Litcius/Paper detail

Artificial intelligence projects in healthcare: 10 practical tips for success in a clinical environment

Anthony Wilson, Haroon Saeed, Catherine Pringle, Iliada Eleftheriou, Paul A. Bromiley, Andy Brass

2021BMJ Health & Care Informatics29 citationsDOIOpen Access PDF

Abstract

There is much discussion concerning 'digital transformation' in healthcare and the potential of artificial intelligence (AI) in healthcare systems. Yet it remains rare to find AI solutions deployed in routine healthcare settings. This is in part due to the numerous challenges inherent in delivering an AI project in a clinical environment. In this article, several UK healthcare professionals and academics reflect on the challenges they have faced in building AI solutions using routinely collected healthcare data.These personal reflections are summarised as 10 practical tips. In our experience, these are essential considerations for an AI healthcare project to succeed. They are organised into four phases: conceptualisation, data management, AI application and clinical deployment. There is a focus on conceptualisation, reflecting our view that initial set-up is vital to success. We hope that our personal experiences will provide useful insights to others looking to improve patient care through optimal data use.

Topics & Concepts

Health careSoftware deploymentHealth professionalsSet (abstract data type)Knowledge managementComputer scienceData sciencePolitical scienceLawOperating systemProgramming languageArtificial Intelligence in Healthcare and EducationArtificial Intelligence in HealthcareMachine Learning in Healthcare