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Supervised deep learning (SDL) methodology holds promise for accelerated magnetic resonance imaging (AMRI) but is hampered by the reliance on extensive training data. Some self-supervised frameworks, such as deep image prior (DIP), have emerged, eliminating the explicit training procedure but often struggling to remove noise and artifacts under significant degradation. This work introduces a novel self-supervised accelerated parallel MRI approach called PEARL, leveraging a multiple-stream joint deep decoder with two cross-fusion schemes to accurately reconstruct one or more target images from compressively sampled k-space. Each stream comprises cascaded cross-fusion sub-block networks (SBNs) that sequentially perform combined upsampling, 2D convolution, joint attention, ReLU activation and batch normalization (BN). Among them, combined upsampling and joint attention facilitate mutual learning between multiple-stream networks by integrating multi-parameter priors in both additive and multiplicative manners. Long-range unified skip connections within SBNs ensure effective information propagation between distant cross-fusion layers. Additionally, incorporating dual-normalized edge-orientation similarity regularization into the training loss enhances detail reconstruction and prevents overfitting. Experimental results consistently demonstrate that PEARL outperforms the existing state-of-the-art (SOTA) self-supervised AMRI technologies in various MRI cases. Notably, 5-fold$\sim$6-fold accelerated acquisition yields a 1$\%$ $\sim$ 2$\%$ improvement in SSIM$_{\mathsf{ROI}}$ and a 3$\%$ $\sim$ 6$\%$ improvement in PSNR$_{\mathsf{ROI}}$, along with a significant 15$\%$ $\sim$ 20$\%$ reduction in RLNE$_{\mathsf{ROI}}$.
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http://dx.doi.org/10.1109/JBHI.2023.3347355 | DOI Listing |
Int J Med Robot
October 2025
School of Mechatronical Engineering, Beijing Institute of Technology, Beijing, China.
Background: The limited workspace and strong magnetic field inside MRI challenge the design of the prostate puncture robot. Simplifying the robot's structure is crucial.
Methods: This paper proposes a parallel cable-driven (PCD) prostate puncture robot, and conducts a preliminary material design.
Diabetes Obes Metab
September 2025
Department of Endocrinology, Endocrine and Metabolic Disease Medical Center, Nanjing Drum Tower Hospital, Affiliated Hospital of Medical School, Nanjing University, Nanjing, China.
Aims: Type 2 diabetes (T2D) related cognitive impairment links to comorbid and modifiable olfactory dysfunction; however, the efficacy of olfactory training (OT) to mitigate cognitive decline specifically in these patients with mild cognitive impairment (MCI) remains unestablished. This study aimed to determine whether OT alleviates cognitive decline in this population.
Materials And Methods: In this 16-week, open-label trial, 60 T2D participants with MCI were randomly assigned (1:1) to OT or routine care (control).
BMJ Open
September 2025
Psychologial Neuroscience Laboratoy (PNL), Psychology Research Center (CIPSI), School of Psychology, University of Minho, Braga, Portugal
Introduction: Adolescence and youth are periods of significant maturational changes, which seem to involve greater susceptibility to disruptive events in the brain, such as binge drinking (BD). This pattern-characterised by repeated episodes of alcohol intoxication-is of particular concern, as it has been associated with significant alterations in the developing brain. Recent evidence indicates that alcohol may also induce changes in gut microbiota composition and that such disturbances can lead to impairments in both brain function and behaviour.
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September 2025
Institute of Diagnostic and Interventional Radiology, School of Medicine and Health, Technical University of Munich, Munich, Germany.
Purpose: To enable accelerated Bloch simulations by enhancing the open-source multi-purpose MRI simulation tool JEMRIS with graphic processing units (GPU) parallelization.
Methods: A GPU-compatible version of JEMRIS was built by shifting the computationally expensive parallelizable processes to the GPU to benefit from heterogeneous computing and by adding asynchronous communication and mixed precision support. With key classes reimplemented in CUDA C++, the developed GPU-JEMRIS framework was tested on simulations of common MRI artifacts in numerical phantoms.
Background: Altered knee joint loading is pervasive and persistent after anterior cruciate ligament reconstruction (ACLR) and a significant driver for the development of knee osteoarthritis (OA).
Purpose: To describe a prospective, parallel, randomized controlled trial aiming to evaluate the efficacy of an eight-week squat visual biofeedback program implemented early after ACLR.
Study Design: Randomized controlled clinical trial.