首页 | 本学科首页   官方微博 | 高级检索  
检索        


Characterizing Sleep Issues Using Twitter
Authors:David J McIver  Jared B Hawkins  Rumi Chunara  Arnaub K Chatterjee  Aman Bhandari  Timothy P Fitzgerald  Sachin H Jain  John S Brownstein
Institution:1.Boston Children''s Hospital, Harvard Medical School, Boston, MA, United States;2.New York University, New York, NY, United States;3.Merck & Co, Inc, Boston, MA, United States;4.Merck & Co, Inc, West Point, PA, United States;5.CareMore Health System, Cerritos, CA, United States
Abstract:

Background

Sleep issues such as insomnia affect over 50 million Americans and can lead to serious health problems, including depression and obesity, and can increase risk of injury. Social media platforms such as Twitter offer exciting potential for their use in studying and identifying both diseases and social phenomenon.

Objective

Our aim was to determine whether social media can be used as a method to conduct research focusing on sleep issues.

Methods

Twitter posts were collected and curated to determine whether a user exhibited signs of sleep issues based on the presence of several keywords in tweets such as insomnia, “can’t sleep”, Ambien, and others. Users whose tweets contain any of the keywords were designated as having self-identified sleep issues (sleep group). Users who did not have self-identified sleep issues (non-sleep group) were selected from tweets that did not contain pre-defined words or phrases used as a proxy for sleep issues.

Results

User data such as number of tweets, friends, followers, and location were collected, as well as the time and date of tweets. Additionally, the sentiment of each tweet and average sentiment of each user were determined to investigate differences between non-sleep and sleep groups. It was found that sleep group users were significantly less active on Twitter (P=.04), had fewer friends (P<.001), and fewer followers (P<.001) compared to others, after adjusting for the length of time each user''s account has been active. Sleep group users were more active during typical sleeping hours than others, which may suggest they were having difficulty sleeping. Sleep group users also had significantly lower sentiment in their tweets (P<.001), indicating a possible relationship between sleep and pyschosocial issues.

Conclusions

We have demonstrated a novel method for studying sleep issues that allows for fast, cost-effective, and customizable data to be gathered.
Keywords:sleep issues  social media  insomnia  novel methods  sentiment  depression
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号