基于刺激-参与对齐的健康相关主题在线信息搜寻的多模态分析:观察性可行性研究。

IF 5.8 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Szilvia Zörgő, Gjalt-Jorn Peters, Anna Jeney, Szilárd Dávid Kovács, Rik Crutzen
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引用次数: 0

摘要

背景:最近在线健康信息搜索的增加促使用户对遇到的内容进行广泛的评估。信息消费在很大程度上取决于所遇到的信息的质量和用户评估信息的能力;然而,在基于网络的有机搜索行为的背景下,很少有研究同时考虑到这两个方面。目的:我们旨在探索一种方法,将这两个方面结合起来,同时考虑刺激(网页内容)和用户(评估遇到内容的能力)。本研究以信息检索和评价领域的新手和专家为研究对象,展示了一种新的信息觅食理论研究方法:刺激-参与对齐(SEA)。方法:我们从信息检索和评估专家和新手中抽取样本,要求参与者进行10分钟的搜索任务,并设定特定的信息目标。我们采用观察性和回顾性的有声思考方案来收集访谈框架内的数据。来自3个流(think-aloud,人机交互和屏幕内容)的数据在Reproducible Open Coding Kit标准中手工编码,随后使用R包{rock}以表格格式进行对齐和表示。SEA分数来源于刺激数据流中特定数据段的指定代码共现,而非有声思考和人机交互数据流。结果:SEA分数代表了参与者所遇到的和他们所从事的有意义的比较。在特定的数据流中,将代码操作为“存在”或“不存在”使我们不仅可以检查参与者最频繁地使用哪些可信度线索,还可以检查参与者是否注意到线索的缺失。因此,代码共现频率可以指示对大小写、时间和上下文敏感的信息评估,这种评估也考虑到所遇到的信息的质量。结论:使用SEA使我们能够保留对刺激和参与的特殊表现的认知访问。此外,通过在参与者之间使用相同的编码方案和指定的共现,我们能够在我们的样本和子样本中精确定位趋势。我们相信我们的方法提供了一个强大的分析,涵盖了数据的广度和深度,两者在理解有机的、基于网络的搜索行为方面不相上下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multimodal Analysis of Online Information Foraging in Health-Related Topics Based on Stimulus-Engagement Alignment: Observational Feasibility Study.

Background: The recent increase in online health information-seeking has prompted extensive user appraisal of encountered content. Information consumption depends crucially on the quality of encountered information and the user's ability to evaluate it; yet, within the context of web-based, organic search behavior, few studies take into account both these aspects simultaneously.

Objective: We aimed to explore a method to bridge these two aspects and grant even consideration to both the stimulus (web page content) and the user (ability to appraise encountered content). We examined novices and experts in information retrieval and appraisal to demonstrate a novel approach to studying information foraging theory: stimulus-engagement alignment (SEA).

Methods: We sampled from experts and novices in information retrieval and assessment, asking participants to conduct a 10-minute search task with a specific information goal. We used an observational and a retrospective think-aloud protocol to collect data within the framework of an interview. Data from 3 streams (think-aloud, human-computer interaction, and screen content) were manually coded in the Reproducible Open Coding Kit standard and subsequently aligned and represented in a tabularized format with the R package {rock}. SEA scores were derived from designated code co-occurrences in specific segments of data within the stimulus data stream versus the think-aloud and human-computer interaction data streams.

Results: SEA scores represented a meaningful comparison of what participants encountered and what they engaged with. Operationalizing codes as either "present" or "absent" in a particular data stream allowed us to inspect not only which credibility cues participants engaged with with the most frequency, but also whether participants noticed the absence of cues. Code co-occurrence frequencies could thus indicate case-, time-, and context-sensitive information appraisal that also takes into account the quality of information encountered.

Conclusions: Using SEA allowed us to retain epistemic access to idiosyncratic manifestations of both stimuli and engagement. In addition, by using the same coding scheme and designated co-occurrences across participants, we were able to pinpoint trends within our sample and subsamples. We believe our approach offers a powerful analysis encompassing the breadth and depth of data, both on par with each other in the feat of understanding organic, web-based search behavior.

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来源期刊
CiteScore
14.40
自引率
5.40%
发文量
654
审稿时长
1 months
期刊介绍: The Journal of Medical Internet Research (JMIR) is a highly respected publication in the field of health informatics and health services. With a founding date in 1999, JMIR has been a pioneer in the field for over two decades. As a leader in the industry, the journal focuses on digital health, data science, health informatics, and emerging technologies for health, medicine, and biomedical research. It is recognized as a top publication in these disciplines, ranking in the first quartile (Q1) by Impact Factor. Notably, JMIR holds the prestigious position of being ranked #1 on Google Scholar within the "Medical Informatics" discipline.
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