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Adaptive Plane Reformatting for 4D Flow MRI using Deep Reinforcement Learning

Main:9 Pages
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Bibliography:2 Pages
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Abstract

Deep reinforcement learning (DRL) algorithms have shown robust results in plane reformatting tasks. In these methods, an agent sequentially adjusts the position and orientation of an initial plane towards an objective location. This process allows accurate plane reformatting, without the need for detailed landmarks, which makes it suitable for images with limited contrast and resolution, such as 4D flow MRI. However, current DRL methods require the test dataset to be in the same position and orientation as the training dataset. In this paper, we present a novel technique that utilizes a flexible coordinate system based on the current state, enabling navigation in volumes at any position or orientation. We adopted the Asynchronous Advantage Actor Critic (A3C) algorithm for reinforcement learning, outperforming Deep Q Network (DQN). Experimental results in 4D flow MRI demonstrate improved accuracy in plane reformatting angular and distance errors (6.32 +- 4.15 ° and 3.40 +- 2.75 mm), as well as statistically equivalent flow measurements determined by a plane reformatting process done by an expert (p=0.21). The method's flexibility and adaptability make it a promising candidate for other medical imaging applications beyond 4D flow MRI.

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@article{bisbal2025_2506.00727,
  title={ Adaptive Plane Reformatting for 4D Flow MRI using Deep Reinforcement Learning },
  author={ Javier Bisbal and Julio Sotelo and Maria I Valdés and Pablo Irarrazaval and Marcelo E Andia and Julio García and José Rodriguez-Palomarez and Francesca Raimondi and Cristián Tejos and Sergio Uribe },
  journal={arXiv preprint arXiv:2506.00727},
  year={ 2025 }
}
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