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Expert Credibility and Sentiment in Infodemiology of Hydroxychloroquine’s Efficacy on Cable News Programs: Empirical Analysis

Expert Credibility and Sentiment in Infodemiology of Hydroxychloroquine’s Efficacy on Cable News Programs: Empirical Analysis

Combating infodemics involves awareness, literacy, fact-checking, monitoring (infoveillance), and the nondistortion of facts [2]. More studies would help design and monitor accurate health communication strategies that can disseminate scientific facts to inform public health and policy [5-7]. Early work in media and information management has suggested that people are more likely to be persuaded when a source presents itself as credible while disseminating information [8-10].

Dobin Yim, Jiban Khuntia, Elliot King, Matthew Treskon, Panagis Galiatsatos

JMIR Infodemiology 2023;3:e45392


Increased Online Aggression During COVID-19 Lockdowns: Two-Stage Study of Deep Text Mining and Difference-in-Differences Analysis

Increased Online Aggression During COVID-19 Lockdowns: Two-Stage Study of Deep Text Mining and Difference-in-Differences Analysis

Our infoveillance method allows us to discover trends in aggression levels that can provide important information for policy makers and health professionals. Moreover, data before and after lockdown allows us to estimate the potential causal relationship between lockdown and increased aggression using the difference-in-differences analysis, an established econometric method to understand the causal relationship in nonexperimental time-series data [24].

Jerome Tze-Hou Hsu, Richard Tzong-Han Tsai

J Med Internet Res 2022;24(8):e38776


Authors’ Response to Peer Reviews of “Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: Retrospective Infodemiological Analysis”

Authors’ Response to Peer Reviews of “Google Trends as a Predictive Tool for COVID-19 Vaccinations in Italy: Retrospective Infodemiological Analysis”

For this reason, I thought of writing this short paper to give further strength to such a hypothesis to be able to build more effective infoveillance systems in the future. Comment 7: Following the abovementioned concern, it is not sustainable that the conclusion shows that GT is a surveillance and prediction tool for vaccine adherence against COVID-19 in Italy. Answer 7: Dear Reviewer, I modified the conclusion by explicitly writing that the paper provides preliminary evidence.

Alessandro Rovetta

JMIRx Med 2022;3(2):e38695


Characterization of False or Misleading Fluoride Content on Instagram: Infodemiology Study

Characterization of False or Misleading Fluoride Content on Instagram: Infodemiology Study

Reference 3: Infodemiology and infoveillance: framework for an emerging set of public health informaticsinfoveillanceInfodemiology and Infoveillance Infoveillance, Infodemiology, Digital Disease Surveillance, Infodemic Management

Matheus Lotto, Tamires Sá Menezes, Irfhana Zakir Hussain, Shu-Feng Tsao, Zahid Ahmad Butt, Plinio P Morita, Thiago Cruvinel

J Med Internet Res 2022;24(5):e37519


Excess Google Searches for Child Abuse and Intimate Partner Violence During the COVID-19 Pandemic: Infoveillance Approach

Excess Google Searches for Child Abuse and Intimate Partner Violence During the COVID-19 Pandemic: Infoveillance Approach

This approach to monitoring epidemiologic trends falls under the field of “infoveillance,” where user-generated data collected from the internet and social media sites are used for surveillance [12,13]. Peaks in Google searches related to domestic violence were found to occur in the same months as peaks in police calls for domestic violence, suggesting that Google searches may offer a promising way to measure household violence outcomes [14].

Corinne A Riddell, Krista Neumann, N Jeanie Santaularia, Kriszta Farkas, Jennifer Ahern, Susan M Mason

J Med Internet Res 2022;24(6):e36445


Unsupervised Machine Learning to Detect and Characterize Barriers to Pre-exposure Prophylaxis Therapy: Multiplatform Social Media Study

Unsupervised Machine Learning to Detect and Characterize Barriers to Pre-exposure Prophylaxis Therapy: Multiplatform Social Media Study

Identification and characterization of tweets related to the 2015 Indiana HIV outbreak: a retrospective infoveillance Reference 24: Infodemiology and infoveillance: framework for an emerging set of public health informaticsinfoveillanceInfoveillance and Social Listening Infodemiology and Infoveillance

Qing Xu, Matthew C Nali, Tiana McMann, Hector Godinez, Jiawei Li, Yifan He, Mingxiang Cai, Christine Lee, Christine Merenda, Richardae Araojo, Tim Ken Mackey

JMIR Infodemiology 2022;2(1):e35446


The Impact of Public Health Events on COVID-19 Vaccine Hesitancy on Chinese Social Media: National Infoveillance Study

The Impact of Public Health Events on COVID-19 Vaccine Hesitancy on Chinese Social Media: National Infoveillance Study

Chinese Social Media Platform Weibo During the Early COVID-19 Outbreak: Retrospective Observational InfoveillanceinfoveillanceInfoveillance, Infodemiology, Digital Disease Surveillance, Infodemic Management Infodemiology and InfoveillanceThe Impact of Public Health Events on COVID-19 Vaccine Hesitancy on Chinese Social Media: National Infoveillance

Zizheng Zhang, Guanrui Feng, Jiahong Xu, Yimin Zhang, Jinhui Li, Jian Huang, Babatunde Akinwunmi, Casper J P Zhang, Wai-kit Ming

JMIR Public Health Surveill 2021;7(11):e32936


Integrating Google Trends Search Engine Query Data Into Adult Emergency Department Volume Forecasting: Infodemiology Study

Integrating Google Trends Search Engine Query Data Into Adult Emergency Department Volume Forecasting: Infodemiology Study

In addition to research applications, one review [8] described the following practical applications of infodemiology by health care organizations: infoveillance, dissemination of health information, misinformation management, and health interventions.

Jesus Trevino, Sanjeev Malik, Michael Schmidt

JMIR Infodemiology 2022;2(1):e32386