Trusting information on cancer varies by source of information and political viewpoint

Cancer causes & control : CCC(2024)

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摘要
Purpose This study investigated how trusting information on cancer varies by the source of information and political viewpoint. Methods This study used cross-sectional survey data from the 2020 Health Information National Trends Survey (HINTS). The study comprised a sample of 2949 adults 18 years and older. The outcome variable was measured by assessing respondents’ trust in cancer-related information from various sources, including religious organizations and leaders, government health agencies, charitable organizations, family or friends, and doctors. Political viewpoint was measured as liberal, moderate, and conservative. Multivariate linear probability models were estimated and adjusted for individual-level characteristics. Results Multivariate analysis found that conservatives (73%, 95% CI = 68–78%) were significantly less likely to trust information on cancer from government health agencies compared to liberals (84%, 95% CI = 80–88%). There was no statistically significant difference in trusting government health agencies between liberals and moderates (80%, 95% CI = 76–84%). Both moderates (27%, 95% CI = 21–34%) and conservatives (34%, 95% CI = 29–39%) were more likely to trust information on cancer from religious organizations and leaders compared to liberals (19%, 95% CI = 13–24%). The relationship between political viewpoint and trust of doctors, family or friends, and charitable organizations were not statistically significant. Conclusion Compared to liberals, conservatives are more likely to trust information on cancer from religious organizations and leaders and less likely to trust government health agencies when adjusting for other covariates. This finding emphasizes the role of political viewpoint in shaping individuals’ perceptions of information sources and cancer-related information.
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关键词
Cancer,United States,Cross-sectional study,Trust,Politics,Consumer health information
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