MRI Contrast Enhancement Kinetics World Model
Jindi Kong, Yuting He, Cong Xia, Rongjun Ge, Shuo Li

TL;DR
This paper introduces MRI CEKWorld, a novel world model for simulating contrast enhancement kinetics in MRI, addressing data sparsity and temporal discontinuities through spatial and temporal consistency learning.
Contribution
The paper proposes a new world model with SpatioTemporal Consistency Learning, including Latent Alignment and Difference Learning, to improve MRI contrast kinetics simulation.
Findings
Achieves more realistic content and kinetics in MRI simulations.
Outperforms existing models on two datasets.
Demonstrates effective handling of sparse and discontinuous data.
Abstract
Clinical MRI contrast acquisition suffers from inefficient information yield, which presents as a mismatch between the risky and costly acquisition protocol and the fixed and sparse acquisition sequence. Applying world models to simulate the contrast enhancement kinetics in the human body enables continuous contrast-free dynamics. However, the low temporal resolution in MRI acquisition restricts the training of world models, leading to a sparsely sampled dataset. Directly training a generative model to capture the kinetics leads to two limitations: (a) Due to the absence of data on missing time, the model tends to overfit to irrelevant features, leading to content distortion. (b) Due to the lack of continuous temporal supervision, the model fails to learn the continuous kinetics law over time, causing temporal discontinuities. For the first time, we propose MRI Contrast Enhancement…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · MRI in cancer diagnosis · Advanced MRI Techniques and Applications
