##Statistics Seminar##\\ Department of Mathematical Sciences
^ **DATE:**|Thursday, May 13, 2021 |
^ **TIME:**|1:15pm -- 2:15pm |
^ **LOCATION:**|Zoom meeting |
^ **SPEAKER:**|Hongshik Ahn, Stony Brook University |
^ **TITLE:**|Modeling and computation of multi-step batch testing for infectious diseases |
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**Abstract**
We propose a mathematical model based on probability theory to optimize
COVID-19 testing by a multi-step batch testing approach with variable batch
sizes. This model and simulation tool dramatically increase the efficiency
and efficacy of the tests in a large population at a low cost, particularly
when the infection rate is low. The proposed method combines statistical
modeling with numerical methods to solve nonlinear equations and obtain
optimal batch sizes at each step of tests, with the flexibility to
incorporate geographic and demographic information. In theory, this method
substantially improves the false positive rate and positive predictive
value as well. We also conducted a Monte Carlo simulation to verify this
theory. Our simulation results show that our method significantly reduces
the false negative rate. More accurate assessment can be made if the
dilution effect or other practical factors are taken into consideration. The
proposed method will be particularly useful for the early detection of
infectious diseases and prevention of future pandemics. The proposed work
will have broader impacts on medical testing for contagious diseases in
general.