Task-driven source-detector trajectories in cone-beam computed tomography: I. Theory and methods.
J Webster StaymanSarah CapostagnoGrace Jianan GangJeffrey H SiewerdsenPublished in: Journal of medical imaging (Bellingham, Wash.) (2019)
We develop a mathematical framework for the design of orbital trajectories that are optimal to a particular imaging task (or tasks) in advanced cone-beam computed tomography systems that have the capability of general source-detector positioning. The framework allows various parameterizations of the orbit as well as constraints based on imaging system capabilities. To accommodate nonstandard system geometries, a model-based iterative reconstruction method is applied. Such algorithms generally complicate the assessment and prediction of reconstructed image properties; however, we leverage efficient implementations of analytical predictors of local noise and spatial resolution that incorporate dependencies of the reconstruction algorithm on patient anatomy, x-ray technique, and geometry. These image property predictors serve as inputs to a task-based performance metric defined by detectability index, which is optimized with respect to the orbital parameters of data acquisition. We investigate the framework of the task-driven trajectory design in several examples to examine the dependence of optimal source-detector trajectories on the imaging task (or tasks), including location and spatial-frequency dependence. A variety of multitask objectives are also investigated, and the advantages to imaging performance are quantified in simulation studies.
Keyphrases
- high resolution
- cone beam computed tomography
- deep learning
- machine learning
- depressive symptoms
- image quality
- working memory
- case report
- magnetic resonance imaging
- mass spectrometry
- air pollution
- electronic health record
- computed tomography
- liquid chromatography
- photodynamic therapy
- atomic force microscopy
- dual energy
- high speed