Modelling Longitudinal Semicontinuous Emesis Volume Data with Serial Correlation in an Acupuncture Clinical Trial
- 3 March 2005
- journal article
- Published by Oxford University Press (OUP) in Journal of the Royal Statistical Society Series C: Applied Statistics
- Vol. 54 (4) , 707-720
- https://doi.org/10.1111/j.1467-9876.2005.05515.x
Abstract
Summary: In longitudinal studies, we are often interested in modelling repeated assessments of volume over time. Our motivating example is an acupuncture clinical trial in which we compare the effects of active acupuncture, sham acupuncture and standard medical care on chemotherapy-induced nausea in patients being treated for advanced stage breast cancer. An important end point for this study was the daily measurement of the volume of emesis over a 14-day follow-up period. The repeated volume data contained many 0s, had apparent serial correlation and had missing observations, making analysis challenging. The paper proposes a two-part latent process model for analysing the emesis volume data which addresses these challenges. We propose a Monte Carlo EM algorithm for parameter estimation and we use this methodology to show the beneficial effects of acupuncture on reducing the volume of emesis in women being treated for breast cancer with chemotherapy. Through simulations, we demonstrate the importance of correctly modelling the serial correlation for making conditional inference. Further, we show that the correct model for the correlation structure is less important for making correct inference on marginal means.Keywords
This publication has 22 references indexed in Scilit:
- Misspecified maximum likelihood estimates and generalised linear mixed modelsBiometrika, 2001
- A Two-Part Random-Effects Model for Semicontinuous Longitudinal DataJournal of the American Statistical Association, 2001
- Electroacupuncture for Control of Myeloablative Chemotherapy–Induced EmesisJAMA, 2000
- Comparison of Several Independent Population Means When Their Samples Contain Log‐Normal and Possibly Zero ObservationsBiometrics, 1999
- Maximizing Generalized Linear Mixed Model Likelihoods With an Automated Monte Carlo EM AlgorithmJournal of the Royal Statistical Society Series B: Statistical Methodology, 1999
- Maximum Likelihood Algorithms for Generalized Linear Mixed ModelsJournal of the American Statistical Association, 1997
- A Monte Carlo Implementation of the EM Algorithm and the Poor Man's Data Augmentation AlgorithmsJournal of the American Statistical Association, 1990
- Estimation and Comparison of Changes in the Presence of Informative Right Censoring by Modeling the Censoring ProcessPublished by JSTOR ,1988
- Longitudinal data analysis using generalized linear modelsBiometrika, 1986