| Literature DB >> 36104468 |
Tao Sun1,2, Yaping Wu3, Wei Wei3, Fangfang Fu3, Nan Meng3, Hongzhao Chen1, Xiaochen Li3, Yan Bai3, Zhenguo Wang1, Jie Ding1, Debin Hu4, Chaojie Chen4, Zhanli Hu1, Dong Liang1, Xin Liu1, Hairong Zheng1, Yongfeng Yang1, Yun Zhou4,5, Meiyun Wang6.
Abstract
BACKGROUND: The total-body positron emission tomography (PET) scanner provides an unprecedented opportunity to scan the whole body simultaneously, thanks to its long axial field of view and ultrahigh temporal resolution. To fully utilize this potential in clinical settings, a dynamic scan would be necessary to obtain the desired kinetic information from scan data. However, in a long dynamic acquisition, patient movement can degrade image quality and quantification accuracy.Entities:
Keywords: Dynamic imaging; Kinetic modeling; Motion correction; Total-body PET
Year: 2022 PMID: 36104468 PMCID: PMC9474756 DOI: 10.1186/s40658-022-00493-9
Source DB: PubMed Journal: EJNMMI Phys ISSN: 2197-7364
Patient demographics
| Subject (lesion) | Gender | Age | Height (cm) | Weight (kg) | Injection dose (MBq) |
|---|---|---|---|---|---|
| 001 (N/A) | M | 27 | 166 | 60 | 220 |
| 002 (lung) | F | 57 | 166 | 61 | 242 |
| 003 (lung) | M | 28 | 174 | 75 | 302 |
| 004 (N/A) | M | 31 | 170 | 72 | 289 |
| 005 (liver) | M | 47 | 178 | 105 | 387 |
| 006 (N/A) | F | 35 | 164 | 63 | 233 |
| 007 (N/A) | F | 30 | 162 | 73 | 294 |
| 008 (gastrointestinal) | M | 24 | 182 | 99 | 366 |
| 009 (N/A) | M | 57 | 175 | 73 | 278 |
| 010 (lung) | F | 49 | 165 | 75 | 301 |
| 011 (N/A) | M | 55 | 173 | 80 | 218 |
| 012 (N/A) | F | 58 | 168 | 60 | 261 |
| Mean ± s.d | 7 M, 5F | 41.5 ± 12.9 | 170.2 ± 5.9 | 74.6 ± 14.4 | 282.5 ± 53.4 |
Fig. 1Example ROIs to extract the time-activity curves that are used for quantifications
Fig. 2Patient 12: subtraction images at given frames before (NMC) and after correction with the SyN-seq. The corrected frames have less positional difference to the reference frame 40
Fig. 3Patient 12: SyN-mid- and SyN-seq-corrected images and their associated motion fields (at frame 48). For the motion vector fields, the red, green and blue represents the three directions of the vector, and the saturation represents magnitude of the vector along each direction (as the color wheel shows)
Fig. 4Effect of motion correction on SUV images for A patient 8 (50–60 min), B patient 9 (7–12 min) and C patient 12 (40–50 min). Red arrows indicate the motion-contaminated regions. The images in A and B suffered more from head and internal abdominal movement, while the one in C suffered from the irregular body shift mostly along the Superior-Inferior direction
Effects of correction on tumor SUVmean for the subject with lesions
| Subject (time) | NMC | Aff-seq | SyN-seq | improve percentage |
|---|---|---|---|---|
| 002 (40–50 min) | 9.58 | 9.64 | 2.26% | |
| 003 (50–60 min) | 4.82 | 4.94 | 5.86% | |
| 005 (40–50 min) | 13.41 | 13.49 | -0.13% | |
| 007 (20–25 min) | 6.05 | 5.98 | 12.89% | |
| 008 (50–60 min) | 10.92 | 11.13 | 5.86% | |
| Mean ± s.d | 8.98 ± 3.55 | 9.02 ± 3.52 | 9.38 ± 3.37 | 5.35 ± 4.92% |
The number in bold is the largest one among the group
Fig. 5Distribution plots of the mutual information A and dice coefficient B for assessing the frame alignment. The lines represent the means, and the shadowed areas represents the associated standard deviations
Fig. 6TACs sampled at organs from A patient 4 B patient 12. The quantification in the cerebral cortex and kidney cortex is more sensitive to movement, while the relatively uniform regions in liver and thigh muscle are affected to a less extent
Fig. 7Corresponding Ki images for A patient 8, B patient 9 and C patient 12 in Fig. 4. Red arrows indicate the motion-contaminated regions, which can be different from the ones in Fig. 4
Fig. 8K1 images did not show visual differences before and after correction (corresponding to Fig. 7B). K1 images from other subjects have similar conclusions
Summary of coefficient of variation (CV) and associated variances for kinetic parameters in the cerebral cortex, liver, kidney cortex and thigh muscle for 12 subjects
| NMC | Aff-seq | SyN-seq | SyN-mid | ||
|---|---|---|---|---|---|
| Ki | cerebral | 0.511 (0.0214) | 0.395 (0.0189) | 0.363 (0.0169) | |
| liver | 0.486 (0.0023) | 0.513 (0.0025) | 0.469 (0.0023) | ||
| kidney | 0.522 (0.0187) | 0.590 (0.01203) | 0.550 (0.0114) | ||
| muscle | 0.221 (0.0004) | 0.230 (0.0004) | 0.220 (0.0004) | ||
| K1 | cerebral | 0.350 (0.1789) | 0.350 (0.1760) | 0.352 (0.1782) | |
| liver | 0.538 (0.0081) | 0.500 (0.0076) | 0.500 (0.0088) | ||
| kidney | 0.209 (0.7026) | 0.221 (0.7221) | 0.241 (0.6259) | ||
| muscle | 0.285 (0.0055) | 0.283 (0.0053) | 0.286 (0.0059) |
The number in bold is the smallest among the group