| Literature DB >> 31253194 |
Hong Lu1,2, Wei Mu2, Yoganand Balagurunathan2, Jin Qi1,2, Mahmoud A Abdalah2, Alberto L Garcia2, Zhaoxiang Ye3, Robert J Gillies4, Matthew B Schabath5.
Abstract
BACKGROUND: We retrospectively evaluated the capability of radiomic features to predict tumor growth in lung cancer screening and compared the performance of multi-window radiomic features and single window radiomic features.Entities:
Keywords: Indolent lung cancer; Lung cancer screening; Multi-window CT; NLST; Radiomics
Mesh:
Year: 2019 PMID: 31253194 PMCID: PMC6599273 DOI: 10.1186/s40644-019-0232-6
Source DB: PubMed Journal: Cancer Imaging ISSN: 1470-7330 Impact factor: 3.909
Fig. 1Difference region between lung window and mediastinal window settings. a Axial CT show an irregular part-solid nodule in the right upper lobe of lung in lung window. b The solid portion of the nodule showed in mediastinal window. c Based on two windows, the difference region can be obtained.
Demographic characteristic of patients
| Variable | Aggressive cancer ( | Indolent cancer ( | Mixed cancer ( |
|
|---|---|---|---|---|
| Age | 0.196 | |||
| Mean ± SD | 65.29 ± 5.45 | 62.60 ± 4.71 | 65.18 ± 5.17 | |
| Pack years smoked | 0.704 | |||
| Mean ± SD | 65.01 ± 25.83 | 62.40 ± 18.77 | 51.43 ± 16.96 | |
| Sex | 0.006 | |||
| Female | 24 (31.17) | 14(70.00) | 9 (52.94) | |
| Male | 53 (68.83) | 6(30.00) | 8 (47.06) | |
| Family history of lung cancer | 0.386 | |||
| Yes | 20 (25.97) | 6(30.00) | 2 (11.76) | |
| No | 57 (74.03) | 14(70.00) | 15 (88.24) | |
| Smoke status | 0.309 | |||
| Current | 41 (53.25) | 14(70.00) | 8 (47.06) | |
| Former | 36 (46.75) | 6(30.00) | 9 (52.94) | |
| History of COPD | 0.035 | |||
| Yes | 16 (20.78) | 0 (0) | 1 (5.88) | |
| No | 61 (79.22) | 20 (100) | 16 (94.12) | |
Note: Data are presented as n, or n (%) Abbreviation: COPD chronic obstructive pulmonary disease
For the 77 patients with aggressive lung cancer, 16 of them have scans at 3 time points (baseline, the first follow up, the second follow up);For the 20 patients with indolent lung cancer, 2 of them have scans at 3 time points (baseline, the first follow up, the second follow up);For the 17 patients with mixed lung cancer, the nodules of 12 of them have indolent pattern at first but aggressive since the second scan, while the nodules of the rest 5 patients have aggressive pattern at first but indolent since the second scan
Fig. 2The lung cancers with mixed growth pattern during two round of follow up scan. a-c A nodule re-classified from indolent to aggressive. a Baseline scan (T0). Axial CT images show an irregular nodule in right upper lobe. b The first follow up (T1), with the interval days of 406 days and VDT 5713 days. c The second follow up (T2), with the interval days of 355 days and VDT 86 days. d-f A nodule re-classified from aggressive to indolent cancer. d Baseline scan (T0). Axial CT images show an amorphous nodule in left upper lobe. e The first follow up (T1), with the interval days of 430 days and VDT 114 days. f The second follow up (T2), with the interval days of 300 days and VDT 848 days
Multivariable models for the prediction of tumor growth speed
| Covariate | Radiomics features | Radiomics features combined with demographics | |||||
|---|---|---|---|---|---|---|---|
| mOR (95% CI) | Bootstrap mOR | Bootstrap | Covariate | mOR (95% CI) | Bootstrap mOR | Bootstrap | |
| Lung Window Mask | |||||||
| LW_F8 | 1.00 (1.00–1.01) | 1.00 (1.00–1.01) | .004 | Radio_LL | 2.22 (1.51–3.28) | 2.40 (1.38–4.16) | <.001 |
| LW_F87 | 0.77 (0.67–0.88) | 0.77 (0.67–0.88) | <.001 | Sex | 2.37 (0.99–5.68) | 2.38 (0.91–6.22) | .073 |
| LW_F311 | 1903.06 (4.87–7.44 × 105) | 1903.06 (4.87–7.44 × 105) | .016 | COPD | 5.78 (0.68–49.04) | 1.16 × 1016 (0–5.20 × 1056) | .018 |
| AUC | 0.800 (0.717–0.883) | 0.799 (0.717–0.883) | AUC | 0.813 (0.735–0.890) | 0.808 (0.727–0.888) | ||
| Accuracy | 81.33% | 81.33% | Accuracy | 84.00% | 84.00% | ||
| Specificity | 66.67% | 66.67% | Specificity | 58.97% | 58.97% | ||
| Sensitivity | 86.49% | 86.49% | Sensitivity | 92.79% | 92.79% | ||
| Difference Region Mask | |||||||
| DR_F8 | 1.01 (1.00–1.02) | 1.01 (1.00–1.02) | <.001 | Radio_DR | 2.27 (1.56–3.31) | 2.42 (1.45–4.03) | <.001 |
| DR_F87 | 0.80 (0.70–0.92) | 0.78 (0.64–0.96) | <.001 | Sex | 2.47 (1.00–6.08) | 2.54 (0.95–6.81) | .055 |
| DR_F286 | 0.89 (0.80–0.99) | 0.89 (0.78–1.00) | .042 | COPD | 6.47 (0.72–58.03) | 2.41 × 1016 (0–1.17 × 1057) | .006 |
| DA_F311 | 836.55 (1.75–3.99 × 106) | 1499.14 (1.34–1.68 × 106) | .038 | ||||
| AUC | 0.820 (0.743–0.896) | 0.819 (0.742–0.896) | AUC | 0.837 (0.767–0.907) | 0.828 (0.753–0.903) | ||
| Accuracy | 73.33% | 82.00% | Accuracy | 84.00% | 84.67% | ||
| Specificity | 79.49% | 61.54% | Specificity | 69.23% | 69.23% | ||
| Sensitivity | 71.17% | 89.19% | Sensitivity | 89.19% | 90.09% | ||
| Combined Windows Mask | |||||||
| LW_F44 | 66,379.49 (0.64–6.89 × 109) | 5.14 × 105 (1.11–2.37 × 105) | .020 | Radio_Comb | 2.31 (1.62–3.29) | 2.49 (1.46–4.22) | <.001 |
| LW_F311 | 1406.04 (2.53–7.83 × 105) | 2903.14 (1.66–5.06 × 106) | .030 | Sex | 2.17 (0.88–5.35) | 2.23 (0.85–5.84) | .008 |
| DR_F8 | 1.01 (1.00–1.01) | 1.01 (1.00–1.01) | .003 | COPD | 6.90 (0.76–62.40) | 6.53 × 1016 (0–6.87 × 1057) | .017 |
| DR_F87 | 0.80 (0.70–0.93) | 0.78 (0.63–0.98) | .005 | ||||
| DR_F296 | 0.85 (0.75–0.96) | 0.83 (0.70–0.99) | .017 | ||||
| AUC | 0.845 (0.770 to 0.920) | 0.846 (0.772 to 0.920) | AUC | 0.861 (0.791 to 0.931) | 0.855 (0.781 to 0.929) | ||
| Accuracy | 83.33% | 84.00% | Accuracy | 84.67% | 84.67% | ||
| Specificity | 79.49% | 79.49% | Specificity | 76.92% | 76.92% | ||
| Sensitivity | 84.68% | 85.59% | Sensitivity | 87.39% | 87.39% | ||
Note. F8 means statistical 10th percentile, F19 means root mean square, F44 means volume at intensity fraction 90, F87 means weighted CoM_z, F296 means 3D Wavelet P1L2C10 feature, F311 means voxel dimension x, Radio_LL means radiomics score calculated by the selected lung window features; Radio_DR means radomics score calculated from the selected difference region features; Radio_comb means radiomics score calculated from the selected lung window and difference region features
NA, not available. These variables were eliminated in the multivariable logistic regression mode, so the OR and P values were not available
Fig. 3ROC curves for the prediction of tumor growth patterns obtained from 5000* bootstrap resampling. a Multivariable radiomics models b Nomogram models combing the radiomic features and clinical characteristics
Fig. 4a The multi-window CT based Radiomics nomogram created with lung-window radiomic features and difference region radiomic features together. b The clinical nomogram created with clinical characteristics alone