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Charting the potential of brain computed tomography deep learning systems

Quinlan D. Buchlak, Michael Milne, Jarrel Seah, Andrew Johnson, Gihan Samarasinghe, Ben Hachey, Nazanin Esmaili, Aengus Tran, Jean‐Christophe Leveque, Farrokh Farrokhi, Tony Goldschlager, Simon Edelstein, Peter Brotchie

2022Journal of Clinical Neuroscience31 citationsDOIOpen Access PDF

Abstract

Brain computed tomography (CTB) scans are widely used to evaluate intracranial pathology. The implementation and adoption of CTB has led to clinical improvements. However, interpretation errors occur and may have substantial morbidity and mortality implications for patients. Deep learning has shown promise for facilitating improved diagnostic accuracy and triage. This research charts the potential of deep learning applied to the analysis of CTB scans. It draws on the experience of practicing clinicians and technologists involved in development and implementation of deep learning-based clinical decision support systems. We consider the past, present and future of the CTB, along with limitations of existing systems as well as untapped beneficial use cases. Implementing deep learning CTB interpretation systems and effectively navigating development and implementation risks can deliver many benefits to clinicians and patients, ultimately improving efficiency and safety in healthcare.

Topics & Concepts

TriageMedicineDeep learningComputed tomographyNeuroimagingMedical physicsArtificial intelligenceData scienceRadiologyMedical emergencyComputer sciencePsychiatryArtificial Intelligence in Healthcare and EducationRadiology practices and educationMachine Learning in Healthcare
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