University of Pittsburgh researchers have developed a novel respiratory motion prediction (RMP) algorithm to enhance MRI imaging accuracy. This technology addresses the challenge of physiological motion, particularly in the thorax and abdomen, which is a major source of quantitative error in structural and functional imaging. The RMP algorithm can precisely deduce the position of the imaging volume of interest during image acquisition, extending the acquisition range from a single slice to the entire volume of interest. This innovation has the potential to revolutionize MRI imaging and radiotherapy by providing more accurate and efficient motion correction.
Description
The RMP algorithm is designed to predict and correct respiratory motion in real-time during MRI scans. It integrates with both prospective and retrospective motion correction techniques to synchronize the slice excitation with the organ position. The technology is particularly useful for pulse sequences with long repetition times (TRs), such as arterial spin labeling (ASL) sequences, which are sensitive to motion. The RMP algorithm employs a combination of deterministic and stochastic prediction models to enhance the accuracy and efficiency of motion correction.
Applications
• MRI imaging
• Radiotherapy
• Renal perfusion studies
• Functional MRI (fMRI)
• Cardiac imaging
Advantages
The RMP technology offers a long prediction window (up to 1 second) for slice acquisition, eliminating the need for breathholds and significantly reducing acquisition deadtime. It provides high accuracy (1 mm) and is suitable for long TR sequences and sequences with natural pauses. Additionally, the automated prediction algorithm reduces operator workload, making it an efficient and user-friendly solution for motion correction in MRI imaging.
Invention Readiness
The RMP technology has been developed and tested in various MRI applications, demonstrating its effectiveness in reducing motion artifacts and improving image quality. The software is ready for integration into commercial MRI systems and has potential applications in both clinical and research settings.