Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.

People's perceptions about health risks, including their risk of acquiring HIV, are impacted in part by who they see portrayed as at risk in the media. Viewers in these cases are asking themselves "do those portrayed as at risk look like me?" An accurate perception of risk is critical...

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Main Authors: Alicia L Nobles, Eric C Leas, Seth Noar, Mark Dredze, Carl A Latkin, Steffanie A Strathdee, John W Ayers
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0231155
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spelling doaj-d44ae703085c469a9180951b964ffd2f2021-03-03T21:44:33ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01155e023115510.1371/journal.pone.0231155Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.Alicia L NoblesEric C LeasSeth NoarMark DredzeCarl A LatkinSteffanie A StrathdeeJohn W AyersPeople's perceptions about health risks, including their risk of acquiring HIV, are impacted in part by who they see portrayed as at risk in the media. Viewers in these cases are asking themselves "do those portrayed as at risk look like me?" An accurate perception of risk is critical for high-risk populations, who already suffer from a range of health disparities. Yet, to date no study has evaluated the demographic representation of health-related content from social media. The objective of this case study was to apply automated image recognition software to examine the demographic profile of faces in Instagram posts containing the hashtag #HIV (obtained from January 2017 through July 2018) and compare this to the demographic breakdown of those most at risk of a new HIV diagnosis (estimates of incidence of new HIV diagnoses from the 2017 US Centers for Disease Control HIV Surveillance Report). We discovered 26,766 Instagram posts containing #HIV authored in American English with 10,036 (37.5%) containing a detectable human face with a total of 18,227 faces (mean = 1.8, standard deviation [SD] = 1.7). Faces skewed older (47% vs. 11% were 35-39 years old), more female (41% vs. 19%), more white (43% vs. 26%), less black (31% vs 44%), and less Hispanic (13% vs 25%) on Instagram than for new HIV diagnoses. The results were similarly skewed among the subset of #HIV posts mentioning pre-exposure prophylaxis (PrEP). This disparity might lead Instagram users to potentially misjudge their own HIV risk and delay prophylactic behaviors. Social media managers and organic advocates should be encouraged to share images that better reflect at-risk populations so as not to further marginalize these populations and to reduce disparity in risk perception. Replication of our methods for additional diseases, such as cancer, is warranted to discover and address other misrepresentations.https://doi.org/10.1371/journal.pone.0231155
collection DOAJ
language English
format Article
sources DOAJ
author Alicia L Nobles
Eric C Leas
Seth Noar
Mark Dredze
Carl A Latkin
Steffanie A Strathdee
John W Ayers
spellingShingle Alicia L Nobles
Eric C Leas
Seth Noar
Mark Dredze
Carl A Latkin
Steffanie A Strathdee
John W Ayers
Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
PLoS ONE
author_facet Alicia L Nobles
Eric C Leas
Seth Noar
Mark Dredze
Carl A Latkin
Steffanie A Strathdee
John W Ayers
author_sort Alicia L Nobles
title Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
title_short Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
title_full Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
title_fullStr Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
title_full_unstemmed Automated image analysis of instagram posts: Implications for risk perception and communication in public health using a case study of #HIV.
title_sort automated image analysis of instagram posts: implications for risk perception and communication in public health using a case study of #hiv.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description People's perceptions about health risks, including their risk of acquiring HIV, are impacted in part by who they see portrayed as at risk in the media. Viewers in these cases are asking themselves "do those portrayed as at risk look like me?" An accurate perception of risk is critical for high-risk populations, who already suffer from a range of health disparities. Yet, to date no study has evaluated the demographic representation of health-related content from social media. The objective of this case study was to apply automated image recognition software to examine the demographic profile of faces in Instagram posts containing the hashtag #HIV (obtained from January 2017 through July 2018) and compare this to the demographic breakdown of those most at risk of a new HIV diagnosis (estimates of incidence of new HIV diagnoses from the 2017 US Centers for Disease Control HIV Surveillance Report). We discovered 26,766 Instagram posts containing #HIV authored in American English with 10,036 (37.5%) containing a detectable human face with a total of 18,227 faces (mean = 1.8, standard deviation [SD] = 1.7). Faces skewed older (47% vs. 11% were 35-39 years old), more female (41% vs. 19%), more white (43% vs. 26%), less black (31% vs 44%), and less Hispanic (13% vs 25%) on Instagram than for new HIV diagnoses. The results were similarly skewed among the subset of #HIV posts mentioning pre-exposure prophylaxis (PrEP). This disparity might lead Instagram users to potentially misjudge their own HIV risk and delay prophylactic behaviors. Social media managers and organic advocates should be encouraged to share images that better reflect at-risk populations so as not to further marginalize these populations and to reduce disparity in risk perception. Replication of our methods for additional diseases, such as cancer, is warranted to discover and address other misrepresentations.
url https://doi.org/10.1371/journal.pone.0231155
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