Using Timeliness in Tracking Infections

03/07/2022
by   Melih Bastopcu, et al.
0

We consider real-time timely tracking of infection status (e.g., covid-19) of individuals in a population. In this work, a health care provider wants to detect infected people as well as people who have recovered from the disease as quickly as possible. In order to measure the timeliness of the tracking process, we use the long-term average difference between the actual infection status of the people and their real-time estimate by the health care provider based on the most recent test results. We first find an analytical expression for this average difference for given test rates, infection rates and recovery rates of people. Next, we propose an alternating minimization based algorithm to find the test rates that minimize the average difference. We observe that if the total test rate is limited, instead of testing all members of the population equally, only a portion of the population may be tested in unequal rates calculated based on their infection and recovery rates. Next, we characterize the average difference when the test measurements are erroneous (i.e., noisy). Further, we consider the case where the infection status of individuals may be dependent, which happens when an infected person spreads the disease to another person if they are not detected and isolated by the health care provider. Then, we consider an age of incorrect information based error metric where the staleness metric increases linearly over time as long as the health care provider does not detect the changes in the infection status of the people. In numerical results, we observe that an increased population size increases diversity of people with different infection and recovery rates which may be exploited to spend testing capacity more efficiently. Depending on the health care provider's preferences, test rate allocation can be adjusted to detect either the infected people or the recovered people more quickly.

READ FULL TEXT

page 24

page 28

page 29

research
12/24/2020

Timely Tracking of Infection Status of Individuals in a Population

We consider real-time timely tracking of infection status (e.g., covid-1...
research
04/05/2022

Modeling COVID-19 optimal testing strategies in long-term care facilities: An optimization-based approach

Long-term care facilities have been widely affected by the COVID-19 pand...
research
05/18/2022

Dynamic SAFFRON: Disease Control Over Time Via Group Testing

We consider the dynamic infection spread model that is based on the disc...
research
03/30/2020

Coronavirus Optimization Algorithm: A bioinspired metaheuristic based on the COVID-19 propagation model

A novel bioinspired metaheuristic is proposed in this work, simulating h...
research
02/18/2022

Beyond Vaccination Rates: A Synthetic Random Proxy Metric of Total SARS-CoV-2 Immunity Seroprevalence in the Community

Explicit knowledge of total community-level immune seroprevalence is cri...
research
03/17/2021

Modeling differential rates of aging using routine laboratory data; Implications for morbidity and health care expenditure

Aging is a multidimensional process where phenotypes change at varying r...
research
05/07/2019

PocketCare: Tracking the Flu with Mobile Phones using Partial Observations of Proximity and Symptoms

Mobile phones provide a powerful sensing platform that researchers may a...

Please sign up or login with your details

Forgot password? Click here to reset