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在资源有限的环境中划分临床医生对数字健康工具的使用模式:点击流数据分析与调查研究。

Segmenting Clinicians' Usage Patterns of a Digital Health Tool in Resource-Limited Settings: Clickstream Data Analysis and Survey Study.

作者信息

Miller Kate, Rosenberg Julie, Pickard Olivia, Hawrusik Rebecca, Karlage Ami, Weintraub Rebecca

机构信息

Better Evidence, Ariadne Labs, Boston, MA, United States.

Department of Health Policy and Management, Harvard TH Chan School of Public Health, Boston, MA, United States.

出版信息

JMIR Form Res. 2022 May 9;6(5):e30320. doi: 10.2196/30320.

DOI:10.2196/30320
PMID:35532985
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9127647/
Abstract

BACKGROUND

Evidence-based digital health tools allow clinicians to keep up with the expanding medical literature and provide safer and more accurate care. Understanding users' online behavior in low-resource settings can inform programs that encourage the use of such tools. Our program collaborates with digital tool providers, including UpToDate, to facilitate free subscriptions for clinicians serving in low-resource settings globally.

OBJECTIVE

We aimed to define segments of clinicians based on their usage patterns of UpToDate, describe the demographics of those segments, and relate the segments to self-reported professional climate measures.

METHODS

We collected 12 months of clickstream data (a record of users' clicks within the tool) as well as repeated surveys. We calculated the total number of sessions, time spent online, type of activity (navigating, reading, or account management), calendar period of use, percentage of days active online, and minutes of use per active day. We defined behavioral segments based on the distributions of these statistics and related them to survey data.

RESULTS

We enrolled 1681 clinicians from 75 countries over a 9-week period. We based the following five behavioral segments on the length and intensity of use: short-term, light users (420/1681, 25%); short-term, heavy users (252/1681, 15%); long-term, heavy users (403/1681, 24%); long-term, light users (370/1681, 22%); and never-users (252/1681, 15%). Users spent a median of 5 hours using the tool over the year. On days when users logged on, they spent a median of 4.4 minutes online and an average of 71% of their time reading medical content as opposed to navigating or managing their account. Over half (773/1432, 54%) of the users actively used the tool for 48 weeks or more during the 52-week study period. The distribution of segments varied by age, with lighter and less use among those aged 35 years or older compared to that among younger users. The speciality of medicine had the heaviest use, and emergency medicine had the lightest use. Segments varied strongly by geographic region. As for professional climate, most respondents (1429/1681, 85%) reported that clinicians in their area would view the use of a online tool positively, and compared to those who reported other views, these respondents were less likely to be never-users (286/1681, 17% vs 387/1681, 23%) and more likely to be long-term users (655/1681, 39% vs 370/1681, 22%).

CONCLUSIONS

We believe that these behavioral segments can help inform the implementation of digital health tools, identify users who may need assistance, tailor training and messaging for users, and support research on digital health efforts. Methods for combining clickstream data with demographic and survey data have the potential to inform global health implementation. Our forthcoming analysis will use these methods to better elucidate what drives digital health tool use.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/c0af95e0a7e0/formative_v6i5e30320_fig6.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/a29aaec81d38/formative_v6i5e30320_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/71164368b1f8/formative_v6i5e30320_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/491fb37039d4/formative_v6i5e30320_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/f68e0cde0204/formative_v6i5e30320_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/063b0fe16eda/formative_v6i5e30320_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/c0af95e0a7e0/formative_v6i5e30320_fig6.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/a29aaec81d38/formative_v6i5e30320_fig1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/71164368b1f8/formative_v6i5e30320_fig2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/491fb37039d4/formative_v6i5e30320_fig3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/f68e0cde0204/formative_v6i5e30320_fig4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/063b0fe16eda/formative_v6i5e30320_fig5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/acf8/9127647/c0af95e0a7e0/formative_v6i5e30320_fig6.jpg
摘要

背景

基于证据的数字健康工具使临床医生能够跟上不断扩展的医学文献,并提供更安全、更准确的护理。了解低资源环境下用户的在线行为可为鼓励使用此类工具的项目提供参考。我们的项目与包括UpToDate在内的数字工具提供商合作,为全球低资源环境中的临床医生提供免费订阅服务。

目的

我们旨在根据临床医生对UpToDate的使用模式来划分群体,描述这些群体的人口统计学特征,并将这些群体与自我报告的专业环境指标联系起来。

方法

我们收集了12个月的点击流数据(工具内用户点击的记录)以及重复调查。我们计算了会话总数、在线时长、活动类型(浏览、阅读或账户管理)、使用的日历时间段、在线活跃天数的百分比以及每个活跃日的使用分钟数。我们根据这些统计数据的分布定义了行为群体,并将其与调查数据相关联。

结果

在9周时间内,我们招募了来自75个国家的1681名临床医生。我们根据使用时长和强度划分了以下五个行为群体:短期轻度用户(420/1681,25%);短期重度用户(252/1681,15%);长期重度用户(403/1681,24%);长期轻度用户(370/1681,22%);以及从未使用过的用户(252/1681,15%)。用户一年使用该工具的时长中位数为5小时。在用户登录的日子里,他们在线时长的中位数为4.4分钟,平均71%的时间用于阅读医学内容,而非浏览或管理账户。在为期52周的研究期间,超过一半(773/1432,54%)的用户积极使用该工具达48周或更长时间。群体分布因年龄而异,35岁及以上的用户使用频率较低且使用时间较短,相比之下年轻用户使用情况更佳。医学专业的使用频率最高,而急诊医学专业的使用频率最低。群体在地理区域上差异很大。至于专业环境,大多数受访者(1429/1681,85%)表示他们所在地区的临床医生会对在线工具的使用持积极态度,与那些持其他观点的受访者相比,这些受访者成为从未使用过该工具的用户的可能性较小(286/1681,17%对387/1681,23%),而成为长期用户的可能性更大(655/1681,39%对370/168那么1,22%)。

结论

我们认为这些行为群体有助于为数字健康工具的实施提供参考,识别可能需要帮助的用户,为用户量身定制培训和信息,并支持数字健康工作的研究。将点击流数据与人口统计学和调查数据相结合的方法有可能为全球健康实施提供参考。我们即将进行的分析将使用这些方法来更好地阐明推动数字健康工具使用的因素。

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2
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