Risk score learning for COVID-19 contact tracing apps

04/17/2021
by   Kevin Murphy, et al.
0

Digital contact tracing apps for COVID-19, such as the one developed by Google and Apple, need to estimate the risk that a user was infected during a particular exposure, in order to decide whether to notify the user to take precautions, such as entering into quarantine, or requesting a test. Such risk score models contain numerous parameters that must be set by the public health authority. Although expert guidance for how to set these parameters has been provided (e.g. https://github.com/lfph/gaen-risk-scoring/blob/main/risk-scoring.md), it is natural to ask if we could do better using a data-driven approach. This can be particularly useful when the risk factors of the disease change, e.g., due to the evolution of new variants, or the adoption of vaccines. In this paper, we show that machine learning methods can be used to automatically optimize the parameters of the risk score model, provided we have access to exposure and outcome data. Although this data is already being collected in an aggregated, privacy-preserving way by several health authorities, in this paper we limit ourselves to simulated data, so that we can systematically study the different factors that affect the feasibility of the approach. In particular, we show that the parameters become harder to estimate when there is more missing data (e.g., due to infections which were not recorded by the app). Nevertheless, the learning approach outperforms a strong manually designed baseline.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/22/2020

Risk scoring calculation for the current NHSx contact tracing app

We consider how the NHS COVID-19 application will initially calculate a ...
research
07/18/2022

A Security Privacy Analysis of US-based Contact Tracing Apps

With the onset of COVID-19, governments worldwide planned to develop and...
research
12/09/2020

A Critique of the Google Apple Exposure Notification (GAEN) Framework

As a response to the COVID-19 pandemic digital contact tracing has been ...
research
11/24/2020

Towards Mass Adoption of Contact Tracing Apps – Learning from Users' Preferences to Improve App Design

Contact tracing apps have become one of the main approaches to control a...
research
05/11/2020

Decentralised, privacy-preserving Bayesian inference for mobile phone contact tracing

Many countries are currently gearing up to use smart-phone apps to perfo...
research
03/31/2021

MOAI: A methodology for evaluating the impact of indoor airflow in the transmission of COVID-19

Epidemiology models play a key role in understanding and responding to t...
research
06/18/2020

SwissCovid: a critical analysis of risk assessment by Swiss authorities

Ahead of the rollout of the SwissCovid contact tracing app, an official ...

Please sign up or login with your details

Forgot password? Click here to reset