Synthetic Inflammation Imaging with PatchGAN Deep Learning Networks.
Aniket A TolpadiJohanna LuitjensFelix G GassertXiaojuan LiThomas M LinkSharmila MajumdarValentina PedoiaPublished in: Bioengineering (Basel, Switzerland) (2023)
Background : Gadolinium (Gd)-enhanced Magnetic Resonance Imaging (MRI) is crucial in several applications, including oncology, cardiac imaging, and musculoskeletal inflammatory imaging. One use case is rheumatoid arthritis (RA), a widespread autoimmune condition for which Gd MRI is crucial in imaging synovial joint inflammation, but Gd administration has well-documented safety concerns. As such, algorithms that could synthetically generate post-contrast peripheral joint MR images from non-contrast MR sequences would have immense clinical utility. Moreover, while such algorithms have been investigated for other anatomies, they are largely unexplored for musculoskeletal applications such as RA, and efforts to understand trained models and improve trust in their predictions have been limited in medical imaging. Methods : A dataset of 27 RA patients was used to train algorithms that synthetically generated post-Gd IDEAL wrist coronal T 1 -weighted scans from pre-contrast scans. UNets and PatchGANs were trained, leveraging an anomaly-weighted L 1 loss and global generative adversarial network (GAN) loss for the PatchGAN. Occlusion and uncertainty maps were also generated to understand model performance. Results : UNet synthetic post-contrast images exhibited stronger normalized root mean square error (nRMSE) than PatchGAN in full volumes and the wrist, but PatchGAN outperformed UNet in synovial joints (UNet nRMSEs: volume = 6.29 ± 0.88, wrist = 4.36 ± 0.60, synovial = 26.18 ± 7.45; PatchGAN nRMSEs: volume = 6.72 ± 0.81, wrist = 6.07 ± 1.22, synovial = 23.14 ± 7.37; n = 7). Occlusion maps showed that synovial joints made substantial contributions to PatchGAN and UNet predictions, while uncertainty maps showed that PatchGAN predictions were more confident within those joints. Conclusions : Both pipelines showed promising performance in synthesizing post-contrast images, but PatchGAN performance was stronger and more confident within synovial joints, where an algorithm like this would have maximal clinical utility. Image synthesis approaches are therefore promising for RA and synthetic inflammatory imaging.
Keyphrases
- contrast enhanced
- deep learning
- magnetic resonance imaging
- rheumatoid arthritis
- magnetic resonance
- high resolution
- machine learning
- computed tomography
- oxidative stress
- healthcare
- disease activity
- palliative care
- multiple sclerosis
- optical coherence tomography
- prognostic factors
- newly diagnosed
- photodynamic therapy
- heart rate
- idiopathic pulmonary fibrosis
- high intensity
- fluorescence imaging
- health information
- atomic force microscopy
- systemic sclerosis