Khatun Rupali, Chatterjee Soumick, Bert Christoph, Wadepohl Martin, Ott Oliver J, Semrau Sabine, Fietkau Rainer, Nürnberger Andreas, Gaipl Udo S, Frey Benjamin
Translational Radiobiology, Department of Radiation Oncology, Universitätsklinikum Erlangen, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany.
Department of Radiation Oncology, Universitätsklinikum Erlangen, Friedrich-Alexander-Universität Erlangen-Nürnberg, Erlangen, Germany.
Sci Rep. 2025 Apr 6;15(1):11765. doi: 10.1038/s41598-025-96071-x.
Hyperthermia (HT) in combination with radio- and/or chemotherapy has become an accepted cancer treatment for distinct solid tumour entities. In HT, tumour tissue is exogenously heated to temperatures between 39 and 43 °C for 60 min. Temperature monitoring can be performed non-invasively using dynamic magnetic resonance imaging (MRI). However, the slow nature of MRI leads to motion artefacts in the images due to the movements of patients during image acquisition. By discarding parts of the data, the speed of the acquisition can be increased - known as undersampling. However, due to the invalidation of the Nyquist criterion, the acquired images might be blurry and can also produce aliasing artefacts. The aim of this work was, therefore, to reconstruct highly undersampled MR thermometry acquisitions with better resolution and with fewer artefacts compared to conventional methods. The use of deep learning in the medical field has emerged in recent times, and various studies have shown that deep learning has the potential to solve inverse problems such as MR image reconstruction. However, most of the published work only focuses on the magnitude images, while the phase images are ignored, which are fundamental requirements for MR thermometry. This work, for the first time, presents deep learning-based solutions for reconstructing undersampled MR thermometry data. Two different deep learning models have been employed here, the Fourier Primal-Dual network and the Fourier Primal-Dual UNet, to reconstruct highly undersampled complex images of MR thermometry. MR images of 44 patients with different sarcoma types who received HT treatment in combination with radiotherapy and/or chemotherapy were used in this study. The method reduced the temperature difference between the undersampled MRIs and the fully sampled MRIs from 1.3 to 0.6 °C in full volume and 0.49 °C to 0.06 °C in the tumour region for a theoretical acceleration factor of 10.
热疗(HT)联合放疗和/或化疗已成为针对特定实体瘤的一种公认的癌症治疗方法。在热疗中,肿瘤组织被外源加热至39至43°C,持续60分钟。温度监测可使用动态磁共振成像(MRI)进行非侵入性操作。然而,MRI的成像速度较慢,由于图像采集过程中患者的移动,会导致图像中出现运动伪影。通过舍弃部分数据,可以提高采集速度,即所谓的欠采样。然而,由于奈奎斯特准则失效,采集到的图像可能会模糊,还会产生混叠伪影。因此,本研究的目的是与传统方法相比,以更高的分辨率和更少的伪影重建高度欠采样的磁共振测温采集数据。近年来,深度学习在医学领域崭露头角,各种研究表明,深度学习有潜力解决诸如磁共振图像重建等逆问题。然而,大多数已发表的工作仅关注幅度图像,而忽略了相位图像,而相位图像是磁共振测温的基本要求。本研究首次提出基于深度学习的解决方案,用于重建欠采样的磁共振测温数据。这里采用了两种不同的深度学习模型,即傅里叶原对偶网络和傅里叶原对偶U-Net,来重建高度欠采样的磁共振测温复数图像。本研究使用了44例接受热疗联合放疗和/或化疗的不同肉瘤类型患者的磁共振图像。对于理论加速因子为10的情况,该方法将欠采样磁共振图像与全采样磁共振图像之间的温差在全容积中从1.3°C降低至0.6°C,在肿瘤区域从0.49°C降低至0.06°C。