15 research outputs found
Spatiotemporal PET reconstruction using ML-EM with learned diffeomorphic deformation
Patient movement in emission tomography deteriorates reconstruction quality
because of motion blur. Gating the data improves the situation somewhat: each
gate contains a movement phase which is approximately stationary. A standard
method is to use only the data from a few gates, with little movement between
them. However, the corresponding loss of data entails an increase of noise.
Motion correction algorithms have been implemented to take into account all the
gated data, but they do not scale well, especially not in 3D. We propose a
novel motion correction algorithm which addresses the scalability issue. Our
approach is to combine an enhanced ML-EM algorithm with deep learning based
movement registration. The training is unsupervised, and with artificial data.
We expect this approach to scale very well to higher resolutions and to 3D, as
the overall cost of our algorithm is only marginally greater than that of a
standard ML-EM algorithm. We show that we can significantly decrease the noise
corresponding to a limited number of gates