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User rating activity within KIWI: A technology for public health event monitoring and early warning signal detection

机译:KIWI中的用户评级活动:公共卫生事件监控和预警信号检测技术

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Objectives: To review user signal rating activity within the Canadian Network for Public Health Intelligence’s (CNPHI’s) Knowledge Integration using Web-based Intelligence (KIWI) technology by answering the following questions: (1) who is rating, (2) how are users rating, and (3) how well are users rating? Methods: KIWI rating data was extracted from the CNPHI platform. Zoonotic & Emerging program signals with first rating occurring between January 1, 2016 and December 31, 2017 were included. Krippendorff’s alpha was used to estimate inter-rater reliability between users. A z-test was used to identify whether users tended to rate within 95% confidence interval (versus outside) the average community rating. Results: The 37 users who rated signals represented 20 organizations. 27.0% (n = 10) of users rated ≥10% of all rated signals, and their inter-rater reliability estimate was 72.4% (95% CI: 66.5-77.9%). Five users tended to rate significantly outside of the average community rating. An average user rated 58.4% of the time within the signal’s 95% CI. All users who significantly rated within the average community rating rated outside the 95% CI at least once. Discussion: A diverse community of raters participated in rating the signals. Krippendorff’s Alpha estimate revealed moderate reliability for users who rated ≥10% of signals. It was observed that inter-rater reliability increased for users with more experience rating signals. Conclusions: Diversity was observed between user ratings. It is hypothesized that rating diversity is influenced by differences in user expertise and experience, and that the number of times a user rates within and outside of a signal’s 95% CI can be used as a proxy for user expertise. The introduction of a weighted rating algorithm within KIWI that takes this into consideration could be beneficial.
机译:目标:通过回答以下问题,审查使用基于Web的情报(KIWI)技术的加拿大公共卫生情报(CNPHI)知识集成网络中的用户信号分级活动:(1)谁进行分级,(2)用户如何分级,以及(3)用户的评分如何?方法:从CNPHI平台提取KIWI评级数据。包括在2016年1月1日至2017年12月31日之间获得第一评级的人畜共患病和新兴计划信号。克里彭多夫(Krippendorff)的Alpha值用于评估用户之间的评分者间可靠性。使用Z检验来确定用户是否倾向于在平均社区评分的95%置信区间内(相对于外部)进行评分。结果:对信号进行评级的37位用户代表20个组织。 27.0%(n = 10)的用户对所有额定信号的评价≥10%,并且其评估者之间的可靠性估计为72.4%(95%CI:66.5-77.9%)。有5个用户的评分往往超出了社区的平均评分。在信号的95%置信区间内,平均用户对时间的评价为58.4%。所有在平均社区评分中获得显着评分的用户至少评分在95%CI之外。讨论:不同的评估者社区参与了对信号的评估。克里彭多夫(Krippendorff)的阿尔法(Alpha)评估显示,对于信号≥10%的用户,其可靠性中等。据观察,对于具有更多经验等级信号的用户,等级间可靠性提高了。结论:用户评级之间存在差异。据推测,评分多样性受用户专业知识和经验差异的影响,并且用户对信号的95%CI内外进行评分的次数可以用作用户专业知识的代理。考虑到这一点,在KIWI中引入加权评级算法可能是有益的。

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