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首页> 外文期刊>Journal of medical Internet research >Using Twitter to Examine Web-Based Patient Experience Sentiments in the United States: Longitudinal Study
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Using Twitter to Examine Web-Based Patient Experience Sentiments in the United States: Longitudinal Study

机译:使用Twitter检查美国基于Web的患者体验感:纵向研究

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BackgroundThere are documented differences in access to health care across the United States. Previous research indicates that Web-based data regarding patient experiences and opinions of health care are available from Twitter. Sentiment analyses of Twitter data can be used to examine differences in patient views of health care across the United States.ObjectiveThe objective of our study was to provide a characterization of patient experience sentiments across the United States on Twitter over a 4-year period.MethodsUsing data from Twitter, we developed a set of 4 software components to automatically label and examine a database of tweets discussing patient experience. The set includes a classifier to determine patient experience tweets, a geolocation inference engine for social data, a modified sentiment classifier, and an engine to determine if the tweet is from a metropolitan or nonmetropolitan area in the United States. Using the information retrieved, we conducted spatial and temporal examinations of tweet sentiments at national and regional levels. We examined trends in the time of the day and that of the week when tweets were posted. Statistical analyses were conducted to determine if any differences existed between the discussions of patient experience in metropolitan and nonmetropolitan areas.ResultsWe collected 27.3 million tweets between February 1, 2013 and February 28, 2017, using a set of patient experience-related keywords; the classifier was able to identify 2,759,257 tweets labeled as patient experience. We identified the approximate location of 31.76% (876,384/2,759,257) patient experience tweets using a geolocation classifier to conduct spatial analyses. At the national level, we observed 27.83% (243,903/876,384) positive patient experience tweets, 36.22% (317,445/876,384) neutral patient experience tweets, and 35.95% (315,036/876,384) negative patient experience tweets. There were slight differences in tweet sentiments across all regions of the United States during the 4-year study period. We found the average sentiment polarity shifted toward less negative over the study period across all the regions of the United States. We observed the sentiment of tweets to have a lower negative fraction during daytime hours, whereas the sentiment of tweets posted between 8 pm and 10 am had a higher negative fraction. Nationally, sentiment scores for tweets in metropolitan areas were found to be more extremely negative and mildly positive compared with tweets in nonmetropolitan areas. This result is statistically significant ( P <.001). Tweets with extremely negative sentiments had a medium effect size ( d =0.34) at the national level.ConclusionsThis study presents methodologies for a deeper understanding of Web-based discussion related to patient experience across space and time and demonstrates how Twitter can provide a unique and unsolicited perspective from users on the health care they receive in the United States.
机译:背景技术在美国,有记录的医疗保健服务存在差异。先前的研究表明,可以从Twitter获得有关患者经验和医疗保健观点的基于Web的数据。对Twitter数据的情感分析可用于检查美国各地患者对医疗保健看法的差异。目的我们的研究目的是对美国整个4年内Twitter上的患者体验情绪进行表征。根据Twitter的数据,我们开发了一套4个软件组件,以自动标记和检查讨论患者经验的推文数据库。该集合包括用于确定患者体验鸣叫的分类器,用于社交数据的地理位置推断引擎,经过修改的情感分类器以及用于确定鸣叫是否来自美国大城市或非大都市地区的引擎。利用检索到的信息,我们在国家和地区级别进行了推文情感的时空检查。我们检查了发布推文的当天和一周中的时间趋势。结果我们在2013年2月1日至2017年2月28日期间,使用一组与患者体验相关的关键字收集了2730万条推文,进行了统计分析以确定在大城市和非大都市地区的患者体验讨论之间是否存在差异。分类者能够识别出标记为患者经历的2,759,257条推文。我们使用地理位置分类器进行了空间分析,确定了31.76%(876,384 / 2,759,257)患者经验推文的大致位置。在国家一级,我们观察到27.83%(243,903 / 876,384)的患者体验推文为阳性,36.22%(317,445 / 876,384)中性患者的体验推文和35.95%(315,036 / 876,384)的患者体验为推文。在为期4年的研究期内,美国所有地区的推文情感均存在细微差异。我们发现,在整个研究期间,美国所有地区的平均情绪极性都向负面转移。我们在白天时段观察到推文的情绪具有较低的负面分数,而在晚上8点至上午10点之间发布的推文的情绪具有较高的负面分数。在全国范围内,与非大都市地区的推文相比,大都市地区的推文情感分数被发现更为极端和轻微。此结果具有统计意义(P <.001)。情绪极度消极的推文在全国范围内具有中等程度的影响力(d = 0.34)。结论这项研究提供了一种方法,可以更深入地了解与时空相关的患者体验相关的基于Web的讨论,并说明Twitter如何提供独特且用户在美国接受的医疗保健方面的主动要求。

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