Uncovering Specific Navigation Patterns by Assessing User Engagement of People With Dementia and Family Caregivers With an Advance Care Planning Website: Quantitative Analysis of Web Log Data.

IF 4.8 Q1 GERIATRICS & GERONTOLOGY JMIR Aging Pub Date : 2025-02-11 DOI:10.2196/60652
Charlèss Dupont, Tinne Smets, Courtney Potts, Fanny Monnet, Lara Pivodic, Aline De Vleminck, Chantal Van Audenhove, Maurice Mulvenna, Lieve Van den Block
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Abstract

Background: Web-based tools have gained popularity to inform and empower individuals in advance care planning. We have developed an interactive website tailored to the unique needs of people with dementia and their families to support advance care planning. This website aims to break away from the rigid pathways shown in other tools that support advance care planning, in which advance care planning is shown as a linear process from information to reflection, communication, and documentation.

Objective: This study aimed to assess the website's usage by people with dementia and their family caregivers, identify distinct user engagement patterns, and visualize how users navigated the website.

Methods: We analyzed the website's log data obtained from an 8-week evaluation study of the site. Interactions with the website were collected in log data files and included visited web pages or clicked-on hyperlinks. Distinct user engagement patterns were identified using K-means clustering process mining, a technique that extracts insights from log data to model and visualize workflows, was applied to visualize user pathways through the website.

Results: A total of 52 participants, 21 individuals with dementia and their family caregivers as dyads and 10 family caregivers were included in the study. Throughout the 8-week study, users spent an average of 35.3 (SD 82.9) minutes over 5.5 (SD 3.4) unique days on the website. Family caregivers mostly used the website (alone or with a person with dementia) throughout the 8-week study. Only 3 people with dementia used it on their own. In total, 3 distinct engagement patterns emerged: low, moderate, and high. Low-engagement participants spent less time on the website during the 8 weeks, following a linear path from information to communication to documentation. Moderate- and high-engagement users showed more dynamic patterns, frequently navigating between information pages and communication tools to facilitate exploration of aspects related to advance care planning.

Conclusions: The diverse engagement patterns underscore the need for personalized support in advance care planning and challenge the conventional linear advance care planning representations found in other web-based tools.

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通过评估痴呆症患者和家庭护理人员的用户参与,发现特定的导航模式:网络日志数据的定量分析。
背景:基于网络的工具已经获得普及,告知和授权个人提前护理计划。我们开发了一个互动网站,为痴呆症患者及其家人的独特需求量身定制,以支持提前护理计划。本网站旨在摆脱其他支持预先护理计划的工具所显示的僵化路径,在这些工具中,预先护理计划显示为从信息到反思、沟通和文档的线性过程。目的:本研究旨在评估痴呆症患者及其家庭护理人员对网站的使用情况,确定不同的用户参与模式,并可视化用户如何浏览网站。方法:我们分析了该网站的日志数据,这些数据来自该网站为期8周的评估研究。与网站的互动被收集在日志数据文件中,包括访问过的网页或点击过的超链接。使用K-means聚类过程挖掘确定了不同的用户参与模式,这是一种从日志数据中提取见解以建模和可视化工作流的技术,用于可视化用户通过网站的路径。结果:共有52名参与者,21名痴呆症患者及其家庭照顾者作为二人组,10名家庭照顾者被纳入研究。在为期8周的研究中,用户在网站上平均花费35.3分钟(SD 82.9),超过5.5天(SD 3.4)。在为期8周的研究中,家庭护理人员大多使用该网站(单独或与痴呆症患者一起)。只有3名痴呆症患者自己使用它。总共出现了3种不同的用户粘性模式:低、中等和高。低参与度的参与者在8周内花在网站上的时间更少,遵循从信息到交流再到文档的线性路径。中度和高度参与的用户表现出更多的动态模式,他们经常在信息页面和通信工具之间导航,以促进对预先护理计划相关方面的探索。结论:不同的参与模式强调了在预先护理计划中需要个性化的支持,并挑战了其他基于网络的工具中发现的传统线性预先护理计划表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Aging
JMIR Aging Social Sciences-Health (social science)
CiteScore
6.50
自引率
4.10%
发文量
71
审稿时长
12 weeks
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