Magnetic Resonance Imaging (MRI) is a non-invasive imaging technique that provides high soft tissue contrast, playing a vital role in disease diagnosis and treatment planning. However, due to limitations in imaging hardware, scan time, and patient compliance, the resolution of MRI images is often insufficient. Super-resolution (SR) techniques can enhance MRI resolution, reveal more detailed anatomical information, and improve the identification of complex structures, while also reducing scan time and patient discomfort. However, traditional population-based models trained on large datasets may introduce artifacts or hallucinated structures, which compromise their reliability in clinical applications. Approach: To address these challenges, we propose a patient-specific Knowledge Transfer Implicit Neural Representation (KT-INR) super-resolution model. The KT-INR model integrates a dual-head Implicit Neural Network (INR) with a pre-trained Generative Adversarial Network (GAN) model trained on a large-scale dataset. Anatomical information from different MRI sequences of the same patient, combined with the super-resolution mappings learned by the GAN model on population-based dataset, is transferred as prior knowledge to the INR. This integration enhances both the performance and reliability of the super resolution model. Main Results: We validated the effectiveness of the KT-INR model across three distinct clinical super-resolution tasks on the BRATS dataset. For Task 1, KT-INR achieved an average SSIM, PSNR, and LPIPS of 0.9813, 36.845, and 0.0186, respectively. In comparison, a state-of-the-art super resolution technique, ArSSR, attained average values of 0.9689, 33.4557, and 0.0309 for the same metrics. The experimental results demonstrate that KT-INR outperforms all other methods across all tasks and evaluation metrics, with particularly remarkable performance in resolving fine anatomical details. Significance: The KT-INR model significantly enhances the reliability of super-resolution results, effectively addressing the hallucination effects commonly seen in traditional models. It provides a robust solution for patient-specific MRI super-resolution.
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http://dx.doi.org/10.1088/1361-6560/adbed4 | DOI Listing |
Med Image Anal
March 2025
School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai, China; National Engineering Research Center of Advanced Magnetic Resonance Technologies for Diagnosis and Therapy, Shanghai Jiao Tong University, Shanghai, China. Electronic address:
Quantitative magnetic resonance imaging (qMRI) offers tissue-specific physical parameters with significant potential for neuroscience research and clinical practice. However, lengthy scan times for 3D multiparametric qMRI acquisition limit its clinical utility. Here, we propose SUMMIT, an innovative imaging methodology that includes data acquisition and an unsupervised reconstruction for simultaneous multiparametric qMRI.
View Article and Find Full Text PDFReconstructing deformable soft tissues from endoscopic videos is a critical yet challenging task. Leveraging depth priors, deformable implicit neural representations have seen significant advancements in this field. However, depth priors from pre-trained depth estimation models are often coarse, and inaccurate depth supervision can severely impair the performance of these neural networks.
View Article and Find Full Text PDFPhys Med Biol
March 2025
UT Southwestern Medical Center, UT Southwestern Medical Center, 5323 Harry Hines Blvd, Dallas, Dallas, Texas, 75390, UNITED STATES.
Magnetic Resonance Imaging (MRI) is a non-invasive imaging technique that provides high soft tissue contrast, playing a vital role in disease diagnosis and treatment planning. However, due to limitations in imaging hardware, scan time, and patient compliance, the resolution of MRI images is often insufficient. Super-resolution (SR) techniques can enhance MRI resolution, reveal more detailed anatomical information, and improve the identification of complex structures, while also reducing scan time and patient discomfort.
View Article and Find Full Text PDFCognition
March 2025
Research Group Neural Circuits, Consciousness and Cognition, Max Planck Institute for Empirical Aesthetics, Frankfurt am Main, Germany; Predictive Brain Department, Research Center One Health Ruhr, Ruhr-Universität Bochum, Germany.
Past experiences influence how we perceive and respond to the present. A striking example is awareness priming, in which prior conscious perception enhances visibility and discrimination of subsequent stimuli. In this partially pre-registered study, we address a long-standing debate and broaden the scope of awareness priming by demonstrating its effects on implicit motor responses.
View Article and Find Full Text PDFConscious Cogn
March 2025
Cognitive Neuroscience Laboratory, German Primate Center - Leibniz Institute for Primate Research, Kellnerweg 4, 37077, Germany; Faculty of Biology and Psychology, University of Göttingen, Wilhelm-Weber-Str. 2, 37073 Göttingen, Germany. Electronic address:
Motor theories propose that predicting sensory consequences of one's own actions reduces perception and neural processing of these action-effects, a phenomenon known as sensory attenuation, considered an implicit measure of agency. However, recent findings question the link between action-effect prediction and sensory attenuation. This study directly examined the link between temporal action-effect prediction and auditory sensory attenuation, alongside assessing self-reported agency.
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