CRISP: A Probabilistic Model for Individual-Level COVID-19 Infection
Risk Estimation Based on Contact Data
- URL: http://arxiv.org/abs/2006.04942v2
- Date: Thu, 30 Jun 2022 18:59:25 GMT
- Title: CRISP: A Probabilistic Model for Individual-Level COVID-19 Infection
Risk Estimation Based on Contact Data
- Authors: Ralf Herbrich and Rajeev Rastogi and Roland Vollgraf
- Abstract summary: We present a probabilistic graphical model for COVID-19 infection spread through a population based on the SEIR model.
Our micro-level model keeps track of the infection state for each individual at every point in time, ranging from susceptible, exposed, infectious to recovered.
This is the first model with efficient inference for COVID-19 infection spread based on individual-level contact data.
- Score: 6.0785913977668935
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present CRISP (COVID-19 Risk Score Prediction), a probabilistic graphical
model for COVID-19 infection spread through a population based on the SEIR
model where we assume access to (1) mutual contacts between pairs of
individuals across time across various channels (e.g., Bluetooth contact
traces), as well as (2) test outcomes at given times for infection, exposure
and immunity tests. Our micro-level model keeps track of the infection state
for each individual at every point in time, ranging from susceptible, exposed,
infectious to recovered. We develop both a Monte Carlo EM as well as a message
passing algorithm to infer contact-channel specific infection transmission
probabilities. Our Monte Carlo algorithm uses Gibbs sampling to draw samples of
the latent infection status of each individual over the entire time period of
analysis, given the latent infection status of all contacts and test outcome
data. Experimental results with simulated data demonstrate our CRISP model can
be parametrized by the reproduction factor $R_0$ and exhibits population-level
infectiousness and recovery time series similar to those of the classical SEIR
model. However, due to the individual contact data, this model allows fine
grained control and inference for a wide range of COVID-19 mitigation and
suppression policy measures. Moreover, the block-Gibbs sampling algorithm is
able to support efficient testing in a test-trace-isolate approach to contain
COVID-19 infection spread. To the best of our knowledge, this is the first
model with efficient inference for COVID-19 infection spread based on
individual-level contact data; most epidemic models are macro-level models that
reason over entire populations. The implementation of CRISP is available in
Python and C++ at https://github.com/zalandoresearch/CRISP.
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