Division of Infectious Diseases and Global Public Health, Department of Medicine, University of California San Diego, La Jolla, California, United States of America.
Division of Health Policy, Department of Family Medicine and Public Health, University of California San Diego, La Jolla, California, United States of America.
PLoS One. 2020 May 4;15(5):e0231155. doi: 10.1371/journal.pone.0231155. eCollection 2020.
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.
人们对健康风险的认知,包括他们感染 HIV 的风险,部分受到媒体所描绘的风险人群的影响。在这些情况下,观众会问自己“被描绘为有风险的人看起来像我吗?”对于已经存在一系列健康差异的高风险人群来说,准确的风险认知至关重要。然而,迄今为止,尚无研究评估过社交媒体中与健康相关内容的人口统计学代表性。本案例研究的目的是应用自动图像识别软件来检查 Instagram 帖子中包含#HIV 标签的帖子(从 2017 年 1 月到 2018 年 7 月获取)中人脸的人口统计学特征,并将其与最有可能新发 HIV 诊断的人群的人口统计学特征进行比较(2017 年美国疾病控制与预防中心 HIV 监测报告中的新发 HIV 诊断估计数)。我们发现 26766 篇包含美国英语的 Instagram 帖子包含#HIV,其中 10036 篇(37.5%)包含可检测的人脸,总共有 18227 张脸(平均值=1.8,标准差[SD]=1.7)。这些人脸的年龄更大(47%的人脸年龄在 35-39 岁,而只有 11%的新发 HIV 诊断患者年龄在 35-39 岁)、更多为女性(41%的人脸为女性,而只有 19%的新发 HIV 诊断患者为女性)、更白(43%的人脸为白人,而只有 26%的新发 HIV 诊断患者为白人)、更黑(31%的人脸为黑人,而只有 44%的新发 HIV 诊断患者为黑人)、更拉丁裔(13%的人脸为拉丁裔,而只有 25%的新发 HIV 诊断患者为拉丁裔)。在提到暴露前预防(PrEP)的#HIV 帖子中,这种差异更为明显。这种差异可能导致 Instagram 用户对自己的 HIV 风险产生错误判断,从而延迟预防性行为。应该鼓励社交媒体经理和有机倡导者分享更能反映高危人群的图像,以免进一步使这些人群边缘化,并减少风险认知方面的差异。需要复制我们的方法来研究其他疾病,如癌症,以发现和解决其他代表性不足的问题。