephone: 1-514-558 6138
Http://www.cscanada.net
Http://www.cscanada.org
E-mail:[email protected] [email protected] [email protected]

Copyright © 2010 Canadian Research & Development Center of Sciences and Cultures