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World Disease Weekly


New data from University of Amsterdam illuminate research in HIV/AIDS co-infection risk factors



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This article was published in World Disease Weekly, which you can subscribe to online.

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2009 JUL 28 - (NewsRx.com) -- Fresh data on HIV/AIDS co-infection are presented in the report 'A simple G-computation algorithm to quantify the causal effect of a secondary illness on the progression of a chronic disease.' "Progression of a chronic disease can lead to the development of secondary illnesses. An example is the development of active tuberculosis (TB) in HIV-infected individuals," scientists in Netherlands report.

"HIV disease progression, as indicated by declining CD4 + T-cell count (CD4), increases both the risk of TB and the risk of AIDS-related mortality. This means that CD4 is a time-dependent confounder for the effect of TB on AIDS-related mortality. Part of the effect of TB on AIDS-related mortality may be indirect by causing a drop in CD4. Estimating the total causal effect of TB on AIDS-related mortality using standard statistical techniques, conditioning on CD4 to adjust for confounding, then gives an underestimate of the true effect. Marginal structural models (MSMs) can be used to obtain an unbiased estimate. We describe an easily implemented algorithm that uses G-computation to fit an MSM, as an alternative to inverse probability weighting (IPW). Our algorithm is simplified by utilizing individual baseline parameters that describe CD4 development. Simulation confirms that the algorithm can produce an unbiased estimate of the effect of a secondary illness, when a marker for primary disease progression is both a confounder and intermediary for the effect of the secondary illness," wrote der Wal W.M. van and colleagues, University of Amsterdam.

The researchers concluded: "We used the algorithm to estimate the total causal effect of TB on AIDS-related mortality in HIV-infected individuals, and found a hazard ratio of 3.5 (95 per cent confidence interval 1.2-9.1)."

van and colleagues published their study in Statistics In Medicine (A simple G-computation algorithm to quantify the causal effect of a secondary illness on the progression of a chronic disease. Statistics In Medicine, 2009;28(18):2325-37).

For more information, contact W.M. van der Wal, University of Amsterdam, Biostatistics and Bioinformatics, Dept. of Clinical Epidemiology, Biostatistics and Bioinformatics, PO Box 22660, 1100 DD Amsterdam, Netherlands.

Publisher contact information for the journal Statistics In Medicine is: Taylor & Francis Group Ltd, 2 Park Square, Milton Park, Abingdon, Oxford OX14 4RN United Kingdom.

Keywords: Netherlands, HIV/AIDS Co-Infection Risk Factors, AIDS, Acquired Immunodeficiency Syndrome, Chronic Disease, Cutaneous Tuberculosis, HIV, Human Immunodeficiency Virus Bacterial Infection, Infectious Disease, Mycobacteria, Mycobacterium Tuberculosis, Virology.

This article was prepared by World Disease Weekly editors from staff and other reports. Copyright 2009, World Disease Weekly via NewsRx.com.

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