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Kind Reminder: AUEB-Stats Seminar: "Bayesian inference for unknown HIV
infection times: biomarker-based models, public health applications and molecular-clock
extensions", by Nikos Pantazis, Assistant Professor of Epidemiology and Medical
Statistics, Department of Hygiene, Epidemiology and Medical Statistics, School
of Medicine, National & Kapodistrian University of Athens
📅 Wednesday,
27/5/2026
🕛 12.15
📍 Room 709
ℹ️ Abstract:
The exact time of HIV infection is rarely observed but plays
a crucial role in understanding epidemic dynamics, evaluating prevention
strategies, and informing public health policy. In this talk, we present a
Bayesian framework for inferring the time since infection using routinely
collected clinical data, primarily CD4 cell counts and viral load measurements.
By learning the natural history of untreated HIV infection from well-characterized
seroconverter cohorts, we reverse the usual modelling perspective and estimate
infection timing probabilistically at the individual level. We show how this
approach can be extended to incorporate additional sources of information, such
as AIDS status and behavioural data, and how uncertainty can be propagated to
population-level analyses. Applications include distinguishing between pre- and
post-migration HIV acquisition and improving inference from sparse surveillance
data. We also discuss integration into large-scale public health tools, such as
the ECDC HIV Platform. Finally, we present recent methodological developments
that combine biomarker-based models with molecular clock information derived
from viral sequences. This extension is particularly relevant in modern
settings where biomarker data are limited, highlighting the flexibility of the
Bayesian framework to integrate complementary sources of information.
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