Predictive cardiac motion modeling and correction with partial least squares regression
NA Ablitt, J Gao, J Keegan, L Stegger… - IEEE transactions on …, 2004 - ieeexplore.ieee.org
NA Ablitt, J Gao, J Keegan, L Stegger, DN Firmin, GZ Yang
IEEE transactions on medical imaging, 2004•ieeexplore.ieee.orgRespiratory-induced cardiac deformation is a major problem for high-resolution cardiac
imaging. This paper presents a new technique for predictive cardiac motion modeling and
correction, which uses partial least squares regression to extract intrinsic relationships
between three-dimensional (3-D) cardiac deformation due to respiration and multiple one-
dimensional real-time measurable surface intensity traces at chest or abdomen. Despite the
fact that these surface intensity traces can be strongly coupled with each other but poorly …
imaging. This paper presents a new technique for predictive cardiac motion modeling and
correction, which uses partial least squares regression to extract intrinsic relationships
between three-dimensional (3-D) cardiac deformation due to respiration and multiple one-
dimensional real-time measurable surface intensity traces at chest or abdomen. Despite the
fact that these surface intensity traces can be strongly coupled with each other but poorly …
Respiratory-induced cardiac deformation is a major problem for high-resolution cardiac imaging. This paper presents a new technique for predictive cardiac motion modeling and correction, which uses partial least squares regression to extract intrinsic relationships between three-dimensional (3-D) cardiac deformation due to respiration and multiple one-dimensional real-time measurable surface intensity traces at chest or abdomen. Despite the fact that these surface intensity traces can be strongly coupled with each other but poorly correlated with respiratory-induced cardiac deformation, we demonstrate how they can be used to accurately predict cardiac motion through the extraction of latent variables of both the input and output of the model. The proposed method allows cross-modality reconstruction of patient specific models for dense motion field prediction, which after initial modeling can be used for real-time prospective motion tracking or correction. Detailed numerical issues related to the technique are discussed and the effectiveness of the motion and deformation modeling is validated with 3-D magnetic resonance data sets acquired from ten asymptomatic subjects covering the entire respiratory range.
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