Overcoming Barriers to Implementation of Artificial Intelligence in Gastroenterology

Author(s):  
Richard A. Sutton ◽  
Prateek Sharma
2020 ◽  
Vol 30 (7) ◽  
pp. 934-945
Author(s):  
Addison Gearhart ◽  
Sharib Gaffar ◽  
Anthony C. Chang

AbstractThe combination of pediatric cardiology being both a perceptual and a cognitive subspecialty demands a complex decision-making model which makes artificial intelligence a particularly attractive technology with great potential. The prototypical artificial intelligence system would autonomously impute patient data into a collaborative database that stores, syncs, interprets and ultimately classifies the patient’s profile to specific disease phenotypes to compare against a large aggregate of shared peer health data and outcomes, the current medical body of literature and ongoing trials to offer morbidity and mortality prediction, drug therapy options targeted to each patient’s genetic profile, tailored surgical plans and recommendations for timing of sequential imaging. The focus of this review paper is to offer a primer on artificial intelligence and paediatric cardiology by briefly discussing the history of artificial intelligence in medicine, modern and future applications in adult and paediatric cardiology across selected concentrations, and current barriers to implementation of these technologies.


2021 ◽  
Author(s):  
Kathleen Gray ◽  
John Slavotinek ◽  
Gerardo Dimaguila ◽  
Dawm Choo

BACKGROUND How to prepare the current and future health workforce for with the possibilities of using artificial intelligence (AI) in healthcare is a growing concern, as AI applications emerge in various care settings and specialisations. At present, there is no obvious consensus among educators about what needs to be learned, or how this learning may be supported or assessed. OBJECTIVE Our study aimed to explore healthcare educational experts’ ideas and plans for preparing the health workforce to work with AI, and identify critical gaps in curriculum and educational resources, across a national healthcare system. METHODS A survey canvassed expert views on AI education for the health workforce, in terms of educational strategies, subject matter priorities, meaningful learning activities, desired attitudes and skills. 39 senior people from different health workforce subgroups across Australia provided ratings and free-text responses, in late 2020. RESULTS Responses highlighted the importance of education about ethical implications, suitability of large datasets for use in AI clinical applications, principles of machine learning, specific diagnosis and treatment applications of AI, as well as alterations to cognitive load during clinical work and the interaction between human and machine in clinical settings. Respondents also outlined barriers to implementation, such as lack of governance structures and processes, resource constraints and cultural adjustment. CONCLUSIONS Further work, around the world, of the kind reported in this survey can assist educators and education authorities who are responsible for preparing the health workforce to minimise the risks and realise benefits from implementing AI in healthcare.


Author(s):  
David L. Poole ◽  
Alan K. Mackworth

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