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    Clustered longitudinal data analysis: Extension and comparison of marginal models

    Clustered longitudinal data analysis by Wang, Ming;

    Extension and comparison of marginal models

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    20 785 Ft

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    Product details:

    • Publisher LAP Lambert Academic Publishing
    • Date of Publication 1 January 2010

    • ISBN 9783838311135
    • Binding Paperback
    • No. of pages68 pages
    • Size 220xx mm
    • Weight 105 g
    • Language English
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    Long description:

    Clustered longitudinal data are often collected as repeated measures on subjects arising in clusters. Examples include periodontal disease study, where the measurements related to the disease status of each tooth are collected over time for each patient which is considered as a cluster. For such applications, the number of teeth for each patient may be related to the overall oral health of the individual and hence may influence the distribution of the outcome measure of interest leading to an informative cluster size. Under such situations, three competing marginal linear models are proposed for clustered longitudinal data,namely, generalized estimating equations (GEE), within- cluster resampling (WCR), and cluster-weighted generalized estimating equations (CWGEE). Using simulations, theoretical calculations and real data analysis on periodontal disease, when the cluster size is informative, CWGEE appears to be the recommended choice for marginal parametric inference with clustered longitudinal data that achieves similar parameter estimates and test statistics as WCR while avoiding Monte Carlo computation, while GEE gets biased estimators.

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