Recent scientific advances, such as the development of sensitive measures of viral burden and the ability to sequence virus, have produced powerful new tools for understanding and controlling the HIV epidemic. In addition, treatment advances make it often possible to reduce viral burden below levels of detection. While these development increase the possibilities for epidemic control, new statistical methods are required to make full use of them. Treatment with potent anti-viral drugs has the unwanted effect of inducing resistant strains of HIV that can cause return of high viral burden within patients as well as dissemination throughout populations at risk. Understanding the mechanisms and consequences of treatment failure is vital for epidemic control. This application addresses the statistical problems that arise in studying predictors of virological rebound, and the nature of the virus that rebounds. As resistant strains of HIV become widely dispersed, current therapies will be less effective. For this reason, it is important to classify different genotypic patterns of people with anti-retroviral experience as well as those with newly acquired infection, and to determine the effect of these different classes on the effect of treatment. We describe new and powerful methods for identifying different classes or clusters defined by genotype as well as for determining their effect on response to different treatments. Screening continues to be an important way of monitoring the AIDS epidemic and protecting the blood supply. For this reason, we propose and investigate novel ways of pooling and re-testing blood samples that, theoretically, are both more accurate and cheaper. The potential applications of this method include making it economically feasible to use PCR for screening. Such use has advantages over antibody tests, because PCR detects the presence of virus in newly infected people, before the development of antibody. The long-term consequences of new developments in spread and management of HIV infection must be studies through epidemic surveillance, which is most often achieved by observing AIDS incidence. Because of the long incubation between HIV infection and AIDS, statistical models play a central role in using AIDS incidence for surveillance. We propose analytical techniques required to extract information from the surveillance system, that overcome the effects of the long incubation period. Further, we propose methods to model how treatment is impacting on the epidemic. This methodology in turn may be used to better plan and understand the effect of treatment therapies.

Agency
National Institute of Health (NIH)
Institute
National Institute of Allergy and Infectious Diseases (NIAID)
Type
Research Project (R01)
Project #
5R01AI028076-11
Application #
6373161
Study Section
Special Emphasis Panel (ZRG1-AARR-6 (01))
Program Officer
Dixon, Dennis O
Project Start
1989-09-30
Project End
2002-06-30
Budget Start
2001-07-01
Budget End
2002-06-30
Support Year
11
Fiscal Year
2001
Total Cost
$380,112
Indirect Cost
Name
Harvard University
Department
Biostatistics & Other Math Sci
Type
Schools of Public Health
DUNS #
City
Boston
State
MA
Country
United States
Zip Code
02115
White, Laura Forsberg; Bonetti, Marco; Pagano, Marcello (2009) The Choice of the Number of Bins for the M Statistic. Comput Stat Data Anal 53:3640-3649
Vaida, Florin; Fitzgerald, Anthony P; Degruttola, Victor (2007) Efficient Hybrid EM for Linear and Nonlinear Mixed Effects Models with Censored Response. Comput Stat Data Anal 51:5718-5730
Ozonoff, Al; Webster, Thomas; Vieira, Veronica et al. (2005) Cluster detection methods applied to the Upper Cape Cod cancer data. Environ Health 4:19
Ozonoff, Al; Forsberg, L; Bonetti, M et al. (2004) Bivariate method for spatio-temporal syndromic surveillance. MMWR Morb Mortal Wkly Rep 53 Suppl:59-66
DiRienzo, A Gregory; DeGruttola, Victor (2003) Design and analysis of clinical trials with a bivariate failure time endpoint, with application to AIDS Clinical Trials Group Study A5142. Control Clin Trials 24:122-34
DiRienzo, A G (2003) Nonparametric comparison of two survival-time distributions in the presence of dependent censoring. Biometrics 59:497-504
Foulkes, A S; De, Gruttola V (2002) Characterizing the relationship between HIV-1 genotype and phenotype: prediction-based classification. Biometrics 58:145-56
Park, P J; Pagano, M; Bonetti, M (2001) A nonparametric scoring algorithm for identifying informative genes from microarray data. Pac Symp Biocomput :52-63
Bellocco, R; Pagano, M (2001) Multinomial analysis of smoothed HIV back-calculation models incorporating uncertainty in the AIDS incidence. Stat Med 20:2017-33
Bellocco, R; Xu, J; Schinaia, N et al. (2000) Survival of patients with blood-borne AIDS in Italy. J Epidemiol Biostat 5:79-87

Showing the most recent 10 out of 17 publications