| Literature DB >> 34848854 |
Ella Mi1,2, Radvile Mauricaite1,2, Lillie Pakzad-Shahabi1,3, Jiarong Chen1,4, Andrew Ho1,5, Matt Williams6,7.
Abstract
BACKGROUND: Glioblastoma is the commonest malignant brain tumour. Sarcopenia is associated with worse cancer survival, but manually quantifying muscle on imaging is time-consuming. We present a deep learning-based system for quantification of temporalis muscle, a surrogate for skeletal muscle mass, and assess its prognostic value in glioblastoma.Entities:
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Year: 2021 PMID: 34848854 PMCID: PMC8770629 DOI: 10.1038/s41416-021-01590-9
Source DB: PubMed Journal: Br J Cancer ISSN: 0007-0920 Impact factor: 7.640
Segmentation metrics for U-Net models trained with Dice, binary cross-entropy and Hausdorff loss functions on the in-house glioblastoma MRI data set.
| Metric | Dice loss | Binary cross-entropy loss | DL vs BCEL | Hausdorff loss | DL vs HDL |
|---|---|---|---|---|---|
| DSC | 0.9124 ± 0.0310 | 0.8931 ± 0.0397 | <0.0005* | 0.7938 ± 0.1326 | <0.0005* |
| JI | 0.8404 ± 0.0514 | 0.8091 ± 0.0623 | <0.0005* | 0.6730 ± 0.1421 | <0.0005* |
| Precision | 0.9253 ± 0.0557 | 0.9164 ± 0.0714 | 0.155 | 0.8571 ± 0.0599 | <0.0005* |
| Recall | 0.9033 ± 0.0448 | 0.8761 ± 0.0494 | 0.002* | 0.7660 ± 0.1751 | <0.0005* |
| HD (mm) | 1.8129 ± 0.3895 | 1.8311 ± 0.3433 | 0.793 | 2.1787 ± 0.4393 | <0.0005* |
All figures are mean ± SD.
DSC Dice coefficient, JI Jaccard index, HD Hausdorff distance, DL Dice loss, BCEL binary cross-entropy loss, HDL Hausdorff loss.
*Significant at p < 0.05.
Fig. 1Automated temporalis segmentations.
Three representative test set MRI head images (T1 weighted + GAD contrast) with overlay of predicted temporalis muscle segmentations by the neural network.
Fig. 2Comparison of ground truth and automated temporalis segmentation muscle areas.
Bland–Altman plot comparing cross-sectional areas of manual and predicted temporalis muscle segmentations in the test set.
Fig. 3Relationship between temporalis muscle area and age.
Distribution of temporalis muscle area vs age in patients in the a in-house glioblastoma patient data set and b TCGA-GBM data set. CSA cross-sectional area.
Fig. 4Relationship between temporalis muscle area and survival in glioblastoma.
Kaplan–Meier survival curves for overall survival (a) and progression-free survival (b) by temporalis muscle area group in the in-house glioblastoma patient data set and overall survival by temporalis muscle area group in the TCGA-GBM data set (c). CSA cross-sectional area.
Hazard ratios for overall and progression-free survival by temporalis muscle area group for in-house glioblastoma patient and TCGA-GBM data sets.
| Patients | Univariate | Multivariate | ||
|---|---|---|---|---|
| HR (95% CI) | HR (95% CI) | |||
| In-house glioblastoma patient data set—OS | ||||
| CSA | 0.444 (0.233–0.845) | 0.013* | 0.464 (0.218–0.988) | 0.046* |
| Age | NA | NA | 1.036 (1.002–1.070) | 0.036* |
| Sex | NA | NA | 1.430 (0.622–3.287) | 0.399 |
| In-house glioblastoma patient data set—PFS | ||||
| CSA | 0.367 (0.190–0.707) | 0.003* | 0.433 (0.218–0.860) | 0.017* |
| Age | NA | NA | 1.028 (0.998–1.059) | 0.067 |
| Sex | NA | NA | 0.938 (0.436–2.014) | 0.869 |
| TCGA-GBM data set—OS | ||||
| CSA | 0.536 (0.299–0.961) | 0.036* | 0.466 (0.235–0.925) | 0.029* |
| Age | NA | NA | 1.029 (1.004–1.056) | 0.025* |
| Sex | NA | NA | 1.887 (0.918–3.880) | 0.084 |
All figures are HR (95% CI).
OS overall survival, PFS progression-free survival, HR hazard ratio, CSA cross-sectional area, NA not applicable.
*Significant at p < 0.05.