A comparison of performance between a deep learning model with residents for localization and classification of intracranial hemorrhage.
Salita AngkurawaranonNonn SanorsiengKittisak UnsrisongPapangkorn InkeawPatumrat SripanPiyapong KhumrinChaisiri AngkurawaranonTanat VaniyapongImjai ChitapanaruxPublished in: Scientific reports (2023)
Intracranial hemorrhage (ICH) from traumatic brain injury (TBI) requires prompt radiological investigation and recognition by physicians. Computed tomography (CT) scanning is the investigation of choice for TBI and has become increasingly utilized under the shortage of trained radiology personnel. It is anticipated that deep learning models will be a promising solution for the generation of timely and accurate radiology reports. Our study examines the diagnostic performance of a deep learning model and compares the performance of that with detection, localization and classification of traumatic ICHs involving radiology, emergency medicine, and neurosurgery residents. Our results demonstrate that the high level of accuracy achieved by the deep learning model, (0.89), outperforms the residents with regard to sensitivity (0.82) but still lacks behind in specificity (0.90). Overall, our study suggests that the deep learning model may serve as a potential screening tool aiding the interpretation of head CT scans among traumatic brain injury patients.
Keyphrases
- deep learning
- traumatic brain injury
- artificial intelligence
- computed tomography
- convolutional neural network
- machine learning
- contrast enhanced
- end stage renal disease
- magnetic resonance imaging
- image quality
- primary care
- emergency medicine
- newly diagnosed
- peritoneal dialysis
- mass spectrometry
- optic nerve
- ejection fraction
- emergency department
- body composition
- mild traumatic brain injury
- climate change