Lama Yuki, Chen Tao, Dredze Mark, Jamison Amelia, Quinn Sandra Crouse, Broniatowski David A
Department of Family Science, School of Public Health, University of Maryland, College Park, College Park, MD, United States.
Center for Language and Speech Processing, Johns Hopkins University, Baltimore, MD, United States.
J Med Internet Res. 2018 Sep 14;20(9):e10244. doi: 10.2196/10244.
Racial and ethnic minorities are disproportionately affected by human papillomavirus (HPV)-related cancer, many of which could have been prevented with vaccination. Yet, the initiation and completion rates of HPV vaccination remain low among these populations. Given the importance of social media platforms for health communication, we examined US-based HPV images on Twitter. We explored inconsistencies between the demographics represented in HPV images and the populations that experience the greatest burden of HPV-related disease.
The objective of our study was to observe whether HPV images on Twitter reflect the actual burden of disease by select demographics and determine to what extent Twitter accounts utilized images that reflect the burden of disease in their health communication messages.
We identified 456 image tweets about HPV that contained faces posted by US users between November 11, 2014 and August 8, 2016. We identified images containing at least one human face and utilized Face++ software to automatically extract the gender, age, and race of each face. We manually annotated the source accounts of these tweets into 3 types as follows: government (38/298, 12.8%), organizations (161/298, 54.0%), and individual (99/298, 33.2%) and topics (news, health, and other) to examine how images varied by message source.
Findings reflected the racial demographics of the US population but not the disease burden (795/1219, 65.22% white faces; 140/1219, 11.48% black faces; 71/1219, 5.82% Asian faces; and 213/1219, 17.47% racially ambiguous faces). Gender disparities were evident in the image faces; 71.70% (874/1219) represented female faces, whereas only 27.89% (340/1219) represented male faces. Among the 11-26 years age group recommended to receive HPV vaccine, HPV images contained more female-only faces (214/616, 34.3%) than males (37/616, 6.0%); the remainder of images included both male and female faces (365/616, 59.3%). Gender and racial disparities were present across different image sources. Faces from government sources were more likely to depict females (n=44) compared with males (n=16). Of male faces, 80% (12/15) of youth and 100% (1/1) of adults were white. News organization sources depicted high proportions of white faces (28/38, 97% of female youth and 12/12, 100% of adult males). Face++ identified fewer faces compared with manual annotation because of limitations with detecting multiple, small, or blurry faces. Nonetheless, Face++ achieved a high degree of accuracy with respect to gender, race, and age compared with manual annotation.
This study reveals critical differences between the demographics reflected in HPV images and the actual burden of disease. Racial minorities are less likely to appear in HPV images despite higher rates of HPV incidence. Health communication efforts need to represent populations at risk better if we seek to reduce disparities in HPV infection.
种族和少数族裔受人类乳头瘤病毒(HPV)相关癌症的影响尤为严重,其中许多癌症本可通过接种疫苗预防。然而,这些人群中HPV疫苗的起始接种率和全程接种率仍然很低。鉴于社交媒体平台在健康传播方面的重要性,我们研究了推特上以美国为背景的HPV相关图片。我们探讨了HPV图片所呈现的人口统计学特征与HPV相关疾病负担最重的人群之间的不一致性。
我们研究的目的是观察推特上的HPV图片是否反映了特定人口统计学特征的实际疾病负担,并确定推特账号在其健康传播信息中使用反映疾病负担图片的程度。
我们识别出456条关于HPV的图片推文,这些推文包含2014年11月11日至2016年8月8日期间美国用户发布的面部图片。我们识别出包含至少一张人脸的图片,并使用Face++软件自动提取每张脸的性别、年龄和种族。我们将这些推文的来源账号手动标注为以下3种类型:政府(38/298,12.8%)、组织(161/298,54.0%)和个人(99/298,33.2%),并标注主题(新闻、健康和其他),以研究图片如何因信息来源而异。
研究结果反映了美国人口的种族特征,但未反映疾病负担(白人面孔795/1219,占65.22%;黑人面孔140/1219,占11.48%;亚洲面孔71/1219,占5.82%;种族不明面孔213/1219,占17.47%)。图片中的面孔存在性别差异;71.70%(874/1219)为女性面孔,而男性面孔仅占27.89%(340/1219)。在建议接种HPV疫苗的11至26岁年龄组中,HPV图片中仅女性面孔(214/616,34.3%)多于男性面孔(37/616,6.0%);其余图片包含男性和女性面孔(365/616,59.3%)。不同图片来源均存在性别和种族差异。与男性面孔(n = 16)相比,政府来源的图片更有可能描绘女性面孔(n = 44)。在男性面孔中,青年男性的80%(12/15)和成年男性的100%(1/1)为白人。新闻机构来源的图片中白人面孔比例很高(女性青年中28/38,占97%;成年男性中12/12,占100%)。由于在检测多个、小或模糊面孔方面存在局限性,Face++识别出的面孔数量少于人工标注。尽管如此,与人工标注相比,Face++在性别、种族和年龄方面的准确率很高。
本研究揭示了HPV图片所反映的人口统计学特征与实际疾病负担之间的关键差异。尽管HPV发病率较高,但少数族裔在HPV图片中出现的可能性较小。如果我们希望减少HPV感染方面的差异,健康传播工作需要更好地呈现高危人群。