CALIBRATIONLESS PARALLEL MRI USING MODEL BASED DEEP LEARNING (C-MODL).

Aniket Pramanik, Hemant Aggarwal, Mathews Jacob
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Abstract

We introduce a fast model based deep learning approach for calibrationless parallel MRI reconstruction. The proposed scheme is a non-linear generalization of structured low rank (SLR) methods that self learn linear annihilation filters from the same subject. It pre-learns non-linear annihilation relations in the Fourier domain from exemplar data. The pre-learning strategy significantly reduces the computational complexity, making the proposed scheme three orders of magnitude faster than SLR schemes. The proposed framework also allows the use of a complementary spatial domain prior; the hybrid regularization scheme offers improved performance over calibrated image domain MoDL approach. The calibrationless strategy minimizes potential mismatches between calibration data and the main scan, while eliminating the need for a fully sampled calibration region.

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使用基于模型的深度学习(C-MODL)进行无校准并行 MRI。
我们为无校准并行磁共振成像重建引入了一种基于模型的快速深度学习方法。所提出的方案是对结构化低秩 (SLR) 方法的非线性概括,该方法从同一对象中自学线性湮灭滤波器。它从范例数据中预先学习傅立叶域中的非线性湮灭关系。预学习策略大大降低了计算复杂度,使提出的方案比 SLR 方案快三个数量级。所提出的框架还允许使用互补空间域先验;与校准图像域 MoDL 方法相比,混合正则化方案的性能有所提高。无校准策略最大限度地减少了校准数据与主扫描之间潜在的不匹配,同时消除了对完全采样校准区域的需求。
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COUPLED SWIN TRANSFORMERS AND MULTI-APERTURES NETWORK(CSTA-NET) IMPROVES MEDICAL IMAGE SEGMENTATION. MINIMALLY USER-GUIDED 3D MICRO-ULTRASOUND PROSTATE SEGMENTATION. MPR-DIFF: A SELF-SUPERVISED DIFFUSION MODEL FOR MULTI-PLANAR REFORMATION IN PROSTATE MICRO-ULTRASOUND IMAGING. AUTOENCODER FOR 4-DIMENSIONAL FIBER ORIENTATION DISTRIBUTIONS FROM DIFFUSION MRI. TOPOLOGY-PRESERVING DEEP SUPERVISION FOR 3D AXON CENTERLINE SEGMENTATION USING PARTIALLY ANNOTATED DATA.
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