JMIR Mental Health (Mar 2022)

Utilizing Big Data From Google Trends to Map Population Depression in the United States: Exploratory Infodemiology Study

  • Alex Wang,
  • Robert McCarron,
  • Daniel Azzam,
  • Annamarie Stehli,
  • Glen Xiong,
  • Jeremy DeMartini

DOI
https://doi.org/10.2196/35253
Journal volume & issue
Vol. 9, no. 3
p. e35253

Abstract

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BackgroundThe epidemiology of mental health disorders has important theoretical and practical implications for health care service and planning. The recent increase in big data storage and subsequent development of analytical tools suggest that mining search databases may yield important trends on mental health, which can be used to support existing population health studies. ObjectiveThis study aimed to map depression search intent in the United States based on internet-based mental health queries. MethodsWeekly data on mental health searches were extracted from Google Trends for an 11-year period (2010-2021) and separated by US state for the following terms: “feeling sad,” “depressed,” “depression,” “empty,” “insomnia,” “fatigue,” “guilty,” “feeling guilty,” and “suicide.” Multivariable regression models were created based on geographic and environmental factors and normalized to the following control terms: “sports,” “news,” “google,” “youtube,” “facebook,” and “netflix.” Heat maps of population depression were generated based on search intent. ResultsDepression search intent grew 67% from January 2010 to March 2021. Depression search intent showed significant seasonal patterns with peak intensity during winter (adjusted P<.001) and early spring months (adjusted P<.001), relative to summer months. Geographic location correlated with depression search intent with states in the Northeast (adjusted P=.01) having higher search intent than states in the South. ConclusionsThe trends extrapolated from Google Trends successfully correlate with known risk factors for depression, such as seasonality and increasing latitude. These findings suggest that Google Trends may be a valid novel epidemiological tool to map depression prevalence in the United States.