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To audit and compare search autocomplete results in Spanish and English during the early COVID-19 pandemic in the New York metropolitan area. The pandemic led to significant online search activity about the disease, its spread, and remedies. As gatekeepers, search engines like Google can influence public opinion. Autocomplete predictions help users complete searches faster but may also shape their views. Understanding these differences is crucial to identify biases and ensure equitable information dissemination. The study tracked autocomplete results daily for five COVID-19 related search terms in English and Spanish over 100+ days in 2020, yielding a total of 9164 autocomplete predictions. Queries in Spanish yielded fewer autocomplete options and often included more negative content than English autocompletes. The topical coverage differed, with Spanish autocompletes including themes related to religion and spirituality that were absent in the English search autocompletes. The contrast in search autocomplete results could lead to divergent impressions about the pandemic and remedial actions among different sections of society. Continuous auditing of autocompletes by public health stakeholders and search engine organizations is recommended to reduce potential bias and misinformation.
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http://dx.doi.org/10.1177/14604582241307836 | DOI Listing |
Health Informatics J
December 2024
School of Communication & Information, Rutgers University, New Brunswick, NJ, USA.
To audit and compare search autocomplete results in Spanish and English during the early COVID-19 pandemic in the New York metropolitan area. The pandemic led to significant online search activity about the disease, its spread, and remedies. As gatekeepers, search engines like Google can influence public opinion.
View Article and Find Full Text PDFJMIR Infodemiology
December 2024
Interdisciplinary Research Team on Internet and Society, Faculty of Social Studies, Masaryk University, Brno, Czech Republic.
J Am Med Inform Assoc
December 2023
University of Florida College of Nursing, Gainesville, FL, United States.
Objectives: Electronic health records (EHRs) user interfaces (UI) designed for data entry can potentially impact the quality of patient information captured in the EHRs. This review identified and synthesized the literature evidence about the relationship of UI features in EHRs on data quality (DQ).
Materials And Methods: We performed an integrative review of research studies by conducting a structured search in 5 databases completed on October 10, 2022.
AMIA Annu Symp Proc
May 2023
University of Utah, Salt Lake City, UT.
While there are several public repositories of biological sequence variation data and associated annotations, there is little open-source tooling designed specifically for the upkeep of local collections of variant data. Many clinics curate and maintain such local collections and are burdened by frequent changes in the representation of those variants and evolving interpretations of clinical significance. A dictionary of genetic variants from the Huntsman Cancer Institute was analyzed over a period of two years and used to inform the development of LocalVar.
View Article and Find Full Text PDFJ Community Psychol
July 2024
Department of Urban-Global Public Health, Rutgers School of Public Health, Newark, NJ, USA.
The purpose of the study was to explore differences in Google search autocompletes between English and Spanish-speaking users during the first wave of the coronavirus disease 2019 (COVID-19) pandemic. Twenty-nine individuals who were in areas with shelter-in-place state orders participated in a virtual focus group meeting to understand the algorithm bias of COVID-19 Google autocompletes. The three focus group meetings lasted for 90-120 minutes.
View Article and Find Full Text PDF