Impact of artificial intelligence on clinical radiography practice: Futuristic prospects in a low resource setting
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Radiography
Abstract
Objectives: Current trends in clinical radiography practice include the integration of artificial intelligence
(AI) and related applications to improve patient care and enhance research. However, in low resource
countries there are unique barriers to the process of AI integration. Using Ghana as a case study, this
paper seeks to discuss the potential impact of AI on future radiographic practice in low-resource settings.
The opportunities, challenges and the way forward to optimise the potential benefits of AI in future
practice within these settings have been explored.
Key findings: Some of the barriers to AI integration into radiographic practice relate to lack of regulatory
and legal policy frameworks and limited resource availability including unreliable internet connectivity
and low expert skillset.
Conclusion: These barriers notwithstanding, AI presents a great potential to the growth of medical imaging
and subsequently improving quality of healthcare delivery in the near future. For example, AIenabled
radiographer reporting has a potential to improving quality of healthcare, especially in lowresource
settings like Ghana with an acute shortage of radiologists. In addition, futuristic AI-enabled
advancements such as synthetic cross-modality transfer where images from one modality are used as a
baseline to generate a corresponding image of another modality without the need for additional scanning
will be of particular benefit in low-resource settings.
Implications for practice: The urgent need for inclusion of AI modules for the training of the radiographer
of the future has been suggested. Recommendations for development of AI strategies by national societies
and regulatory bodies will harmonise the implementation efforts. Finally, there is need for
collaboration between clinical practitioners and academia to ensure that the future radiography workforce
is well prepared for the AI-enabled clinical environment.
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Research Article