Ahmed Shahzad, Jinchao Feng, Ferzund Javed, Ali Muhammad Usman, Yaqub Muhammad, Manan Malik Abdul, Mehmood Atif
Beijing Key Laboratory of Computational Intelligence and Intelligent System, Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Beijing Key Laboratory of Computational Intelligence and Intelligent System, Faculty of Information Technology, Beijing University of Technology, Beijing 100124, China.
Magn Reson Imaging. 2025 Feb;116:110279. doi: 10.1016/j.mri.2024.110279. Epub 2024 Nov 17.
This study introduces GraFMRI, a novel framework designed to address the challenges of reconstructing high-quality MRI images from undersampled k-space data. Traditional methods often suffer from noise amplification and loss of structural detail, leading to suboptimal image quality. GraFMRI leverages Graph Neural Networks (GNNs) to transform multi-modal MRI data (T1, T2, PD) into a graph-based representation, enabling the model to capture intricate spatial relationships and inter-modality dependencies.
The framework integrates Graph-Based Non-Local Means (NLM) Filtering for effective noise suppression and Adversarial Training to reduce artifacts. A dynamic attention mechanism enables the model to focus on key anatomical regions, even when fully-sampled reference images are unavailable. GraFMRI was evaluated on the IXI and fastMRI datasets using Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index Measure (SSIM) as metrics for reconstruction quality.
GraFMRI consistently outperforms traditional and self-supervised reconstruction techniques. Significant improvements in multi-modal fusion were observed, with better preservation of information across modalities. Noise suppression through NLM filtering and artifact reduction via adversarial training led to higher PSNR and SSIM scores across both datasets. The dynamic attention mechanism further enhanced the accuracy of the reconstructions by focusing on critical anatomical regions.
GraFMRI provides a scalable, robust solution for multi-modal MRI reconstruction, addressing noise and artifact challenges while enhancing diagnostic accuracy. Its ability to fuse information from different MRI modalities makes it adaptable to various clinical applications, improving the quality and reliability of reconstructed images.
本研究介绍了GraFMRI,这是一个旨在应对从欠采样k空间数据重建高质量MRI图像挑战的新颖框架。传统方法常常遭受噪声放大和结构细节丢失的问题,导致图像质量欠佳。GraFMRI利用图神经网络(GNN)将多模态MRI数据(T1、T2、PD)转换为基于图的表示形式,使模型能够捕捉复杂的空间关系和模态间依赖性。
该框架集成了基于图的非局部均值(NLM)滤波以进行有效的噪声抑制,并采用对抗训练来减少伪影。一种动态注意力机制使模型能够专注于关键解剖区域,即使在没有全采样参考图像的情况下也是如此。使用峰值信噪比(PSNR)和结构相似性指数测量(SSIM)作为重建质量指标,在IXI和fastMRI数据集上对GraFMRI进行了评估。
GraFMRI始终优于传统和自监督重建技术。观察到多模态融合有显著改进,跨模态的信息保存得更好。通过NLM滤波进行的噪声抑制和通过对抗训练减少伪影,使得两个数据集的PSNR和SSIM分数都更高。动态注意力机制通过专注于关键解剖区域进一步提高了重建的准确性。
GraFMRI为多模态MRI重建提供了一种可扩展、稳健的解决方案,解决了噪声和伪影挑战,同时提高了诊断准确性。它融合来自不同MRI模态信息的能力使其适用于各种临床应用,提高了重建图像的质量和可靠性。