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Reducing Patient Loneliness With Artificial Agents: Design Insights From Evolutionary Neuropsychiatry

Kate Loveys, Gregory L. Fricchione, Kavitha Kolappa, Mark Sagar, Elizabeth Broadbent

Year
2019
Citations
50
Access
Open access

Abstract

Loneliness is a growing public health issue that substantially increases the risk of morbidity and mortality. Artificial agents, such as robots, embodied conversational agents, and chatbots, present an innovation in care delivery and have been shown to reduce patient loneliness by providing social support. However, similar to doctor and patient relationships, the quality of a patient's relationship with an artificial agent can impact support effectiveness as well as care engagement. Incorporating mammalian attachment-building behavior in neural network processing as part of an agent's capabilities may improve relationship quality and engagement between patients and artificial agents. We encourage developers of artificial agents intended to relieve patient loneliness to incorporate design insights from evolutionary neuropsychiatry.

Keywords

LonelinessNeuropsychiatryEmbodied cognitionPsychologyQuality (philosophy)Artificial intelligenceComputer sciencePsychiatry

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