• Open Access

Inferring spatial source of disease outbreaks using maximum entropy

Mehrad Ansari, David Soriano-Paños, Gourab Ghoshal, and Andrew D. White
Phys. Rev. E 106, 014306 – Published 21 July 2022
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Abstract

Mathematical modeling of disease outbreaks can infer the future trajectory of an epidemic, allowing for making more informed policy decisions. Another task is inferring the origin of a disease, which is relatively difficult with current mathematical models. Such frameworks, across varying levels of complexity, are typically sensitive to input data on epidemic parameters, case counts, and mortality rates, which are generally noisy and incomplete. To alleviate these limitations, we propose a maximum entropy framework that fits epidemiological models, provides calibrated infection origin probabilities, and is robust to noise due to a prior belief model. Maximum entropy is agnostic to the parameters or model structure used and allows for flexible use when faced with sparse data conditions and incomplete knowledge in the dynamical phase of disease-spread, providing for more reliable modeling at early stages of outbreaks. We evaluate the performance of our model by predicting future disease trajectories based on simulated epidemiological data in synthetic graph networks and the real mobility network of New York State. In addition, unlike existing approaches, we demonstrate that the method can be used to infer the origin of the outbreak with accurate confidence. Indeed, despite the prevalent belief on the feasibility of contact-tracing being limited to the initial stages of an outbreak, we report the possibility of reconstructing early disease dynamics, including the epidemic seed, at advanced stages.

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  • Received 15 October 2021
  • Revised 9 February 2022
  • Accepted 29 June 2022

DOI:https://doi.org/10.1103/PhysRevE.106.014306

Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI.

Published by the American Physical Society

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Authors & Affiliations

Mehrad Ansari1, David Soriano-Paños2,3, Gourab Ghoshal4, and Andrew D. White1,*

  • 1Department of Chemical Engineering, University of Rochester, Rochester, New York 14627, USA
  • 2Instituto Gulbenkian de Ciência (IGC), Oeiras 2780-156, Portugal
  • 3GOTHAM Lab, Institute for Biocomputation and Physics of Complex Systems, University of Zaragoza, E-50009 Zaragoza, Spain
  • 4Department of Physics and Astronomy and Computer Science, University of Rochester, Rochester, New York 14627, USA

  • *andrew.white@rochester.edu

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Vol. 106, Iss. 1 — July 2022

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