Li Yunxiang, Liao Yen-Peng, Wang Jing, Lu Weiguo, Zhang You
Department of Radiation Oncology, UT Southwestern Medical Center, Dallas, TX 75390, United States of America.
Phys Med Biol. 2025 Apr 1;70(7). doi: 10.1088/1361-6560/adbed4.
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.To address these challenges, we propose a patient-specific knowledge transfer implicit neural representation (KT-INR) SR model. The KT-INR model integrates a dual-head 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 SR mappings learned by the GAN model on a population-based dataset, is transferred as prior knowledge to the INR. This integration enhances both the performance and reliability of the SR model.We validated the effectiveness of the KT-INR model across three distinct clinical SR tasks on the brain tumor segmentation dataset. For task 1, KT-INR achieved an average structural similarity index, peak signal-to-noise ratio, and learned perceptual image patch similarity of 0.9813, 36.845, and 0.0186, respectively. In comparison, a state-of-the-art SR 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.The KT-INR model significantly enhances the reliability of SR results, effectively addressing the hallucination effects commonly seen in traditional models. It provides a robust solution for patient-specific MRI SR.
磁共振成像(MRI)是一种非侵入性成像技术,可提供高软组织对比度,在疾病诊断和治疗规划中发挥着至关重要的作用。然而,由于成像硬件、扫描时间和患者依从性的限制,MRI图像的分辨率往往不足。超分辨率(SR)技术可以提高MRI分辨率,揭示更详细的解剖信息,改善对复杂结构的识别,同时还能减少扫描时间和患者不适。然而,在大型数据集上训练的传统基于群体的模型可能会引入伪影或虚幻结构,这会损害其在临床应用中的可靠性。为应对这些挑战,我们提出了一种针对患者的知识转移隐式神经表示(KT-INR)SR模型。KT-INR模型将双头INR与在大规模数据集上训练的预训练生成对抗网络(GAN)模型相结合。同一患者不同MRI序列的解剖信息,与GAN模型在基于群体的数据集上学习到的SR映射相结合,作为先验知识转移到INR。这种整合提高了SR模型的性能和可靠性。我们在脑肿瘤分割数据集上的三个不同临床SR任务中验证了KT-INR模型的有效性。对于任务1,KT-INR的平均结构相似性指数、峰值信噪比和学习到的感知图像块相似性分别达到0.9813、36.845和0.0186。相比之下,一种先进的SR技术ArSSR在相同指标上的平均值分别为0.9689、33.4557和0.0309。实验结果表明,KT-INR在所有任务和评估指标上均优于所有其他方法,在解析精细解剖细节方面表现尤为出色。KT-INR模型显著提高了SR结果的可靠性,有效解决了传统模型中常见的幻觉效应。它为针对患者的MRI SR提供了一个强大的解决方案。