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KIWI 中的用户评分活动:一种用于公共卫生事件监测和早期预警信号检测的技术。

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

作者信息

Andres Ellie, Mukhi Shamir

机构信息

Canadian Network for Public Health Intelligence, National Microbiology Laboratory, Winnipeg, MB.

出版信息

Online J Public Health Inform. 2018 Sep 21;10(2):e205. doi: 10.5210/ojphi.v10i2.8547. eCollection 2018.

Abstract

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.

摘要

目标

通过回答以下问题,回顾加拿大公共卫生情报网络(CNPHI)利用基于网络的情报(KIWI)技术进行知识整合时的用户信号评级活动:(1)谁在评级,(2)用户如何评级,以及(3)用户评级的效果如何?

方法

从CNPHI平台提取KIWI评级数据。纳入2016年1月1日至2017年12月31日期间首次评级的人畜共患病和新发疾病项目信号。使用克里彭多夫阿尔法系数估计用户之间的评分者间信度。使用z检验确定用户是否倾向于在平均社区评级的95%置信区间内(相对于区间外)进行评级。

结果

对信号进行评级的37名用户代表20个组织。27.0%(n = 10)的用户对所有评级信号的≥10%进行了评级,他们的评分者间信度估计为72.4%(95%置信区间:66.5 - 77.9%)。五名用户倾向于在平均社区评级范围之外进行显著评级。平均而言,用户在信号的95%置信区间内评级的时间占58.4%。所有在平均社区评级范围内进行显著评级的用户至少有一次在95%置信区间之外进行评级。

讨论

不同的评级者群体参与了信号评级。克里彭多夫阿尔法系数估计显示,对≥10%信号进行评级的用户具有中等信度。观察到信号评级经验较多的用户评分者间信度有所提高。

结论

观察到用户评级之间存在差异。据推测,评级差异受用户专业知识和经验差异的影响,并且用户在信号的95%置信区间内和区间外评级的次数可作为用户专业知识的替代指标。在KIWI中引入考虑到这一点的加权评级算法可能会有帮助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9d23/6194104/d7240f8f62a7/ojphi-10-e205-g001.jpg

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