| Literature DB >> 35079642 |
I Sanli1, B Osong2, A Dekker2, K TerHaag2, S M J van Kuijk3, J van Soest2, L Wee2, P C Willems1.
Abstract
STUDYEntities:
Keywords: Predictive model; Radiomics; SBM; Spinal bone metastases
Year: 2022 PMID: 35079642 PMCID: PMC8777154 DOI: 10.1016/j.ctro.2021.12.011
Source DB: PubMed Journal: Clin Transl Radiat Oncol ISSN: 2405-6308
Fig. 1Analyses scheme for building the spinal metastases models to predict six months’ survival using radiomics biopsy and clinical information.
Detailed characteristic of the studied cohorts.
| Characteristic | Train on 150 | Validate on 87 | ||||
|---|---|---|---|---|---|---|
| Dead | Alive | p-value | Dead | Alive | p-value | |
| Age at RT in years [mean (Min-Max)] | 67 (24–92) | 68 (46–88) | 0.524 | 72 (50–88) | 67 (39–86) | 0.041 |
| Sex | ||||||
| Male | 39 (48.8 %) | 41 (51.2 %) | 0.844 | 31 (56.4 %) | 24 (43.6 %) | 0.392 |
| Female | 33 (47.1 %) | 37 (52.9 %) | 15 (46.9 %) | 17 (53.1 %) | ||
| WHO performance score | ||||||
| Restricted | 28 (40.0 %) | 42 (60.0 %) | 0.174 | 13 (46.4 %) | 15 (53.6 %) | 0.215 |
| Self-care | 29 (50.0 %) | 29 (50.0 %) | 17 (47.2 %) | 19 (52.8 %) | ||
| Limited Self-care | 14 (66.7 %) | 7 (33.3 %) | 16 (72.7 %) | 6 (27.3 %) | ||
| 1 (100 %) | 0(0.0 %) | 0 (0.0 %) | 1 (100 %) | |||
| Clinical profile | ||||||
| Favorable | 3 (8.8 %) | 31 (91.2 %) | <0.005 | 4 (28.6 %) | 10 (71.4 %) | 0.021 |
| Moderate | 15 (37.5 %) | 25 (62.5 %) | 11 (42.3 %) | 15 (57.7 %) | ||
| Unfavorable | 54 (71.1 %) | 22 (28.9 %) | 31 (66.0 %) | 16(34.0 %) | ||
| Location treated spinal metastases | ||||||
| Diffuse | 22 (66.7 %) | 11 (33.3 %) | 0.212 | 6 (46.2 %) | 7 (53.8 %) | 0.692 |
| Cervical | 4 (40.0 %) | 6 (60.0 %) | 2 (33.3 %) | 4 (66.7 %) | ||
| Lumbar | 23 (40.4 %) | 34 (59.6 %) | 15 (57.7 %) | 11 (42.3 %) | ||
| Thoracic | 23 (46.0 %) | 27 (54.0 %) | 23 (54.8 %) | 19 (45.2 %) | ||
| Number of spinal metastases | ||||||
| 1 | 15 (45.5 %) | 18 (54.5 %) | 0.486 | 10 (66.7 %) | 5 (33.3 %) | 0.308 |
| 2 | 17 (41.5 %) | 24 (58.5 %) | 07 (63.6 %) | 04 (36.4 %) | ||
| 3 or more | 40 (52.6 %) | 36 (47.4 %) | 29 (47.5 %) | 32 (52.5 %) | ||
| # of extra spinal bone metastases | ||||||
| None | 23 (46.9 %) | 26 (53.1 %) | 0.376 | 6 (60.0 %) | 4 (40.0 %) | 0.883 |
| 1 or 2 | 13 (61.9 %) | 8 (38.1 %) | 5 (50.0 %) | 5 (50.0 %) | ||
| 3 or more | 36 (45.0 %) | 44 (55.0 %) | 35 (52.2 %) | 32 (47.8 %) | ||
| Visceral metastases | ||||||
| Present | 32 (59.3 %) | 22 (40.7 %) | 0.038 | 26 (66.7 %) | 13 (33.3 %) | 0.020 |
| Not present | 40 (41.7 %) | 56 (58.3 %) | 20(41.7 %) | 28 (58.3 %) | ||
| Brain metastases | ||||||
| Present | 9 (100 %) | 0 (0.0 %) | 0.001 | 2 (100 %) | 0 (0.0 %) | 0.176 |
| Not present | 63 (44.7 %) | 78 (55.3 %) | 44 (51.8 %) | 41 (48.2 %) | ||
| Pain score | ||||||
| No pain | 1 (33.3 %) | 2 (66.7 %) | 0.251 | 1 (33.3 %) | 2 (66.7 %) | 0.784 |
| Mild | 2 (28.6 %) | 5 (71.4 %) | 2 (66.7 %) | 1 (33.3 %) | ||
| Moderate | 16 (64.0 %) | 9 (36.0 %) | 6 (60.0 %) | 4 (40.0 %) | ||
| Severe | 11 (45.8 %) | 13 (54.2 %) | 10(66.7 %) | 5 (33.3 %) | ||
| Very severe | 19 (48.7 %) | 20 (51.3 %) | 10 (43.5 %) | 13 (56.5 %) | ||
| Worst possible | 6 (75.0 %) | 2 (25.0 %) | 2 (40.0 %) | 3 (60.0 %) | ||
| 17 (38.6 %) | 27 (61.4 %) | 15 (53.6 %) | 13 (46.4 %) | |||
| Pathological fracture | ||||||
| Yes | 15 (50.0 %) | 15 (50.0 %) | 0.806 | 14 (53.8 %) | 12 (46.2 %) | 0.906 |
| No | 57 (47.5 %) | 63 (52.5 %) | 32(52.5 %) | 29 (47.5 %) | ||
| Spinal compression | ||||||
| Yes | 8 (28.6 %) | 20 (71.4 %) | 0.022 | 12 (54.5 %) | 10 (45.5 %) | 0.856 |
| No | 64 (52.5 %) | 58 (47.5 %) | 34 (52.3 %) | 31 (47.7 %) | ||
| lymphatic metastases | ||||||
| Present | 32 (53.3 %) | 28 (46.7 %) | 0.286 | 24 (53.3 %) | 21 (46.7 %) | 0.929 |
| Not present | 40 (44.4 %) | 50 (55.6 %) | 22 (52.4 %) | 20 (47.6 %) | ||
RT: Radiotherapy, #: Number.
Inter-observer analysis, showing the ICC values and the number of stable features per feature group, defined as high (ICC ≥ 0.8), median (0.8 > ICC ≤ 0.5), and low (ICC < 0.5) stability.
| Stability class | N | ICC | ICC (95 % CI) | |
|---|---|---|---|---|
| 1 | First order statistics | |||
| High stability | 8 | 0.810 | 0.795–0.823 | |
| Medium stability | 8 | 0.510 | 0.478–0.540 | |
| Low stability | 1 | 0.330 | 0.292–0.366 | |
| 2 | Gray Level Co-occurrence Matrix (GLCM) | |||
| High stability | 3 | 0.820 | 0.805–0.833 | |
| Medium stability | 13 | 0.500 | 0.468–0.530 | |
| Low stability | 6 | 0.240 | 0.200–0.278 | |
| 3 | Gray Level Run Length Matrix (GLRLM) | |||
| High stability | 1 | 0.810 | 0.795–0.823 | |
| Medium stability | 7 | 0.52 | 0.488–0.549 | |
| Low stability | 8 | 0.240 | 0.200–0.278 | |
| 4 | Gray Level Size Zone Matrix (GLSZM) | |||
| High stability | 5 | 0.810 | 0.795–0.823 | |
| Medium stability | 7 | 0.54 | 0.509–0.568 | |
| Low stability | 4 | 0.24 | 0.200–0.278 | |
| 5 | Gray Level Dependence Matrix (GLDM) | |||
| High stability | 2 | 0.820 | 0.805–0.833 | |
| Medium stability | 6 | 0.680 | 0.656–0.701 | |
| Low stability | 6 | 0.240 | 0.200–0.278 | |
| 6 | Neighbouring Gray Tone Difference Matrix (NGTDM) | |||
| High stability | 1 | 0.800 | 0.784–0.814 | |
| Medium stability | 4 | 0.500 | 0.468–0.530 | |
| Low stability | – | – | – | |
Fig. 2Bootstrap (B = 400) stepwise variable selection procedure for the clinical and radiomics data. The green bars show the percentage of time a variable was selected. The blue and red triangles (Coef Sign) show a represented rate of times the variable’s coefficient was positive or negative in each bootstrap run, respectively. The horizontal line shows the cut-off point for selected variables. (For interpretation of the references to colour in this figure legend, the reader is referred to the web version of this article.)
Univariate and multivariate predictive performance of the scores.
| Variables | Training Data | Testing data | |
|---|---|---|---|
| C-index (95 % CI) | p-value | C-index (95 % CI) | |
| RadScore | 0.623 (0.553–0.693) | <0.05 | 0.570 (0.497–0.642) |
| ClinScore | 0.731 (0.682–0.801) | <0.05 | 0.686 (0.602–0.770) |
| RadScore | 0.740 (0.686–0.794) | 0.01 | 0.669 (0.598–0.740) |
| ClinScore | <0.05 | ||
Fig. 3Calibration plots for clinscore and radscore, respectively, for the train(top) and test(bottom) data. The predicted survival is plotted on the x-axis, and the actual survival is plotted on the y-axis. The dotted gray line represents an ideal fit where the predicted probabilities perfectly match the observed probabilities. The diamonds show the estimated model performance, and the crosses indicate bias-corrected estimates.
Fig. 4Histogram of the clinscore and radscore in the train and test datasets respectively. The red arrows indicates the optimal cut-off point used to categorize the patients into a low and high risk groups in each dataset. (For interpretation of the references to colour in this figure legend, the reader is referred to the web version of this article.)
Fig. 5Kaplan-Meier curves for six months’ survival in the low and high-risk groups based on the cut-off points in the clinscore and radscore for the train (top) and test (below) datasets, respectively.