This research proposes to address several issues in modelling longitudinal data. Previously, the investigators have performed comparative studies of different longitudinal models on cardiopulmonary data, and have concluded that in most instances the best fit is achieved by models in which the error term has a damped autoregressive correlation structure. One issue in fitting such models is the development of efficient approaches for detecting outliers. It is important to detect outlying subjects or outlying data values for an individual subject, since, failure to do so can seriously affect type I and type II errors. The second specific aim is concerned with modelling bivariate longitudinal data, using the joint distribution of the component random variables. Specifically, the investigators consider an extension of the damped autoregressive correlation model to the bivariate case. The third specific aim focuses on measurement error in longitudinal models. The effects of measurement error on regression coefficient estimates and standard errors will be studied for two types of modelling structures : (i) where reproducibility study data are available, and (ii) where reproducibility study data are not available. Measurement error model for bivariate longitudinal data will also be considered that will allow for correlated measurement error between the individual responses.
The final aim i s to investigate relative advantages of fitting marginal and conditional AR-1 models to the cardiopulmonary data, and to compare interpretations of parameters. Marginal models are easy to interpret, but conditional models allow a time varying covariate to explicitly affect later responses.

Agency
National Institute of Health (NIH)
Institute
National Heart, Lung, and Blood Institute (NHLBI)
Type
Research Project (R01)
Project #
5R01HL040619-09
Application #
2735139
Study Section
Special Emphasis Panel (ZRG4-SOH (04))
Project Start
1988-04-01
Project End
2000-01-31
Budget Start
1998-07-01
Budget End
2000-01-31
Support Year
9
Fiscal Year
1998
Total Cost
Indirect Cost
Name
Brigham and Women's Hospital
Department
Type
DUNS #
071723621
City
Boston
State
MA
Country
United States
Zip Code
02115
Rosner, Bernard; Cook, Nancy R; Daniels, Stephen et al. (2013) Childhood blood pressure trends and risk factors for high blood pressure: the NHANES experience 1988-2008. Hypertension 62:247-54
Carrico, Robert J; Sun, Shumei S; Sima, Adam P et al. (2013) The predictive value of childhood blood pressure values for adult elevated blood pressure. Open J Pediatr 3:116-126
Frank, L Matthew; Shinnar, Shlomo; Hesdorffer, Dale C et al. (2012) Cerebrospinal fluid findings in children with fever-associated status epilepticus: results of the consequences of prolonged febrile seizures (FEBSTAT) study. J Pediatr 161:1169-71
Shinnar, Shlomo; Bello, Jacqueline A; Chan, Stephen et al. (2012) MRI abnormalities following febrile status epilepticus in children: the FEBSTAT study. Neurology 79:871-7
Carey, Vincent J; Wang, You-Gan (2011) Working covariance model selection for generalized estimating equations. Stat Med 30:3117-24
Lee, Mei-Ling Ting; Whitmore, G A; Rosner, Bernard A (2010) Threshold regression for survival data with time-varying covariates. Stat Med 29:896-905
Rosner, Bernard; Cook, Nancy; Portman, Ron et al. (2009) Blood pressure differences by ethnic group among United States children and adolescents. Hypertension 54:502-8
Rosner, B; Cook, N; Portman, R et al. (2008) Determination of blood pressure percentiles in normal-weight children: some methodological issues. Am J Epidemiol 167:653-66
Falkner, Bonita; Gidding, Samuel S; Portman, Ronald et al. (2008) Blood pressure variability and classification of prehypertension and hypertension in adolescence. Pediatrics 122:238-42
Rosner, Bernard; Glynn, Robert J (2007) Interval estimation for rank correlation coefficients based on the probit transformation with extension to measurement error correction of correlated ranked data. Stat Med 26:633-46

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