Deep learning-based attenuation correction for brain PET with various radiotracers

被引:18
作者
Hashimoto, Fumio [1 ]
Ito, Masanori [2 ]
Ote, Kibo [1 ]
Isobe, Takashi [1 ]
Okada, Hiroyuki [2 ,3 ]
Ouchi, Yasuomi [4 ]
机构
[1] Hamamatsu Photon KK, Cent Res Lab, Hamamatsu, Shizuoka 4348601, Japan
[2] Hamamatsu Photon KK, Global Strateg Challenge Ctr, Hamamatsu, Shizuoka 4348601, Japan
[3] Hamamatsu Med Photon Fdn, Hamamatsu Med Imaging Ctr, Hamamatsu, Shizuoka 4348601, Japan
[4] Hamamatsu Univ, Dept Biofunct Imaging, Preeminent Med Photon Educ & Res Ctr, Sch Med, Hamamatsu, Shizuoka 4313192, Japan
关键词
Attenuation correction; Convolutional neural networks; Deep learning; Positron emission tomography (PET); IMAGE-RECONSTRUCTION; WHOLE-BODY;
D O I
10.1007/s12149-021-01611-w
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 Attenuation correction (AC) is crucial for ensuring the quantitative accuracy of positron emission tomography (PET) imaging. However, obtaining accurate mu-maps from brain-dedicated PET scanners without AC acquisition mechanism is challenging. Therefore, to overcome these problems, we developed a deep learning-based PET AC (deep AC) framework to synthesize transmission computed tomography (TCT) images from non-AC (NAC) PET images using a convolutional neural network (CNN) with a huge dataset of various radiotracers for brain PET imaging. Methods The proposed framework is comprised of three steps: (1) NAC PET image generation, (2) synthetic TCT generation using CNN, and (3) PET image reconstruction. We trained the CNN by combining the mixed image dataset of six radiotracers to avoid overfitting, including [F-18]FDG, [F-18]BCPP-EF, [C-11]Racropride, [C-11]PIB, [C-11]DPA-713, and [C-11]PBB3. We used 1261 brain NAC PET and TCT images (1091 for training and 70 for testing). We did not include [C-11]Methionine subjects in the training dataset, but included them in the testing dataset. Results The image quality of the synthetic TCT images obtained using the CNN trained on the mixed dataset of six radiotracers was superior to those obtained using the CNN trained on the split dataset generated from each radiotracer. In the [F-18]FDG study, the mean relative PET biases of the emission-segmented AC (ESAC) and deep AC were 8.46 +/- 5.24 and - 5.69 +/- 4.97, respectively. The deep AC PET and TCT AC PET images exhibited excellent correlation for all seven radiotracers (R-2 = 0.912-0.982). Conclusion These results indicate that our proposed deep AC framework can be leveraged to provide quantitatively superior PET images when using the CNN trained on the mixed dataset of PET tracers than when using the CNN trained on the split dataset which means specific for each tracer.
引用
收藏
页码:691 / 701
页数:11
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