| Literature DB >> 35328128 |
Lena Bundschuh1, Vesna Prokic2,3, Matthias Guckenberger4, Stephanie Tanadini-Lang4, Markus Essler1, Ralph A Bundschuh1.
Abstract
Positron emission tomography (PET) provides important additional information when applied in radiation therapy treatment planning. However, the optimal way to define tumors in PET images is still undetermined. As radiomics features are gaining more and more importance in PET image interpretation as well, we aimed to use textural features for an optimal differentiation between tumoral tissue and surrounding tissue to segment-target lesions based on three textural parameters found to be suitable in previous analysis (Kurtosis, Local Entropy and Long Zone Emphasis). Intended for use in radiation therapy planning, this algorithm was combined with a previously described motion-correction algorithm and validated in phantom data. In addition, feasibility was shown in five patients. The algorithms provided sufficient results for phantom and patient data. The stability of the results was analyzed in 20 consecutive measurements of phantom data. Results for textural feature-based algorithms were slightly worse than those of the threshold-based reference algorithm (mean standard deviation 1.2%-compared to 4.2% to 8.6%) However, the Entropy-based algorithm came the closest to the real volume of the phantom sphere of 6 ccm with a mean measured volume of 26.5 ccm. The threshold-based algorithm found a mean volume of 25.0 ccm. In conclusion, we showed a novel, radiomics-based tumor segmentation algorithm in FDG-PET with promising results in phantom studies concerning recovered lesion volume and reasonable results in stability in consecutive measurements. Segmentation based on Entropy was the most precise in comparison with sphere volume but showed the worst stability in consecutive measurements. Despite these promising results, further studies with larger patient cohorts and histopathological standards need to be performed for further validation of the presented algorithms and their applicability in clinical routines. In addition, their application in other tumor entities needs to be studied.Entities:
Keywords: lung cancer; positron emission tomography (PET); radiation therapy treatment planning; radiomics; textural features; tumor volume segmentation
Year: 2022 PMID: 35328128 PMCID: PMC8947476 DOI: 10.3390/diagnostics12030576
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Figure 1Scheme of the segmentation algorithms.
Results of the segmentation using the different algorithms of the phantom data (mean, relative difference to true volume, range, absolute and relative standard deviation).
| Segmentation | Sphere | Mean | Difference | Range | Absolute Stdv | Relative Stdv |
|---|---|---|---|---|---|---|
| Threshold-based | Large (26 ccm) | 25.0 | 3.9 | 24.4–25.4 | 0.3 | 1.2 |
| Medium (12 ccm) | 10.8 | 10.0 | 10.5–11.5 | 0.4 | 3.3 | |
| Small (3 ccm) | 2.3 | 23.3 | 2.0–2.5 | 0.1 | 5.7 | |
| Kurtosis-based | Large (26 ccm) | 27.0 | 3.9 | 25.6–30.1 | 1.2 | 4.3 |
| Medium (12 ccm) | 13.5 | 12.5 | 11.9–15.1 | 0.8 | 6.0 | |
| Small (3 ccm) | 3.0 | 0.0 | 2.5–3.4 | 0.3 | 8.2 | |
| Entropy-based | Large (26 ccm) | 26.5 | 1.9 | 21.9–30.4 | 2.3 | 8.6 |
| Medium (12 ccm) | 12.2 | 1.7 | 10.6–13.4 | 0.7 | 5.6 | |
| Small (3 ccm) | 3.1 | 3.3 | 2.7–3.5 | 0.2 | 7.8 | |
| LZE-based | Large (26 ccm) | 27.1 | 4.2 | 25.0–29.0 | 1.1 | 4.2 |
| Medium (12 ccm) | 13.4 | 11.7 | 12.0–14.9 | 0.7 | 4.9 | |
| Small (3 ccm) | 3.1 | 3.3 | 2.6–3.6 | 0.3 | 8.4 |
Figure 2Box-and-whisker plots of the segmentation of the large sphere using the four different algorithms.
Results of the segmentation using the different segmentation algorithms in five patients after motion correction including motion amplitude in x (anterior–posterior), y (left–right), and z (cranial–caudal) directions.
| Patient. | Lesion Location | Motion | Segmented Lesion Volume (ccm) | |||
|---|---|---|---|---|---|---|
| thd-Based | Kurtosis-Based | Entropy-Based | LZE-Based | |||
| 1 | Lower-right lobe | 2, 1, 12 | 46.6 | 50.1 | 47.6 | 52.3 |
| 2 | Lower-left lobe | 3, 1, 9 | 8.2 | 8.9 | 9.3 | 9.0 |
| 3 | Center-right lobe | 2, 2, 8 | 6.4 | 12.5 | 7.9 | 8.6 |
| 4 | Lower-right lobe | 4, 0, 14 | 3.1 | 4.3 | 3.9 | 4.6 |
| 5 | Lower-left lobe | 3, 2, 12 | 32.2 | 36.7 | 34.6 | 34.9 |
Figure 3Example of patient 1 (MIP on the left) and segmented volume in transaxial slice for the threshold-based (A), the Kurtosis-based (B), the Entropy-based (C) and the LZE-based (D) algorithms.
Results of the segmentation using the different segmentation algorithms in five patients without previous application of the motion-correction algorithm as well as relative difference to the motion-corrected values in parenthesis following the values.
| Patient | Lesion Location | Segmented Lesion Volume (ccm) | |||
|---|---|---|---|---|---|
| thd-Based | Kurtosis-Based | Entropy-Based | LZE-Based | ||
| 1 | Lower-right lobe | 56.4 (17.4%) | 63.1 (20.6%) | 58.6 (18.8%) | 64.8 (19.3%) |
| 2 | Lower-left lobe | 8.7 (5.8%) | 9.7 (8.3%) | 9.5 (2.1%) | 10.1 (10.9%) |
| 3 | Center-right lobe | 7.1 (9.9%) | 14.9 (16.1%) | 9.6 (17.7%) | 10.2 (15.7%) |
| 4 | Right-lower lobe | 3.4 (8.8%) | 4.3 (0.0%) | 5.0 (22.0%) | 4.3 (−7.0%) |
| 5 | Lower-left lobe | 38.0 (15.3%) | 40.1 (8.5%) | 41.2 (16.0%) | 39.6 (11.9%) |