Lee Jisan, Kim Jeongeun, Hong Yeong Joo, Piao Meihua, Byun Ahjung, Song Healim, Lee Hyeong Suk
Department of Nursing Science, College of Life & Health Sciences, Hoseo University, Asan, Korea.
College of Nursing, Seoul National University, Seoul, Korea.
Healthc Inform Res. 2019 Apr;25(2):99-105. doi: 10.4258/hir.2019.25.2.99. Epub 2019 Apr 30.
This study analyzed the health technology trends and sentiments of users using Twitter data in an attempt to examine the public's opinions and identify their needs.
Twitter data related to health technology, from January 2010 to October 2016, were collected. An ontology related to health technology was developed. Frequently occurring keywords were analyzed and visualized with the word cloud technique. The keywords were then reclassified and analyzed using the developed ontology and sentiment dictionary. Python and the R program were used for crawling, natural language processing, and sentiment analysis.
In the developed ontology, the keywords are divided into 'health technology' and 'health information'. Under health technology, there are are six subcategories, namely, health technology, wearable technology, biotechnology, mobile health, medical technology, and telemedicine. Under health information, there are four subcategories, namely, health information, privacy, clinical informatics, and consumer health informatics. The number of tweets about health technology has consistently increased since 2010; the number of posts in 2014 was double that in 2010, which was about 150 thousand posts. Posts about mHealth accounted for the majority, and the dominant words were 'care', 'new', 'mental', and 'fitness'. Sentiment analysis by subcategory showed that most of the posts in nearly all subcategories had a positive tone with a positive score.
Interests in mHealth have risen recently, and consequently, posts about mHealth were the most frequent. Examining social media users' responses to new health technology can be a useful method to understand the trends in rapidly evolving fields.
本研究分析了利用推特数据得出的健康技术趋势及用户观点,旨在探究公众意见并确定其需求。
收集了2010年1月至2016年10月与健康技术相关的推特数据。开发了一个与健康技术相关的本体。对频繁出现的关键词进行分析,并使用词云技术进行可视化展示。然后使用开发的本体和情感词典对关键词进行重新分类和分析。使用Python和R程序进行数据爬取、自然语言处理和情感分析。
在开发的本体中,关键词分为“健康技术”和“健康信息”。在健康技术之下,有六个子类别,即健康技术、可穿戴技术、生物技术、移动健康、医疗技术和远程医疗。在健康信息之下,有四个子类别,即健康信息、隐私、临床信息学和消费者健康信息学。自2010年以来,关于健康技术的推文数量持续增加;2014年的推文数量是2010年的两倍,2010年约为15万条推文。关于移动健康的推文占多数,主要词汇有“护理”“新的”“心理”和“健身”。按子类别进行的情感分析表明,几乎所有子类别中的大多数推文都具有积极的语气和积极的得分。
最近对移动健康的兴趣有所上升,因此,关于移动健康的推文最为频繁。研究社交媒体用户对新健康技术的反应可能是了解快速发展领域趋势的一种有用方法。