Journal article
Psychological Language on Twitter Predicts County-Level Heart Disease Mortality
JC Eichstaedt, HA Schwartz, ML Kern, G Park, DR Labarthe, RM Merchant, S Jha, M Agrawal, LA Dziurzynski, M Sap, C Weeg, EE Larson, LH Ungar, MEP Seligman
Psychological Science | Published : 2015
Abstract
Hostility and chronic stress are known risk factors for heart disease, but they are costly to assess on a large scale. We used language expressed on Twitter to characterize community-level psychological correlates of age-adjusted mortality from atherosclerotic heart disease (AHD). Language patterns reflecting negative social relationships, disengagement, and negative emotions—especially anger—emerged as risk factors; positive emotions and psychological engagement emerged as protective factors. Most correlations remained significant after controlling for income and education. A cross-sectional regression model based only on Twitter language predicted AHD mortality significantly better than di..
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Awarded by National Heart, Lung, and Blood Institute
Funding Acknowledgements
This work was supported by the Robert Wood Johnson Foundation's Pioneer Portfolio, through Exploring Concepts of Positive Health Grant 63597 (to M. E. P. Seligman), and by a grant from the Templeton Religion Trust.