| Literature DB >> 25605707 |
Johannes C Eichstaedt1, Hansen Andrew Schwartz2, Margaret L Kern3, Gregory Park4, Darwin R Labarthe5, Raina M Merchant6, Sneha Jha7, Megha Agrawal7, Lukasz A Dziurzynski4, Maarten Sap4, Christopher Weeg4, Emily E Larson4, Lyle H Ungar2, Martin E P Seligman4.
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 did a model that combined 10 common demographic, socioeconomic, and health risk factors, including smoking, diabetes, hypertension, and obesity. Capturing community psychological characteristics through social media is feasible, and these characteristics are strong markers of cardiovascular mortality at the community level.Entities:
Keywords: big data; emotions; heart disease; language; open data; open materials; risk factors; social media; well-being
Mesh:
Year: 2015 PMID: 25605707 PMCID: PMC4433545 DOI: 10.1177/0956797614557867
Source DB: PubMed Journal: Psychol Sci ISSN: 0956-7976