College of Medicine, Mohammed Bin Rashid University of Medicine and Health Sciences, Dubai, United Arab Emirates.
McMaster University, Hamilton, ON, Canada.
Front Public Health. 2022 Jul 1;10:856571. doi: 10.3389/fpubh.2022.856571. eCollection 2022.
Artificial intelligence (AI) has the potential to reshape medical practice and the delivery of healthcare. Online discussions surrounding AI's utility in these domains are increasingly emerging, likely due to considerable interest from healthcare practitioners, medical technology developers, and other relevant stakeholders. However, many practitioners and medical students report limited understanding and familiarity with AI.
To promote research, events, and resources at the intersection of AI and medicine for the online medical community, we created a Twitter-based campaign using the hashtag #MedTwitterAI.
In the present study, we analyze the use of #MedTwitterAI by tracking tweets containing this hashtag posted from 26th March, 2019 to 26th March, 2021, using the Symplur Signals hashtag analytics tool. The full text of all #MedTwitterAI tweets was also extracted and subjected to a natural language processing analysis.
Over this time period, we identified 7,441 tweets containing #MedTwitterAI, posted by 1,519 unique Twitter users which generated 59,455,569 impressions. The most common identifiable locations for users including this hashtag in tweets were the United States (378/1,519), the United Kingdom (80/1,519), Canada (65/1,519), India (46/1,519), Spain (29/1,519), France (24/1,519), Italy (16/1,519), Australia (16/1,519), Germany (16/1,519), and Brazil (15/1,519). Tweets were frequently enhanced with links (80.2%), mentions of other accounts (93.9%), and photos (56.6%). The five most abundant single words were AI (artificial intelligence), patients, medicine, data, and learning. Sentiment analysis revealed an overall majority of positive single word sentiments (e.g., intelligence, improve) with 230 positive and 172 negative sentiments with a total of 658 and 342 mentions of all positive and negative sentiments, respectively. Most frequently mentioned negative sentiments were cancer, risk, and bias. Most common bigrams identified by Markov chain depiction were related to analytical methods (e.g., label-free detection) and medical conditions/biological processes (e.g., rare circulating tumor cells).
These results demonstrate the generated considerable interest of using #MedTwitterAI for promoting relevant content and engaging a broad and geographically diverse audience. The use of hashtags in Twitter-based campaigns can be an effective tool to raise awareness of interdisciplinary fields and enable knowledge-sharing on a global scale.
人工智能(AI)有可能重塑医学实践和医疗保健的提供方式。围绕 AI 在这些领域的应用的在线讨论越来越多,这可能是由于医疗保健从业者、医疗技术开发者和其他相关利益相关者的浓厚兴趣。然而,许多从业者和医学生报告称对 AI 的理解和熟悉程度有限。
为了促进 AI 和医学交叉领域的研究、活动和资源,我们创建了一个基于 Twitter 的活动,使用了#MedTwitterAI 标签。
在本研究中,我们使用 Symplur Signals 标签分析工具跟踪了 2019 年 3 月 26 日至 2021 年 3 月 26 日期间发布的包含此标签的推文,分析了#MedTwitterAI 的使用情况。还提取了所有#MedTwitterAI 推文的全文,并对其进行了自然语言处理分析。
在此期间,我们确定了 7441 条包含#MedTwitterAI 的推文,这些推文由 1519 个唯一的 Twitter 用户发布,共产生了 59455596 次印象。包括此标签的用户在推文中最常见的可识别位置是美国(378/1519)、英国(80/1519)、加拿大(65/1519)、印度(46/1519)、西班牙(29/1519)、法国(24/1519)、意大利(16/1519)、澳大利亚(16/1519)、德国(16/1519)和巴西(15/1519)。推文通常附有链接(80.2%)、提及其他账户(93.9%)和照片(56.6%)。最丰富的单字是 AI(人工智能)、patients(患者)、medicine(医学)、data(数据)和 learning(学习)。情感分析显示,大多数单字的情感都是积极的(如 intelligence(智能)、improve(改进)),共有 230 个积极情感和 172 个消极情感,分别有 658 次和 342 次提到所有积极和消极情感。最常提到的负面情绪是 cancer(癌症)、risk(风险)和 bias(偏见)。通过马尔可夫链描述识别出的最常见的双字与分析方法(如无标记检测)和医疗状况/生物过程(如罕见循环肿瘤细胞)有关。
这些结果表明,#MedTwitterAI 在促进相关内容和吸引广泛且地理多样化的受众方面产生了相当大的兴趣。在基于 Twitter 的活动中使用标签可以成为提高跨学科领域意识和实现全球知识共享的有效工具。