Abstract

The purpose of this article is to investigate approaches for modeling individual patient count/rate data over time accounting for temporal correlation and non-constant dispersions while requiring reasonable amounts of time to search over alternative models for those data. This research addresses formulations for two approaches for extending generalized estimating equations (GEE) modeling. These approaches use a likelihood-like function based on the multivariate normal density. The first approach augments standard GEE equations to include equations for estimation of dispersion parameters. The second approach is based on estimating equations determined by partial derivatives of the likelihood-like function with respect to all model parameters and so extends linear mixed modeling. Three correlation structures are considered including independent, exchangeable, and spatial autoregressive of order 1 correlations. The likelihood-like function is used to formulate a likelihood-like cross-validation (LCV) score for use in evaluating models. Example analyses are presented using these two modeling approaches applied to three data sets of counts/rates over time for individual cancer patients including pain flares per day, as needed pain medications taken per day, and around the clock pain medications taken per day per dose. Means and dispersions are modeled as possibly nonlinear functions of time using adaptive regression modeling methods to search through alternative models compared using LCV scores. The results of these analyses demonstrate that extended linear mixed modeling is preferable for modeling individual patient count/rate data over time, because in example analyses, it either generates better LCV scores or more parsimonious models and requires substantially less time.

Highlights

  • An ongoing study (NIH/NINR 1R01NR017853) of patients with cancer is collecting daily longitudinal count/rate data including numbers of pain flares per day and numbers of as needed pain medications taken per day

  • Example analyses are presented using these two modeling approaches applied to three data sets of counts/rates over time for individual cancer patients including pain flares per day, as needed pain medications taken per day, and around the clock pain medications taken per day per dose

  • The results of these analyses demonstrate that extended linear mixed modeling is preferable for modeling individual patient count/rate data over time, because in example analyses, it either generates better like cross-validation (LCV) scores or more parsimonious models and requires substantially less time

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Summary

Introduction

An ongoing study (NIH/NINR 1R01NR017853) of patients with cancer is collecting daily longitudinal count/rate data including numbers of pain flares per day and numbers of as needed pain medications taken per day. Approaches are presented for modeling mean counts/rates over time separately for each individual patient controlling for temporal correlation as well as for time-varying dispersions. These approaches use Poisson regression methods, because count/rate data are being modeled. Two extensions of GEE methods are formulated and evaluated that address temporal correlation and time-varying means and dispersions for repeated count/rate measurements. Example analyses of selected individual cancer patient count/rate data are presented using adaptive regression methods [3] for identifying possibly nonlinear trajectories for means and dispersions of counts/rates over time while controlling for temporal correlation

Generalized Linear Modeling of Means
Time-Varying Dispersions
Modeling Correlations
Possible Extensions
Notation and Parameter Estimation
Likelihood-Like Cross-Validation
Formulation
Parameter Estimation
Modeling Possibly Nonlinear Means and Dispersion over Time
Pain Flare Counts per Day
As Needed Pain Medications Taken Counts per Day
Around the Clock Pain Medications Taken Rates per Day per Dose
Summary
Alternative Approaches
Full Text
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