电子健康
模糊认知图
计算机科学
模糊逻辑
互联网
认知
组分(热力学)
心理干预
决策支持系统
干预(咨询)
服务(商务)
人工智能
数据挖掘
机器学习
人机交互
医疗保健
模糊控制系统
心理学
万维网
护理部
医学
模糊分类
精神科
经济
经济
热力学
经济增长
物理
作者
Lena Brandl,Lex van Velsen,Jeannette Brodbeck,Sofia Jacinto,Dennis Hofs,Dirk Heylen
标识
DOI:10.1177/20552076231183549
摘要
Objective Effective internet interventions often combine online self-help with regular professional guidance. In the absence of regularly scheduled contact with a professional, the internet intervention should refer users to professional human care if their condition deteriorates. The current article presents a monitoring module to recommend proactively seeking offline support in an eMental health service to aid older mourners. Method The module consists of two components: a user profile that collects relevant information about the user from the application, enabling the second component, a fuzzy cognitive map (FCM) decision-making algorithm that detects risk situations and to recommend the user to seek offline support, whenever advisable. In this article, we show how we configured the FCM with the help of eight clinical psychologists and we investigate the utility of the resulting decision tool using four fictitious scenarios. Results The current FCM algorithm succeeds in detecting unambiguous risk situations, as well as unambiguously safe situations, but it has more difficulty classifying borderline cases correctly. Based on recommendations from the participants and an analysis of the algorithm's erroneous classifications, we propose how the current FCM algorithm can be further improved. Conclusion The configuration of FCMs does not necessarily demand large amounts of privacy-sensitive data and their decisions are scrutable. Thus, they hold great potential for automatic decision-making algorithms in mental eHealth. Nevertheless, we conclude that there is a need for clear guidelines and best practices for developing FCMs, specifically for eMental health.
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