Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
about
Population health impact and cost-effectiveness of tuberculosis diagnosis with Xpert MTB/RIF: a dynamic simulation and economic evaluationThe Potential Impact of Up-Front Drug Sensitivity Testing on India's Epidemic of Multi-Drug Resistant TuberculosisNational HIV prevalence estimates for sub-Saharan Africa: controlling selection bias with Heckman-type selection modelsA stochastic infection rate model for estimating and projecting national HIV prevalence ratesEstimating and Projecting Trends in HIV/AIDS Generalized Epidemics Using Incremental Mixture Importance SamplingMeasuring the HIV/AIDS epidemic: approaches and challenges.Bayesian calibration of simulation models for supporting management of the elimination of the macroparasitic disease, Lymphatic Filariasis.Improved data, methods and tools for the 2007 HIV and AIDS estimates and projections.Geographic and ecologic heterogeneity in elimination thresholds for the major vector-borne helminthic disease, lymphatic filariasis.Development, calibration and performance of an HIV transmission model incorporating natural history and behavioral patterns: application in South Africa.Rapid scaling up of insecticide-treated bed net coverage in Africa and its relationship with development assistance for health: a systematic synthesis of supply, distribution, and household survey data.Population-level impact of an accelerated HIV response plan to reach the UNAIDS 90-90-90 target in Côte d'Ivoire: Insights from mathematical modeling.A Bayesian framework for parameter estimation in dynamical modelsAssessing and adjusting for differences between HIV prevalence estimates derived from national population-based surveys and antenatal care surveillance, with applications for Spectrum 2013.Recent HIV prevalence trends among pregnant women and all women in sub-Saharan Africa: implications for HIV estimates.Estimating the HIV incidence rate: recent and future developments.Modelling HIV epidemics in the antiretroviral era: the UNAIDS Estimation and Projection package 2009.Flexible epidemiological model for estimates and short-term projections in generalised HIV/AIDS epidemics.Tuberculosis control in South African gold mines: mathematical modeling of a trial of community-wide isoniazid preventive therapy.Evidence for changes in behaviour leading to reductions in HIV prevalence in urban MalawiThe role of acute and early HIV infection in the spread of HIV and implications for transmission prevention strategies in Lilongwe, Malawi: a modelling studyTuberculosis control in China: use of modelling to develop targets and policies.The impact of new tuberculosis diagnostics on transmission: why context matters.Spline-based modelling of trends in the force of HIV infection, with application to the UNAIDS Estimation and Projection PackageBayesian demography 250 years after Bayes.Progress and challenges in modelling country-level HIV/AIDS epidemics: the UNAIDS Estimation and Projection Package 2007Accounting for nonsampling error in estimates of HIV epidemic trends from antenatal clinic sentinel surveillance.Changing Dynamics of HIV Transmission in Côte d'Ivoire: Modeling Who Acquired and Transmitted Infections and Estimating the Impact of Past HIV Interventions (1976-2015).Benefits of continuous isoniazid preventive therapy may outweigh resistance risks in a declining tuberculosis/HIV coepidemic.Bayesian Melding Approach to Estimate the Reproduction Number for Tuberculosis Transmission in Indian States and Union Territories.Mathematical Modeling of "Chronic" Infectious Diseases: Unpacking the Black Box.Undiagnosed HIV infections among gay and bisexual men increasingly contribute to new infections in Australia.Hyak mortality monitoring system: innovative sampling and estimation methods - proof of concept by simulation.The Role of Mathematical Models in Vaccine Development and Public Health Decision Making
P2860
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P2860
Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
description
2008 nî lūn-bûn
@nan
2008年の論文
@ja
2008年論文
@yue
2008年論文
@zh-hant
2008年論文
@zh-hk
2008年論文
@zh-mo
2008年論文
@zh-tw
2008年论文
@wuu
2008年论文
@zh
2008年论文
@zh-cn
name
Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
@en
type
label
Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
@en
prefLabel
Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
@en
P2860
P356
P1476
Bayesian melding for estimating uncertainty in national HIV prevalence estimates.
@en
P2093
P2860
P304
P356
10.1136/STI.2008.029991
P478
84 Suppl 1
P577
2008-08-01T00:00:00Z