TABLE 1.
Reference | Method | Relaxation type | Network architecture | Image sequence | Training data | Testing data | Key results |
---|---|---|---|---|---|---|---|
Cai et al156 | Deep OLED T2 | T2 mapping | ResNet | Single-shot OLED planar imaging | Simulated data | Simulated phantom; in vivo brain | Reliable T2 mapping with higher accuracy and faster reconstruction than standard reconstruction method |
Li et al158 | MSCNN | T1ρ and T2 mapping | CNN | Magnetization-prepared angle-modulated partitioned k-space spoiled gradient echo snapshots T1ρ and T2 quantification | In vivo knee | In vivo knee | Up to 10-fold acceleration for simultaneous T1ρ and T2 maps with quantification results comparable to reference maps |
Cohen et al164 | MRF-DRONE | T1 and T2 mapping | FCN | Modified gradient-echo EPI MRF pulse sequence; fast imaging with steady-state precession MRF pulse sequence | Simulated data | Simulated phantom; phantom; in vivo brain | Accurate, 300 to 5000 times faster, and more robust to noise and dictionary undersampling than conventional MRF dictionary matching |
Fang et al165 | SCQ network | T1 and T2 mapping | FCN + U-Net | Fast imaging with steady-state precession MRF pulse sequence | In vivo brain | In vivo brain | Accurate quantification for T1 and T2 by using only 25% of time points of the original sequence |
Liu et al169 | MANTIS | T2 mapping | U-Net | Multi-echo spin-echo T2 mapping | In vivo knee | In vivo knee | Accurate and reliable quantification for T2 at up to eightfold acceleration, robust against k-space trajectory undersampling variation |
Liu et al170 | MANTIS-GAN | T2 mapping | GAN (generator, U-Net; discriminator, PatchGAN) | Multi-echo spin-echo T2 mapping | Simulated data | Simulated data | Up to eightfold acceleration for T2 mapping with accuracy and high image sharpness and texture preservation compared with the reference |
Zha et al171 | Relax-MANTIS | T1 mapping | U-Net | Variable flip angle spoiled gradient echo T1 mapping | In vivo lung | In vivo lung | Physics model regularized and self-supervised T1 mapping at reduced image acquisition time, robust against noise |
Zibetti et al175 | VN T1ρ | T1ρ mapping | VN | Modified 3D Cartesian turbo-FLASH sequence | In vivo knee | In vivo knee | Better T1ρ quantification using deep learning image reconstruction than compressed sensing |
Jeelani et al177 | DeepT1 | T1 mapping | RCNN + U-Net | Modified Cartesian Look-Locker imaging | In vivo cardiac | In vivo cardiac | Noise-robust estimates compared with the traditional pixel-wise T1 parameter fitting at fivefold acceleration |
Chaudhari et al178 | MRSR | T2 mapping | CNN | DESS sequence | In vivo knee | In vivo knee | Minimally biased T2 from robust super-resolution in thin slice compared with the reference |
Abbreviations:
DeepT1, deep learning for T1 mapping; MSCNN, model skipped convolutional neural network; Relax-MANTIS, reference-free latent map extraction MANTIS.