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Application of sensitivity analysis to incomplete longitudinal CD4 count data

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posted on 2018-08-18, 05:59 authored by Abdul-Karim Iddrisu, Freedom Gumedze

In this paper, we investigate the effect of tuberculosis pericarditis (TBP) treatment on CD4 count changes over time and draw inferences in the presence of missing data. We accounted for missing data and conducted sensitivity analyses to assess whether inferences under missing at random (MAR) assumption are sensitive to not missing at random (NMAR) assumptions using the selection model (SeM) framework. We conducted sensitivity analysis using the local influence approach and stress-testing analysis. Our analyses showed that the inferences from the MAR are robust to the NMAR assumption and influential subjects do not overturn the study conclusions about treatment effects and the dropout mechanism. Therefore, the missing CD4 count measurements are likely to be MAR. The results also revealed that TBP treatment does not interact with HIV/AIDS treatment and that TBP treatment has no significant effect on CD4 count changes over time. Although the methods considered were applied to data in the IMPI trial setting, the methods can also be applied to clinical trials with similar settings.

Funding

AI would like to thank South African Center for Epidemiological Modeling and Analysis (SACEMA) for funding the project. The authors would also like to thank The Academy of Medical Sciences and the The National Research Foundation of South Africa (Grant No. 91016) for partially funding this research.

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