| Literature DB >> 36115938 |
Anne-Marie Rickmann1,2, Jyotirmay Senapati3, Oksana Kovalenko4, Annette Peters5, Fabian Bamberg6, Christian Wachinger3,4.
Abstract
BACKGROUND: Whole-body imaging has recently been added to large-scale epidemiological studies providing novel opportunities for investigating abdominal organs. However, the segmentation of these organs is required beforehand, which is time consuming, particularly on such a large scale.Entities:
Keywords: Abdominal MRI; Deep learning; Dixon MRI; Segmentation
Mesh:
Substances:
Year: 2022 PMID: 36115938 PMCID: PMC9482195 DOI: 10.1186/s12880-022-00893-4
Source DB: PubMed Journal: BMC Med Imaging ISSN: 1471-2342 Impact factor: 2.795
Fig. 1Dixon contrasts: Ground truth segmentation overlayed on the OPP contrast and all four Dixon contrasts of a scan from the GNC study. OPP and Water contrasts provide the clearest depiction of the organs
Fig. 2Illustration of MRI scans from different datasets. Top row: original OPP scans, with overlapping regions indicated by blue bars and regions of interest indicated by green boxes. Bottom row: standardized scans as output of the pre-processing pipeline
Descriptive statistics of the selected subjects for the three datasets
| KORA | GNC | UKB | |
|---|---|---|---|
| 18 | 17 | 25 | |
| Sex (M/F) | 11/8 | 8/9 | 12/13 |
| Age | |||
| Height | |||
| Weight | |||
| BMI |
For continuous values, we report mean, standard deviation, and min/max
Fig. 3Our proposed pre-processing pipeline reads abdominal MRI files from different stages, changes the read-orientation to RAS, stitches the scans, performs bias field correction, resamples to a standard resolution, and crops out the ROI covering abdominal organs of interest. Optional steps are depicted with dashed lines
Fig. 4The network architecture, based on QuickNAT [11], with additional CSSE blocks in each layer and Octave Dense Blocks
Mean Dice Scores and average symmetric surface distance (ASSD) in mm over all classes for multi-view AbdomenNet models trained on single datasets versus combinations of two and of all three datasets
| Dice | ASSD | |||||
|---|---|---|---|---|---|---|
| KORA | GNC | UKB | KORA | GNC | UKB | |
| KORA | 0.697 ± 0.109 | 0.644 ± 0.075 | 0.385 ± 0.095 | 2.164 ± 0.758 | 3.287 ± 1.940 | 7.440 ± 3.519 |
| GNC | 0.637 ± 0.120 | 0.682 ± 0.089 | 0.311 ± 0.130 | 2.923 ± 1.018 | 2.899 ± 2.121 | 8.768 ± 7.267 |
| UKB | 0.433 ± 0.128 | 0.401 ± 0.143 | 0.610 ± 0.114 | 6.273 ± 3.074 | 7.831 ± 3.511 | 3.518 ± 3.634 |
| KORA + GNC | 0.728 ± 0.106 | 0.710 ± 0.073 | 0.498 ± 0.111 | 2.382 ± 1.762 | 3.780 ± 1.468 | |
| KORA + UKB | 0.712 ± 0.112 | 0.683 ± 0.080 | 0.625 ± 0.119 | 2.036 ± 0.932 | 2.674 ± 1.726 | 3.238 ± 3.830 |
| UKB + GNC | 0.689 ± 0.106 | 0.697 ± 0.088 | 0.622 ± 0.116 | 1.757 ± 0.469 | 2.245 ± 1.533 | 5.074 ± 3.630 |
| Joint Model | 1.780 ± 0.818 | |||||
Bold numbers indicate highest Dice scores and lowest ASSD scores
Fig. 5Segmentation results of axial AbdomenNet trained on axial view on KORA and Joint dataset, with testing results on KORA, GNC, and UKB (rows). Red arrows point to false segmentations and missed segmentations
Dice Scores and average symmetric surface distance (ASSD) in mm over all organs for axial AbdomenNet trained on different Dixon contrasts together with the mean scores across all organs
| Liver | Spleen | r.Kidney | l.Kidney | r.Adrenal | l.Adrenal | Pancreas | Gallbladder | Mean | |
|---|---|---|---|---|---|---|---|---|---|
| OPP | 0.936 ± 0.035 | 0.845 ± 0.027 | 0.884 ± 0.035 | 0.525 ± 0.174 | 0.619 ± 0.187 | 0.739 ± 0.076 | |||
| IN | 0.936 ± 0.014 | 0.900 ± 0.036 | 0.901 ± 0.024 | 0.899 ± 0.040 | 0.398 ± 0.234 | 0.376 ± 0.192 | 0.538 ± 0.171 | 0.579 ± 0.140 | 0.691 ± 0.084 |
| Fat | 0.926 ± 0.020 | 0.849 ± 0.108 | 0.906 ± 0.030 | 0.906 ± 0.032 | 0.407 ± 0.235 | 0.409 ± 0.216 | 0.628 ± 0.146 | 0.514 ± 0.125 | 0.693 ± 0.081 |
| Water | 0.938 ± 0.019 | 0.906 ± 0.031 | 0.848 ± 0.048 | 0.846 ± 0.090 | 0.441 ± 0.246 | 0.628 ± 0.293 | 0.732 ± 0.082 | ||
| OPP+W | 0.905 ± 0.038 | 0.474 ± 0.187 | 0.466 ± 0.131 | 0.680 ± 0.135 | 0.627 ± 0.164 | ||||
| OPP | 1.534 ± 1.269 | 1.346 ± 0.926 | 2.034 ± 1.446 | ||||||
| IN | 1.698 ± 0.665 | 1.108 ± 0.273 | 1.077 ± 0.464 | 4.219 ± 6.048 | 4.073 ± 3.701 | 4.314 ± 1.497 | 3.275 ± 1.353 | 2.630 ± 1.272 | |
| Fat | 2.127 ± 0.942 | 2.139 ± 1.294 | 1.023 ± 0.328 | 0.969 ± 0.406 | 2.280 ± 1.620 | 3.323 ± 3.092 | 3.558 ± 1.278 | 3.679 ± 1.062 | 2.387 ± 0.837 |
| Water | 5.246 ± 3.751 | 7.024 ± 5.970 | 8.580 ± 4.235 | 10.513 ± 7.873 | 4.149 ± 4.130 | 5.026 ± 3.748 | 7.629 ± 6.741 | 6.251 ± 0.949 | |
| OPP+W | 1.380 ± 0.779 | 1.020 ± 0.325 | 0.959 ± 0.300 | 1.550 ± 0.658 | 2.887 ± 1.081 | 3.359 ± 1.469 | 3.035 ± 1.897 | 1.964 ± 0.576 | |
Bold numbers indicate highest Dice scores and lowest ASSD scores
Ablation study on AbdomenNet architecture. We report mean Dice scores and average symmetric surface distance per organ and the mean scores across organs
| Liver | Spleen | r.Kidney | l.Kidney | r.Adrenal | l.Adrenal | Pancreas | Gallbladder | Mean | |
|---|---|---|---|---|---|---|---|---|---|
| QuickNAT | 0.948 ± 0.021 | 0.903 ± 0.043 | 0.503 ± 0.141 | 0.505 ± 0.185 | 0.733 ± 0.075 | 0.596 ± 0.206 | 0.754 ± 0.066 | ||
| QuickNAT+Oct | 0.907 ± 0.033 | 0.920 ± 0.015 | 0.916 ± 0.021 | 0.502 ± 0.161 | 0.492 ± 0.161 | 0.739 ± 0.097 | 0.671 ± 0.138 | 0.762 ± 0.059 | |
| AbdomenNet | 0.921 ± 0.013 | 0.919 ± 0.023 | |||||||
| QuickNAT | 1.484 ± 1.005 | 1.373 ± 0.918 | 1.492 ± 0.514 | 1.916 ± 1.026 | 2.184 ± 0.748 | 2.873 ± 2.076 | 1.575 ± 0.500 | ||
| QuickNAT+Oct | 1.284 ± 0.835 | 1.220 ± 0.548 | 0.651 ± 0.131 | 0.815 ± 0.426 | 1.484 ± 0.673 | 1.825 ± 0.900 | 2.208 ± 1.203 | 1.437 ± 0.378 | |
| AbdomenNet | 0.640 ± 0.129 | 0.801 ± 0.534 | 2.093 ± 0.938 | ||||||
Bold numbers indicate highest Dice scores and lowest ASSD scores