Using artificial intelligence to improve pain assessment and pain management: a scoping review

Author:

Zhang Meina1,Zhu Linzee1,Lin Shih-Yin2ORCID,Herr Keela1,Chi Chih-Lin3,Demir Ibrahim4,Dunn Lopez Karen1,Chi Nai-Ching1

Affiliation:

1. College of Nursing, University of Iowa , Iowa City, Iowa, USA

2. Rory Meyers College of Nursing, New York University , New York, New York, USA

3. School of Nursing, University of Minnesota , Minneapolis, Minnesota, USA

4. College of Engineering, University of Iowa , Iowa City, Iowa, USA

Abstract

AbstractContextOver 20% of US adults report they experience pain on most days or every day. Uncontrolled pain has led to increased healthcare utilization, hospitalization, emergency visits, and financial burden. Recognizing, assessing, understanding, and treating pain using artificial intelligence (AI) approaches may improve patient outcomes and healthcare resource utilization. A comprehensive synthesis of the current use and outcomes of AI-based interventions focused on pain assessment and management will guide the development of future research.ObjectivesThis review aims to investigate the state of the research on AI-based interventions designed to improve pain assessment and management for adult patients. We also ascertain the actual outcomes of Al-based interventions for adult patients.MethodsThe electronic databases searched include Web of Science, CINAHL, PsycINFO, Cochrane CENTRAL, Scopus, IEEE Xplore, and ACM Digital Library. The search initially identified 6946 studies. After screening, 30 studies met the inclusion criteria. The Critical Appraisals Skills Programme was used to assess study quality.ResultsThis review provides evidence that machine learning, data mining, and natural language processing were used to improve efficient pain recognition and pain assessment, analyze self-reported pain data, predict pain, and help clinicians and patients to manage chronic pain more effectively.ConclusionsFindings from this review suggest that using AI-based interventions has a positive effect on pain recognition, pain prediction, and pain self-management; however, most reports are only pilot studies. More pilot studies with physiological pain measures are required before these approaches are ready for large clinical trial.

Funder

NINR

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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