Abstract
BackgroundDigital health interventions can fill gaps in mental healthcare provision. However, autonomous e-mental health (AEMH) systems also present challenges for effective risk management. To balance autonomy and safety, AEMH systems need to detect risk situations and act on these appropriately. One option is sending automatic alerts to carers, but such ‘auto-referral’ could lead to missed cases or false alerts. Requiring users to actively self-refer offers an alternative, but this can also be risky as it relies on their motivation to do so.This study set out with two objectives. Firstly, to develop guidelines for risk detection and auto-referral systems. Secondly, to understand how persuasive techniques, mediated by a virtual agent, can facilitate self-referral.MethodsIn a formative phase, interviews with experts, alongside a literature review, were used to develop a risk detection protocol. Two referral protocols were developed – one involving auto-referral, the other motivating users to self-refer. This latter was tested via crowd-sourcing (n = 160). Participants were asked to imagine they had sleeping problems with differing severity and user stance on seeking help. They then chatted with a virtual agent, who either directly facilitated referral, tried to persuade the user, or accepted that they did not want help. After the conversation, participants rated their intention to self-refer, to chat with the agent again, and their feeling of being heard by the agent.ResultsWhether the virtual agent facilitated, persuaded or accepted, influenced all of these measures. Users who were initially negative or doubtful about self-referral could be persuaded. For users who were initially positive about seeking human care, this persuasion did not affect their intentions, indicating that a simply facilitating referral without persuasion was sufficient.ConclusionThis paper presents a protocol that elucidates the steps and decisions involved in risk detection, something that is relevant for all types of AEMH systems. In the case of self-referral, our study shows that a virtual agent can increase users’ intention to self-refer. Moreover, the strategy of the agent influenced the intentions of the user afterwards. This highlights the importance of a personalised approach to promote the user’s access to appropriate care.
Highlights
Digital health interventions can fill gaps in mental healthcare provision
This resulted in three new protocols that describe risk detection and subsequent actions by autonomous emental health (AEMH) systems
Based on existing models of risk detection, theoretical models from behaviour change and expert interviews, these proposed models provide a base for designing risk detection in AEMH systems
Summary
Autonomous emental health (AEMH) systems present challenges for effective risk management. As the gap between patient need and workforce availability increases, autonomous digital systems are set to gain a more prominent role. While autonomous e-mental health (AEMH) systems offer unique opportunities to support patients, they come with practical and ethical challenges, around the outsourcing of patient oversight to computer algorithms. Several factors contribute to these high numbers, such as the cost of health care, the availability of therapy and the accessibility [2]. Another important issue is the stigma associated with mental ill-health, which often stops people from seeking appropriate support [3]. AEMH’s offer these advantages for comparatively low cost [4]
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