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在内科医学推特学习社区中促成社交媒体影响力的因素。

Factors that contribute to social media influence within an Internal Medicine Twitter learning community.

作者信息

Desai Tejas, Patwardhan Manish, Coore Hunter

机构信息

Division of Nephrology and Hypertension, East Carolina University - Brody School of Medicine, Greenville, NC 27834, USA.

Division of General Internal Medicine, East Carolina University - Brody School of Medicine, Greenville, NC 27834, USA.

出版信息

F1000Res. 2014 May 29;3:120. doi: 10.12688/f1000research.4283.1. eCollection 2014.

Abstract

Medical societies, faculty, and trainees use Twitter to learn from and educate other social media users. These social media communities bring together individuals with various levels of experience. It is not known if experienced individuals are also the most influential members. We hypothesize that participants with the greatest experience would be the most influential members of a Twitter community. We analyzed the 2013 Association of Program Directors in Internal Medicine Twitter community. We measured the number of tweets authored by each participant and the number of amplified tweets (re-tweets). We developed a multivariate linear regression model to identify any relationship to social media influence, measured by the PageRank. Faculty (from academic institutions) comprised 19% of the 132 participants in the learning community (p < 0.0001). Faculty authored 49% of all 867 tweets (p < 0.0001). Their tweets were the most likely to be amplified (52%, p < 0.01). Faculty had the greatest influence amongst all participants (mean 1.99, p < 0.0001). Being a faculty member had no predictive effect on influence (β = 0.068, p = 0.6). The only factors that predicted influence (higher PageRank) were the number of tweets authored (p < 0.0001) and number of tweets amplified (p < 0.0001) The status of "faculty member" did not confer a greater influence. Any participant who was able to author the greatest number of tweets or have more of his/her tweets amplified could wield a greater influence on the participants, regardless of his/her authority.

摘要

医学协会、教员和实习生利用推特向其他社交媒体用户学习并进行教育。这些社交媒体社区汇聚了经验水平各异的个人。目前尚不清楚经验丰富的个人是否也是最具影响力的成员。我们假设经验最丰富的参与者将是推特社区中最具影响力的成员。我们分析了2013年内科项目主任协会的推特社区。我们统计了每位参与者发布的推文数量以及被转发的推文数量(转发)。我们建立了一个多元线性回归模型,以确定与通过网页排名衡量的社交媒体影响力之间的任何关系。教员(来自学术机构)占学习社区132名参与者的19%(p<0.0001)。教员撰写了所有867条推文中的49%(p<0.0001)。他们的推文最有可能被转发(52%,p<0.01)。教员在所有参与者中影响力最大(平均1.99,p<0.0001)。作为教员对影响力没有预测作用(β = 0.068,p = 0.6)。预测影响力(更高的网页排名)的唯一因素是发布的推文数量(p<0.0001)和被转发的推文数量(p<0.0001)。“教员”身份并未赋予更大的影响力。任何能够发布最多推文或其推文被更多转发的参与者,无论其权限如何,都可能对其他参与者产生更大的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d9f2/4111123/37bd58a59091/f1000research-3-4585-g0000.jpg

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