The Unified Model for Acceptance and Use of Health Information on Online Social Networks

Author(s):  
Waransanang Boontarig ◽  
Borworn Papasratorn ◽  
Wichian Chutimaskul

Online social networks provide a novel opportunity to improve public health through effective health information dissemination. Developing a dissemination strategy, however, requires an understanding of individuals' beliefs and attitudes about using both the technology and information. Previous research has focused primarily on either technology adoption or information adoption behaviors. This study aims to bridge the gap by developing a unified model of acceptance and use of information technology for predicting intention to use health information through online social networks. Empirical results show that Performance Expectancy, Facilitating Conditions, Perceived Emotional Value, Trust, Relevance, Accuracy, Understandability, and Source Credibility influence the adoption behavior. Also, individuals tend to accept health information regardless of their attitudes toward the communication channel.

Author(s):  
Waransanang Boontarig ◽  
Borworn Papasratorn ◽  
Wichian Chutimaskul

Online social networks provide a novel opportunity to improve public health through effective health information dissemination. Developing a dissemination strategy, however, requires an understanding of individuals' beliefs and attitudes about using both the technology and information. Previous research has focused primarily on either technology adoption or information adoption behaviors. This study aims to bridge the gap by developing a unified model of acceptance and use of information technology for predicting intention to use health information through online social networks. Empirical results show that Performance Expectancy, Facilitating Conditions, Perceived Emotional Value, Trust, Relevance, Accuracy, Understandability, and Source Credibility influence the adoption behavior. Also, individuals tend to accept health information regardless of their attitudes toward the communication channel.


2018 ◽  
Author(s):  
Hai Liang ◽  
Isaac Chun-Hai Fung ◽  
Zion Tsz Ho Tse ◽  
Jingjing Yin ◽  
Chung-Hong Chan ◽  
...  

BACKGROUND It has been argued that information and emotions towards public health issues could spread widely through online social networks. Although aggregate metrics on the volume of information diffusion are available, we know little about how information spreads on online social networks. For example, health information could be transmitted from one to many (i.e. broadcasting), which is similar to how traditional mass media passes information to the general public. Health information could also be transmitted from many to many (i.e. viral spreading), which is analogous to the spread of infectious diseases. OBJECTIVE The aim of this study is to determine the spreading pattern of Ebola information on Twitter and identify influential users regarding Ebola messages. On Twitter, influential users are those whose tweets receive a large number of retweets. METHODS Our data was purchased from GNIP, the official Twitter data provider. We obtained all Ebola-related tweets (including retweets and replies) posted from March 23, 2014 to May 31, 2015. We reconstructed Ebola-related retweeting paths based on Twitter content and the follower-followee relationships (who follows whom on Twitter). Social network analysis was performed to investigate retweeting patterns. In addition to describing the diffusion structures, we classify users in the network into four categories (i.e., influential user, hidden influential user, disseminator, common user) based on following and retweeting patterns. Disseminators received fewer retweets than expected based on their number of followers, common users and influential users received as many or fewer retweets than expected, and hidden influential users received more retweets than expected. RESULTS On average, 91% of the retweets were directly retweeted from the initial message. Moreover, 47.5% of the retweeting paths of the original tweets had a depth of 1 (i.e., from the seed user to its immediate followers). These observations suggested that the broadcast model was more pervasive than viral spreading. Furthermore, we found that influential users and hidden influential users can trigger more retweets than disseminators and common users. Disseminators and common users relied more on the viral model for spreading information beyond their immediate followers via influential and hidden influential users. CONCLUSIONS The broadcast model was the dominant mechanism of information diffusion of a major health event on Twitter. It suggests that public health communicators can work with influential and hidden influential users to get the message across, because influential and hidden influential users can reach more people that are not following the public health Twitter accounts. Although both influential users and hidden influential users can trigger a lot of retweets, recognizing and using the hidden influential users as the source of information could potentially be a cost-effective communication strategy for public health promotion, because the hidden influential users can receive more retweets than expected based on their limited number of followers. However, challenges remain due to uncertain credibility of these hidden influential users.


2019 ◽  
Vol 11 (3) ◽  
pp. 60 ◽  
Author(s):  
Xuan Wang ◽  
Bofeng Zhang ◽  
Furong Chang

The rapid development of online social networks has allowed users to obtain information, communicate with each other and express different opinions. Generally, in the same social network, users tend to be influenced by each other and have similar views. However, on another social network, users may have opposite views on the same event. Therefore, research undertaken on a single social network is unable to meet the needs of research on hot topic community discovery. “Cross social network” refers to multiple social networks. The integration of information from multiple social network platforms forms a new unified dataset. In the dataset, information from different platforms for the same event may contain similar or unique topics. This paper proposes a hot topic discovery method on cross social networks. Firstly, text data from different social networks are fused to build a unified model. Then, we obtain latent topic distributions from the unified model using the Labeled Biterm Latent Dirichlet Allocation (LB-LDA) model. Based on the distributions, similar topics are clustered to form several topic communities. Finally, we choose hot topic communities based on their scores. Experiment result on data from three social networks prove that our model is effective and has certain application value.


Author(s):  
Volker Gehrau ◽  
Sam Fujarski ◽  
Hannah Lorenz ◽  
Carla Schieb ◽  
Bernd Blöbaum

Due to the novelty and high transmission rate of the coronavirus disease 2019 (COVID-19), direct medical countermeasures are urgently needed. Among actions against the further outbreak of COVID-19, vaccination has been considered as a chief candidate. However, the rapid development of COVID-19 vaccines has led to concern about their safety and thus to public vaccine hesitancy. Strategic heath communication channels, which are widely used and highly trusted, can contribute to more effective promotions of vaccination intention and to the reduction of misleading information about COVID-19 vaccines. Therefore, this study examines the relationship between the exposure to and credibility of different health information sources and the COVID-19 vaccination intention among 629 German adults. Descriptive statistical analysis and multiple linear regressions are employed to examine the research questions. Results reveal that, aside from reliable information from experts and health authorities, local newspapers also have a positive impact on COVID-19 vaccination intention. However, this effect diminishes to some extent when age is considered. In addition, alternative information sources pose a noticeable threat to COVID-19 vaccination intention. Therefore, a close cooperation between healthcare experts, health authorities, and mass media with regard to information dissemination is conducive for vaccination campaigns and for the fight against misleading claims about COVID-19 vaccines.


2014 ◽  
Vol 7 (1) ◽  
pp. 57-63
Author(s):  
Rubén Nieto ◽  
Mercè Boixadós ◽  
Eva Aumatell ◽  
Anna Huguet ◽  
Eulàlia Hernández

Objective: Information and communication technologies (ICT) have great potential for health care. In this study we explore undergraduate psychology students’ perceptions about different specific uses of ICT for health (i.e. online interventions, health information websites, telehealth and online social networks). A total of 113 students answered an online survey designed to gather their perceptions about the use of these four types of interventions for health purposes. Results: Results showed that online interventions and telehealth were assessed as the best ways of using ICT for health, while the worst way was using social networks for health. The most frequently mentioned advantages were related to the fact that ICT can help with access to information and/or treatments, and that they are comfortable. The most frequently mentioned disadvantages were related to the quality of the information (for social networks and health information websites) and the fact that they were considered impersonal (for telehealth and online interventions). Conclusions: Students were not very enthusiastic about the use of ICT for health. Education is needed to change these perceptions and increase the likelihood that they will incorporate ICT in their future practice.


Author(s):  
Alaa Al-Kadi ◽  
Samir Chatterjee

Online social networks are increasing in popularity. Among teens, they are fast becoming synonymous with being online, i.e., using the Internet (Lenhart et al., 2011). As online social networks became widespread, it is found that people are using it for various purposes including work, leisure, entertainment, as well as healthcare. In this paper, the authors share their viewpoint and insights on the use of online social networks for healthcare related purposes which are sometimes also referred to as Health 2.0, or as Health Social Networks (HSNs). The authors examine the potential of HSNs in empowering patients and health information seekers towards wellbeing and healthy living. They also discuss the various potential uses of HSNs by healthcare providers and healthcare organizations. A three-dimensional framework is developed by analyzing 37 best-known commercial HSN sites to help categorize HSNs that can aide in their design process. More importantly, we provide an in-depth discussion on the future role of social networks within Healthcare.


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