Artificial intelligence for detecting traumatic intracranial haemorrhage with CT: A workflow-oriented implementation

Neuroradiol J. 2025 Jun 3:19714009251346477. doi: 10.1177/19714009251346477. Online ahead of print.

Abstract

The objective of this study was to assess the performance of an artificial intelligence (AI) algorithm in detecting intracranial haemorrhages (ICHs) on non-contrast CT scans (NCCT). Another objective was to gauge the department's acceptance of said algorithm. Surveys conducted at three and nine months post-implementation revealed an increase in radiologists' acceptance of the AI tool with an increasing performance. However, a significant portion still preferred an additional physician given comparable cost. Our findings emphasize the importance of careful software implementation into a robust IT architecture.

Keywords: Intracranial haemorrhage; deep learning and artificial intelligence.