Accepted for/Published in: JMIR Formative Research
Date Submitted: Dec 5, 2023
Date Accepted: Apr 19, 2024
Under-Represented in the Population Flow
ABSTRACT
Background:
In recent years, a range of novel smart-phone derived data streams about human mobility have become available on a near real-time basis. These data have been used, for example, to perform traffic forecasting and epidemic modeling. During the COVID-19 pandemic in particular, human travel behavior has been used as a key component of epidemiological modeling to provide more reliable estimates about the volumes of the pandemic’s importation and transmission routes, or to identify hotspots.
Objective:
However, nearly universally in the literature, the representativeness of these data –how they relate to the underlying real-world human mobility – has been overlooked. This disconnect between data and reality is especially relevant in the case of socially disadvantaged minorities.
Methods:
By analyzing travel trajectories extracted from an exceptionally comprehensive sample of 318 million mobile phone users, representing an entire nation, we found a significant difference in the demographic composition of those who travel and the overall population.
Results:
We show that this difference strongly impacts outcomes of epidemiological forecasts, which typically assume that flows represent underlying demographics.
Conclusions:
Our findings imply that it is necessary to measure and quantify the inherent biases related to non-representativeness for accurate epidemiological surveillance and forecasting.
Citation
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Copyright
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