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A history-dependent approach for accurate initial condition estimation in epidemic models

  • Dongju Lim
  • , Kyeong Tae Ko
  • , Hyukpyo Hong
  • , Hyojung Lee
  • , Boseung Choi
  • , Won Chang
  • , Sunhwa Choi
  • , Jae Kyoung Kim
  • Korea Advanced Institute of Science and Technology
  • Institute for Basic Science
  • Kyungpook National University
  • University of Wisconsin-Madison
  • Korea University
  • Ohio State University
  • Seoul National University
  • National Institute for Mathematical Sciences

Research output: Contribution to journalArticlepeer-review

Abstract

Mathematical modeling is a powerful tool for understanding and predicting complex dynamical systems, ranging from gene regulatory networks to population-level dynamics. However, model predictions are highly sensitive to initial conditions, which are often unknown. In infectious disease models, for instance, the initial number of exposed individuals (E) at the time the model simulation starts is frequently unknown. This initial condition has often been estimated using an unrealistic, history-independent assumption for simplicity: the chance that an exposed individual becomes infectious is the same regardless of the timing of their exposure (i.e., exposure history). Here, we show that this history-independent method can yield serious bias in the estimation of the initial condition. To address this, we developed a history-dependent initial condition estimation method derived from a master equation expressing the time-varying likelihood of becoming infectious during a latent period. Our method consistently outperformed the history-independent method across various scenarios, including those with measurement errors and abrupt shifts in epidemics, for example, due to vaccination. In particular, our method reduced estimation error by 55% compared to the previous method in real-world COVID-19 data from Seoul, Republic of Korea, which includes likely infection dates, allowing us to obtain the true initial condition. This advancement of initial condition estimation enhances the precision of epidemic modeling, ultimately supporting more effective public health policies. We also provide a user-friendly package, Hist-D, to facilitate the use of this history-dependent initial condition estimation method.

Original languageEnglish
Article numbere1013438
JournalPLoS Computational Biology
Volume21
Issue number9 September
DOIs
StatePublished - Sep 2025

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 3 - Good Health and Well-being
    SDG 3 Good Health and Well-being

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