Artificial intelligence: An eye cast towards the mental health nursing horizon

Author:

Wilson Rhonda L.12ORCID,Higgins Oliver1ORCID,Atem Jacob1ORCID,Donaldson Andrea E.2ORCID,Gildberg Frederik Alkier3ORCID,Hooper Mary1ORCID,Hopwood Mark1ORCID,Rosado Silvia4ORCID,Solomon Bernadette5ORCID,Ward Katrina1,Welsh Brandi1

Affiliation:

1. School of Nursing and Midwifery University of Newcastle Callaghan New South Wales Australia

2. School of Nursing Massey University Auckland New Zealand

3. University of Southern Denmark Odense Denmark

4. INAD‐Parc de Salut Mar Barcelona Spain

5. School of Nursing Manukau Institute of Technology Auckland New Zealand

Abstract

AbstractThere has been an international surge towards online, digital, and telehealth mental health services, further amplified during COVID‐19. Implementation and integration of technological innovations, including artificial intelligence (AI), have increased with the intention to improve clinical, governance, and administrative decision‐making. Mental health nurses (MHN) should consider the ramifications of these changes and reflect on their engagement with AI. It is time for mental health nurses to demonstrate leadership in the AI mental health discourse and to meaningfully advocate that safety and inclusion of end users' of mental health service interests are prioritized. To date, very little literature exists about this topic, revealing limited engagement by MHNs overall. The aim of this article is to provide an overview of AI in the mental health context and to stimulate discussion about the rapidity and trustworthiness of AI related to the MHN profession. Despite the pace of progress, and personal life experiences with AI, a lack of MHN leadership about AI exists. MHNs have a professional obligation to advocate for access and equity in health service distribution and provision, and this applies to digital and physical domains. Trustworthiness of AI supports access and equity, and for this reason, it is of concern to MHNs. MHN advocacy and leadership are required to ensure that misogynist, racist, discriminatory biases are not favoured in the development of decisional support systems and training sets that strengthens AI algorithms. The absence of MHNs in designing technological innovation is a risk related to the adequacy of the generation of services that are beneficial for vulnerable people such as tailored, precise, and streamlined mental healthcare provision. AI developers are interested to focus on person‐like solutions; however, collaborations with MHNs are required to ensure a person‐centred approach for future mental healthcare is not overlooked.

Publisher

Wiley

Subject

Pshychiatric Mental Health

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