Deep Learning Reconstruction at CT: Phantom Study of the Image Characteristics

被引:172
作者
Higaki, Toru [1 ]
Nakamura, Yuko [1 ]
Zhou, Jian [2 ]
Yu, Zhou [2 ]
Nemoto, Takuya [3 ]
Tatsugami, Fuminari [1 ]
Awai, Kazuo [1 ]
机构
[1] Hiroshima Univ, Dept Diagnost Radiol, Minami Ku, 1-2-3 Kasumi, Hiroshima 7348551, Japan
[2] Canon Med Res USA, Vernon Hills, IL USA
[3] Canon Med Syst, Otawara, Tochigi, Japan
关键词
Phantoms; imaging; neural networks; X-ray computed tomography; machine learning; artificial intelligence; NOISE POWER SPECTRUM; ITERATIVE RECONSTRUCTION; COMPUTED-TOMOGRAPHY; REDUCTION; RESOLUTION; QUALITY;
D O I
10.1016/j.acra.2019.09.008
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Objectives: Noise, commonly encountered on computed tomography (CT) images, can impact diagnostic accuracy. To reduce the image noise, we developed a deep-learning reconstruction (DLR) method that integrates deep convolutional neural networks into image reconstruction. In this phantom study, we compared the image noise characteristics, spatial resolution, and task-based detectability on DLR images and images reconstructed with other state-of-the art techniques. Methods: We scanned a phantom harboring cylindrical modules with different contrast on a 320-row detector CT scanner. Phantom images were reconstructed with filtered back projection, hybrid iterative reconstruction, model-based iterative reconstruction, and DLR. The standard deviation of the CT number and the noise power spectrum were calculated for noise characterization. The 10% modulation transfer function (MTF) level was used to evaluate spatial resolution; task-based detectability was assessed using the model observer method. Results: On images reconstructed with DLR, the noise was lower than on images subjected to other reconstructions, especially at low radiation dose settings. Noise power spectrum measurements also showed that the noise amplitude was lower, especially for low-frequency components, on DLR images. Based on the MTF, spatial resolution was higher on model-based iterative reconstruction image than DLR image, however, for lower-contrast objects, the MTF on DLR images was comparable to images reconstructed with other methods. The machine observer study showed that at reduced radiation-dose settings, DLR yielded the best detectability. Conclusion: On DLR images, the image noise was lower, and high-contrast spatial resolution and task-based detectability were better than on images reconstructed with other state-of-the art techniques. DLR also outperformed other methods with respect to task-based detectability.
引用
收藏
页码:82 / 87
页数:6
相关论文
共 30 条
[1]   Deep learning reconstruction improves image quality of abdominal ultra-high-resolution CT [J].
Akagi, Motonori ;
Nakamura, Yuko ;
Higaki, Toru ;
Narita, Keigo ;
Honda, Yukiko ;
Zhou, Jian ;
Yu, Zhou ;
Akino, Naruomi ;
Awai, Kazuo .
EUROPEAN RADIOLOGY, 2019, 29 (11) :6163-6171
[2]  
[Anonymous], 2018, ECR2018, DOI DOI 10.1594/ECR2018/C-1656
[3]   Deep Learning: A Primer for Radiologists [J].
Chartrand, Gabriel ;
Cheng, Phillip M. ;
Vorontsov, Eugene ;
Drozdzal, Michal ;
Turcotte, Simon ;
Pal, Christopher J. ;
Kadoury, Samuel ;
Tang, An .
RADIOGRAPHICS, 2017, 37 (07) :2113-2131
[4]   Methods for Clinical Evaluation of Noise Reduction Techniques in Abdominopelvic CT [J].
Ehman, Eric C. ;
Yu, Lifeng ;
Manduca, Armando ;
Hara, Amy K. ;
Shiung, Maria M. ;
Jondal, Dayna ;
Lake, David S. ;
Paden, Robert G. ;
Blezek, Daniel J. ;
Bruesewitz, Michael R. ;
McCollough, Cynthia H. ;
Hough, David M. ;
Fletcher, Joel G. .
RADIOGRAPHICS, 2014, 34 (04) :849-862
[5]  
Euler A, 2017, EUR RADIOL, V27, P5252, DOI 10.1007/s00330-017-4825-9
[6]   Lung cancer screening with ultra-low dose CT using full iterative reconstruction [J].
Fujita, Masayo ;
Higaki, Toru ;
Awaya, Yoshikazu ;
Nakanishi, Toshio ;
Nakamura, Yuko ;
Tatsugami, Fuminari ;
Baba, Yasutaka ;
Iida, Makoto ;
Awai, Kazuo .
JAPANESE JOURNAL OF RADIOLOGY, 2017, 35 (04) :179-189
[7]   State of the Art: Iterative CT Reconstruction Techniques [J].
Geyer, Lucas L. ;
Schoepf, U. Joseph ;
Meinel, Felix G. ;
Nance, John W., Jr. ;
Bastarrika, Gorka ;
Leipsic, Jonathon A. ;
Paul, Narinder S. ;
Rengo, Marco ;
Laghi, Andrea ;
De Cecco, Carlo N. .
RADIOLOGY, 2015, 276 (02) :338-356
[8]   Improvement of image quality at CT and MRI using deep learning [J].
Higaki, Toru ;
Nakamura, Yuko ;
Tatsugami, Fuminari ;
Nakaura, Takeshi ;
Awai, Kazuo .
JAPANESE JOURNAL OF RADIOLOGY, 2019, 37 (01) :73-80
[9]  
Higaki T, 2017, DATA BRIEF, V13, P437, DOI 10.1016/j.dib.2017.06.024
[10]   Tradeoff between noise reduction and inartificial visualization in a model-based iterative reconstruction algorithm on coronary computed tomography angiography [J].
Hirata, Kenichiro ;
Utsunomiya, Daisuke ;
Kidoh, Masafumi ;
Funama, Yoshinori ;
Oda, Seitaro ;
Yuki, Hideaki ;
Nagayama, Yasunori ;
Iyama, Yuji ;
Nakaura, Takeshi ;
Sakabe, Daisuke ;
Tsujita, Kenichi ;
Yamashita, Yasuyuki .
MEDICINE, 2018, 97 (20)