Cui Licong, Carter Rebecca, Zhang Guo-Qiang
Department of Electrical Engineering and Computer Science, Division of Medical Informatics, Case Western Reserve University, Cleveland, OH, United States.
J Med Internet Res. 2014 Feb 10;16(2):e45. doi: 10.2196/jmir.3111.
Numerous consumer health information websites have been developed to provide consumers access to health information. However, lookup search is insufficient for consumers to take full advantage of these rich public information resources. Exploratory search is considered a promising complementary mechanism, but its efficacy has never before been rigorously evaluated for consumer health information retrieval interfaces.
This study aims to (1) introduce a novel Conjunctive Exploratory Navigation Interface (CENI) for supporting effective consumer health information retrieval and navigation, and (2) evaluate the effectiveness of CENI through a search-interface comparative evaluation using crowdsourcing with Amazon Mechanical Turk (AMT).
We collected over 60,000 consumer health questions from NetWellness, one of the first consumer health websites to provide high-quality health information. We designed and developed a novel conjunctive exploratory navigation interface to explore NetWellness health questions with health topics as dynamic and searchable menus. To investigate the effectiveness of CENI, we developed a second interface with keyword-based search only. A crowdsourcing comparative study was carefully designed to compare three search modes of interest: (A) the topic-navigation-based CENI, (B) the keyword-based lookup interface, and (C) either the most commonly available lookup search interface with Google, or the resident advanced search offered by NetWellness. To compare the effectiveness of the three search modes, 9 search tasks were designed with relevant health questions from NetWellness. Each task included a rating of difficulty level and questions for validating the quality of answers. Ninety anonymous and unique AMT workers were recruited as participants.
Repeated-measures ANOVA analysis of the data showed the search modes A, B, and C had statistically significant differences among their levels of difficulty (P<.001). Wilcoxon signed-rank test (one-tailed) between A and B showed that A was significantly easier than B (P<.001). Paired t tests (one-tailed) between A and C showed A was significantly easier than C (P<.001). Participant responses on the preferred search modes showed that 47.8% (43/90) participants preferred A, 25.6% (23/90) preferred B, 24.4% (22/90) preferred C. Participant comments on the preferred search modes indicated that CENI was easy to use, provided better organization of health questions by topics, allowed users to narrow down to the most relevant contents quickly, and supported the exploratory navigation by non-experts or those unsure how to initiate their search.
We presented a novel conjunctive exploratory navigation interface for consumer health information retrieval and navigation. Crowdsourcing permitted a carefully designed comparative search-interface evaluation to be completed in a timely and cost-effective manner with a relatively large number of participants recruited anonymously. Accounting for possible biases, our study has shown for the first time with crowdsourcing that the combination of exploratory navigation and lookup search is more effective than lookup search alone.
众多消费者健康信息网站已被开发出来,以便消费者获取健康信息。然而,查找搜索不足以让消费者充分利用这些丰富的公共信息资源。探索性搜索被认为是一种有前景的补充机制,但此前从未针对消费者健康信息检索界面严格评估过其效果。
本研究旨在(1)引入一种新颖的联合探索性导航界面(CENI),以支持有效的消费者健康信息检索与导航,以及(2)通过使用亚马逊土耳其机器人(AMT)众包进行搜索界面比较评估,来评估CENI的有效性。
我们从NetWellness收集了60000多个消费者健康问题,NetWellness是首批提供高质量健康信息的消费者健康网站之一。我们设计并开发了一种新颖的联合探索性导航界面,以健康主题作为动态且可搜索的菜单来探索NetWellness健康问题。为了研究CENI的有效性,我们开发了另一个仅基于关键词搜索的界面。精心设计了一项众包比较研究,以比较三种感兴趣的搜索模式:(A)基于主题导航的CENI,(B)基于关键词的查找界面,以及(C)谷歌最常用的查找搜索界面或NetWellness提供的常驻高级搜索界面。为了比较这三种搜索模式的有效性,设计了9个搜索任务,包含来自NetWellness的相关健康问题。每个任务都包括难度等级评分以及用于验证答案质量的问题。招募了90名匿名且不同的AMT工作者作为参与者。
对数据进行的重复测量方差分析表明,搜索模式A、B和C在难度水平上存在统计学显著差异(P<0.001)。A和B之间的Wilcoxon符号秩检验(单尾)表明,A比B显著更容易(P<0.001)。A和C之间的配对t检验(单尾)表明,A比C显著更容易(P<0.001)。参与者对首选搜索模式的回答显示,47.8%(43/90)的参与者更喜欢A,25.6%(23/90)更喜欢B,24.4%(22/90)更喜欢C。参与者对首选搜索模式的评论表明,CENI易于使用,按主题对健康问题进行了更好的组织,允许用户快速缩小到最相关的内容,并支持非专家或那些不确定如何开始搜索的人进行探索性导航。
我们提出了一种用于消费者健康信息检索与导航的新颖联合探索性导航界面。众包使得能够以相对大量匿名招募的参与者,及时且经济高效地完成精心设计的比较搜索界面评估。考虑到可能的偏差,我们的研究首次通过众包表明,探索性导航与查找搜索相结合比单独的查找搜索更有效。