Bern University of Applied Sciences, Biel, Switzerland.
Harz University of Applied Sciences, Wernigerode, Germany.
J Med Internet Res. 2023 Jan 30;25:e41583. doi: 10.2196/41583.
The evolution of artificial intelligence and natural language processing generates new opportunities for conversational agents (CAs) that communicate and interact with individuals. In the health domain, CAs became popular as they allow for simulating the real-life experience in a health care setting, which is the conversation with a physician. However, it is still unclear which technical archetypes of health CAs can be distinguished. Such technical archetypes are required, among other things, for harmonizing evaluation metrics or describing the landscape of health CAs.
The objective of this work was to develop a technical-oriented taxonomy for health CAs and characterize archetypes of health CAs based on their technical characteristics.
We developed a taxonomy of technical characteristics for health CAs based on scientific literature and empirical data and by applying a taxonomy development framework. To demonstrate the applicability of the taxonomy, we analyzed the landscape of health CAs of the last years based on a literature review. To form technical design archetypes of health CAs, we applied a k-means clustering method.
Our taxonomy comprises 18 unique dimensions corresponding to 4 perspectives of technical characteristics (setting, data processing, interaction, and agent appearance). Each dimension consists of 2 to 5 characteristics. The taxonomy was validated based on 173 unique health CAs that were identified out of 1671 initially retrieved publications. The 173 CAs were clustered into 4 distinctive archetypes: a text-based ad hoc supporter; a multilingual, hybrid ad hoc supporter; a hybrid, single-language temporary advisor; and, finally, an embodied temporary advisor, rule based with hybrid input and output options.
From the cluster analysis, we learned that the time dimension is important from a technical perspective to distinguish health CA archetypes. Moreover, we were able to identify additional distinctive, dominant characteristics that are relevant when evaluating health-related CAs (eg, input and output options or the complexity of the CA personality). Our archetypes reflect the current landscape of health CAs, which is characterized by rule based, simple systems in terms of CA personality and interaction. With an increase in research interest in this field, we expect that more complex systems will arise. The archetype-building process should be repeated after some time to check whether new design archetypes emerge.
人工智能和自然语言处理的发展为能够与个人进行沟通和互动的对话代理(CA)带来了新的机遇。在医疗领域,CA 变得很流行,因为它们可以模拟医疗环境中的真实体验,即与医生的对话。然而,目前仍不清楚可以区分哪些技术原型的健康 CA。除其他外,需要这种技术原型来协调评估指标或描述健康 CA 的现状。
本研究的目的是为健康 CA 开发面向技术的分类法,并根据其技术特点对健康 CA 的原型进行特征描述。
我们基于科学文献和实证数据,采用分类法开发框架,开发了健康 CA 的技术特征分类法。为了演示该分类法的适用性,我们根据文献综述分析了近年来健康 CA 的现状。为了形成健康 CA 的技术设计原型,我们应用了 k-均值聚类方法。
我们的分类法包括 18 个独特的维度,对应于技术特征的 4 个视角(设置、数据处理、交互和代理外观)。每个维度包含 2 到 5 个特征。该分类法基于从 1671 篇最初检索的文献中识别出的 173 个独特的健康 CA 进行了验证。这 173 个 CA 被聚类为 4 个不同的原型:基于文本的临时支持者;多语言混合临时支持者;混合单语言临时顾问;以及最后,基于规则的混合输入和输出选项的实体临时顾问。
从聚类分析中,我们了解到从技术角度来看,时间维度对于区分健康 CA 原型很重要。此外,我们还能够识别出在评估与健康相关的 CA 时相关的其他独特的主导特征(例如输入和输出选项或 CA 个性的复杂性)。我们的原型反映了当前健康 CA 的现状,其特点是 CA 个性和交互方面基于规则的简单系统。随着该领域研究兴趣的增加,我们预计将出现更复杂的系统。应该在一段时间后重复原型构建过程,以检查是否出现新的设计原型。