| Literature DB >> 32999287 |
Kyra H Grantz1, Hannah R Meredith1, Derek A T Cummings2, C Jessica E Metcalf3, Bryan T Grenfell3, John R Giles1, Shruti Mehta1, Sunil Solomon1, Alain Labrique4, Nishant Kishore5, Caroline O Buckee5, Amy Wesolowski6.
Abstract
The ongoing coronavirus disease 2019 (COVID-19) pandemic has heightened discussion of the use of mobile phone data in outbreak response. Mobile phone data have been proposed to monitor effectiveness of non-pharmaceutical interventions, to assess potential drivers of spatiotemporal spread, and to support contact tracing efforts. While these data may be an important part of COVID-19 response, their use must be considered alongside a careful understanding of the behaviors and populations they capture. Here, we review the different applications for mobile phone data in guiding and evaluating COVID-19 response, the relevance of these applications for infectious disease transmission and control, and potential sources and implications of selection bias in mobile phone data. We also discuss best practices and potential pitfalls for directly integrating the collection, analysis, and interpretation of these data into public health decision making.Entities:
Mesh:
Year: 2020 PMID: 32999287 PMCID: PMC7528106 DOI: 10.1038/s41467-020-18190-5
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Fig. 1The uses of mobile phone data to inform COVID-19 public health response and their possible biases.
a Over the course of the epidemic, mobile phone data and applications may be relevant to help answer a number of important epidemiological questions needed to guide the implementation and evaluation of various interventions. b However, these data should be considered in light of ownership and use biases that may or may not limit generalizability to the overall population. Mobile phone owners and users only represent a subset of the population and may have additional age (shown here for a synthetic population for illustrative purposes), socio-demographic, or geographic biases. Applications that require the use of a smartphone or application may further limit the generalizability of these data since they represent smaller subsets of the user population.
Summary of types, metrics, and proposed applications of mobile phone data.
| Data type/information | Metrics | Applications | Advantages | Limitations |
|---|---|---|---|---|
• Collected routinely by mobile phone operators • Consists of a time stamp, GPS location of local cell tower, and unique identifier for all subscribers | • Origin-Destination Matrix • Radius of Gyration • Subscriber Density | • Assess changes to population-level mobility and clustering behaviors • Understand risk of importation from different regions • Retrace likely introduction and spread of an outbreak in new areas • Inform projections of disease risk or burden across space | • Typically readily available • High coverage to estimate large, population-level mobility patterns for entire countries or region • Available frameworks provide aggregated, anonymized metrics | • Assumes aggregate mobility behaviors represent that of infected/potentially infectious individuals • Cannot distinguish high vs low risk of transmission • Limited data in Internet-enabled or low cell-tower-density areas • Limited use in understanding transmission chains • Selection bias for whom data is available (mobile phone user) |
• Collected passively through some smartphone applications • Consists of time stamp, GPS location of phone, and unique identifiers for all application users | • Origin-Destination Matrix • Radius of Gyration • User Density, Proximity | • Assess changes to population-level mobility and clustering behaviors • Understand risk of importation from different regions • Retrace likely disease introduction and spread in new areas • Inform projections of disease risk or burden across space | • Provides higher resolution spatial data than CDRs • Provides population-level insight into the average clustering and movement of individuals | • Selection bias in the population for whom data is available (smartphone users who opted into app) • Fewer standardized frameworks for managing privacy and anonymization of potentially sensitive information |
• Collected passively by Bluetooth-enabled phones • Consists of the time stamp, distance, and duration of interaction between two devices with unique identifiers | • User Density, Proximity • Proximity Network Characteristics (degree, clustering) | • Assess changes to population-level clustering behaviors due to NPIs • Assess changes to pairwise contact rates in a given population over time | • Large-scale collection of data on pairwise interactions and clustering • Interactions potentially more relevant to disease transmission | • Selection bias in the population for whom data is available (mobile phone user, Bluetooth enabled, interacting with another Bluetooth enabled device) • Cannot distinguish proximity with high vs low risk of transmission |
• Applications using Bluetooth and/or GPS location data to track interactions between individuals collect data passively through enabled phones and/or actively when users respond to prompts • Application specific, but could consist of time stamp, distance, duration of interaction, questionnaire responses | • Proximity Network (identified contact chains) | • Contact tracing to facilitate quarantine of potentially infected persons | • Enable rapid tracing and quarantining of exposed individuals with fewer resources • Allow for measured behavior to be linked to an individual’s infection status | • Low tolerance for missing data; unclear ability to sufficiently scale up • Cannot distinguish proximity with high vs low risk of transmission • Selection bias in the population for whom data is available (smartphone users, possibly Bluetooth enabled, opted into and compliant with application, interacting with another user opted into and compliant with application) |
Epidemiologically-relevant behaviors captured in mobile phone data.
| What is captured? | What is not captured? | |
|---|---|---|
| Spatially and temporally aggregated mobility (CDRs, GPS) | • Changes in population-level mobility and clustering behaviors in response to NPIs • Rates at which individuals move between locations • Potential transmission links between locations • Hourly or daily movements | • Changes in individual behavior, trajectories, or specific routes • Differences in how individuals use their phone • Distinction between movement with high vs low risk of transmission • Transmission chains within locations |
| Proximity networks (Bluetooth, contact tracing applications) | • Relationship between individual’s behavior and infection status • Fine-scale clustering and contact data | • Distinction between proximate individuals who are in direct contact or not in contact • Non-proximal interactions that may be involved in transmission |