CT slice alignment to whole-body reference geometry by convolutional neural network.
Price JacksonJames KorteLachlan McIntoshTomas KronJason EllulJason LiNicholas HardcastlePublished in: Physical and engineering sciences in medicine (2021)
Volumetric medical imaging lacks a standardised coordinate geometry which links image frame-of-reference to specific anatomical regions. This results in an inability to locate anatomy in medical images without visual assessment and precludes a variety of image analysis tasks which could benefit from a standardised, machine-readable coordinate system. In this work, a proposed geometric system that scales based on patient size is described and applied to a variety of cases in computed tomography imaging. Subsequently, a convolutional neural network is trained to associate axial slice CT image appearance with the standardised coordinate value along the patient superior-inferior axis. The trained neural network showed an accuracy of ± 12 mm in the ability to predict per-slice reference location and was relatively stable across all annotated regions ranging from brain to thighs. A version of the trained model along with scripts to perform network training in other applications are made available. Finally, a selection of potential use applications are illustrated including organ localisation, image registration initialisation, and scan length determination for auditing diagnostic reference levels.
Keyphrases
- convolutional neural network
- deep learning
- computed tomography
- image quality
- dual energy
- neural network
- positron emission tomography
- resistance training
- high resolution
- healthcare
- contrast enhanced
- case report
- machine learning
- magnetic resonance imaging
- working memory
- white matter
- risk assessment
- body composition
- molecularly imprinted
- blood brain barrier
- high intensity
- fluorescence imaging
- cerebral ischemia