Copyright
©The Author(s) 2021.
Artif Intell Med Imaging. Apr 28, 2021; 2(2): 37-55
Published online Apr 28, 2021. doi: 10.35711/aimi.v2.i2.37
Published online Apr 28, 2021. doi: 10.35711/aimi.v2.i2.37
Ref. | Architecture | Purpose |
Fu et al[5], 2020 | Cycle consistent generative adversarial network | To enable pseudo CT-aided CT-MRI image registration |
Liu et al[6], 2019 | Cycle generative adversarial network | To derive electron density from routine anatomical MRI for MRI-based SBRT treatment planning |
Liu et al[7], 2019 | 3D Cycle-consistent generative adversarial network | To generate pelvic synthetic CT for prostate proton therapy treatment planning |
Lei et al[8], 2020 | Cycle generative adversarial network for synthesis and fully convolution neural network for delineation | To help segment and delineate of prostate target by pseudo MR synthesis from CT |
Dong et al[9], 2016 | Super resolution convolution neural network | To develop novel CNN for high- and low-resolution images mapping |
Bahrami et al[10], 2016 | Convolution neural network | To reconstruct 7T-like super-resolution MRI from 3T MR images |
Qu et al[11], 2020 | Wavelet-based affine transformation layers network | To synthesize superior quality of 7T MRI from its 3T MR images than existing 7T MR images |
Yang et al[12], 2018 | Generative adversarial network with Wasserstein distance and perceptual loss function | To denoise low-dose CT image and improve contrast for lesion detection |
Chen et al[14], 2017 | Deep convolution neural network | To train the mapping between low- and normal-dose images so to efficiently reduce noise in low-dose CT |
Wang et al[13], 2019 | Cycle-consistent adversarial network with residual blocks and attention gates | To improve the contrast-to noise ratio for low-dose CT simulation in brain stereotactic radiosurgery radiation therapy |
Ref. | Architecture | Purpose |
Chang et al[52], 2017 | Bayesian network model | To verify and detect external beam radiotherapy physician prescription errors |
Kalet et al[53], 2015 | Bayesian network model | To detect any unusual outliners from treatment plan parameters |
Tomori et al[54], 2018 | Convolutional neural network | To predict gamma evaluation of patient-specific QA in prostate treatment planning |
Nyflot et al[55], 2019 | Convolutional neural network | To detect the presence of introduced RT delivery errors from patient-specific IMRT QA gamma images |
Granville et al[56], 2019 | Support vector classifier | To predict VMAT patient-specific QA results |
Li et al[57], 2017 | ANNs and ARMA time-series prediction modelling | To evaluate the prediction ability of Linac’s dosimetry trends from routine machine data for two methods (ANNs and ARMA) |
- Citation: Ip WY, Yeung FK, Yung SPF, Yu HCJ, So TH, Vardhanabhuti V. Current landscape and potential future applications of artificial intelligence in medical physics and radiotherapy. Artif Intell Med Imaging 2021; 2(2): 37-55
- URL: https://www.wjgnet.com/2644-3260/full/v2/i2/37.htm
- DOI: https://dx.doi.org/10.35711/aimi.v2.i2.37