| Literature DB >> 36032350 |
Simon A Keek1, Esma Kayan1, Avishek Chatterjee1, José S A Belderbos2, Gerben Bootsma3, Ben van den Borne4, Anne-Marie C Dingemans5, Hester A Gietema6, Harry J M Groen7, Judith Herder8, Cordula Pitz9, John Praag10, Dirk De Ruysscher11, Janna Schoenmaekers12, Hans J M Smit13, Jos Stigt14, Marcel Westenend15, Haiyan Zeng11, Henry C Woodruff1, Philippe Lambin1, Lizza Hendriks16.
Abstract
Introduction: Despite radical intent therapy for patients with stage III non-small-cell lung cancer (NSCLC), cumulative incidence of brain metastases (BM) reaches 30%. Current risk stratification methods fail to accurately identify these patients. As radiomics features have been shown to have predictive value, this study aims to develop a model combining clinical risk factors with radiomics features for BM development in patients with radically treated stage III NSCLC.Entities:
Keywords: CT; metastatic brain tumours; non-small-cell lung cancer; predictive biomarker; tumour biology
Year: 2022 PMID: 36032350 PMCID: PMC9403451 DOI: 10.1177/17588359221116605
Source DB: PubMed Journal: Ther Adv Med Oncol ISSN: 1758-8340 Impact factor: 5.485
Figure 1.CONSORT diagram for patient selection.
CE, contrast-enhanced; CT, computed tomography; MRI, magnetic resonance imaging; NSCLC, non-small-cell lung cancer; PCI, prophylactic cranial irradiation; ROI, region of interest.
Baseline characteristics of patients assigned to training and validation sets.
| Characteristic | Training set | Validation set | Total |
|
|---|---|---|---|---|
| Gender | 0.939 | |||
| Male | 87 (61.3) | 46 (59.7) | 133 (60.7) | |
| Female | 55 (38.7) | 31 (40.3) | 86 (39.3) | |
| Age (years) | ||||
| Mean ± SD | 68.6 ± 8.3 | 63.6 ± 8.2 | 66.8 ± 8.6 | < 0.001 |
| Range | 47.5–88.6 | 47.2–85.0 | 47.2–88.6 | |
| <60 years | 26 (18.3) | 28 (36.4) | 54 (24.7) | 0.005 |
| >60 years | 116 (81.7) | 49 (63.6) | 165 (75.3) | |
| WHO PS | 0.293 | |||
| 0 | 53 (37.3) | 26 (33.8) | 79 (36.1) | |
| 1 | 68 (47.9) | 45 (58.4) | 113 (51.6) | |
| 2 | 16 (11.3) | 3 (3.9) | 19 (8.7) | |
| 3 | 2 (1.4) | 2 (2.6) | 4 (1.8) | |
| Unknown | 3 (2.1) | 1 (1.3) | 4 (1.8) | |
| Smoking status | 0.163 | |||
| Never | 5 (3.5) | 2 (2.6) | 7 (3.2) | |
| Former | 64 (45.1) | 45 (58.4) | 109 (49.8) | |
| Current | 69 (48.6) | 30 (39.0) | 99 (45.2) | |
| Unknown | 4 (2.8) | 0 (0) | 4 (1.8) | |
| TNM stage | 0.415 | |||
| IIIA | 76 (53.5) | 36 (46.8) | 112 (51.1) | |
| IIIB | 66 (46.5) | 41 (53.2) | 107 (48.9) | |
| Histology | 0.382 | |||
| Adenocarcinoma | 55 (38.7) | 28 (36.4) | 83 (37.9) | |
| Squamous cell carcinoma | 62 (43.7) | 30 (39.0) | 92 (42.0) | |
| Large-cell carcinoma | 5 (3.5) | 7 (9.1) | 12 (5.5) | |
| Sarcomatoid | 1 (0.7) | 0 (0) | 1 (0.5) | |
| LCNEC | 2 (1.4) | 0 (0) | 2 (0.9) | |
| NOS | 17 (12.0) | 12 (15.6) | 29 (13.2) | |
| BM diagnosed | 0.241 | |||
| Yes | 21 (14.8) | 17 (22.1) | 38 (17.4) | |
| No | 121 (85.2) | 60 (77.9) | 181 (82.6) | |
| Baseline brain MRI or brain CECT | <0.001 | |||
| MRI | 142 (100) | 66 (85.7) | 208 (95) | |
| Only CECT | 0 (0) | 11 (14.3) | 11 (5) | |
| Treatment received | 0.233 | |||
| CCRT ± surgery | 100 (70.4) | 61 (79.2) | 161 (73.5) | |
| SCRT ± surgery | 35 (24.6) | 15 (19.5) | 50 (22.8) | |
| Radical RT | 7 (4.9) | 1 (1.3) | 8 (3.7) | |
BM, brain metastases; CCRT, concurrent chemo radiotherapy; CECT, contrast-enhanced computed tomography; LCNEC, large-cell neuroendocrine carcinoma; MRI, magnetic resonance imaging; NOS, not otherwise specified; RT, radiotherapy; SCRT, sequential chemo radiotherapy; SD, standard deviation; TNM, tumour, node, metastasis; WHO PS, World Health Organization Performance Status: 0–1: good, 2–3: poor.
Selected clinical and radiomics features with corresponding univariate AUC, and Spearman’s correlation with volume.
| Feature names | AUC | Correlation with volume | |
|---|---|---|---|
| Clinical features | Adenocarcinoma | 0.66 | – |
| Age (continuous) | 0.73 | – | |
| Radiomics features | 1 mm LoG GLSZM normalized size-zone non-uniformity | 0.60 | −0.24 |
| 2 mm LoG GLCM correlation | 0.62 | 0.52 | |
| 2 mm LoG GLCM informational measure of correlation 1 | 0.61 | −0.55 | |
| 2 mm LoG GLCM informational measure of correlation 2 | 0.62 | 0.30 | |
AUC, area under the curve; GLCM, grey-level correlation matrix; GLSZM, grey-level size-zone matrix; LoG, Laplacian of Gaussian.
Figure 2.(a) ROC curve and the corresponding confidence interval of 95% in blue of the clinical model, with AUC and 95% confidence interval shown. On the y-axis is the sensitivity and on the x-axis the specificity of the model at different classification thresholds. The dashed lines show the sensitivity and specificity for the threshold that was used to make the binary prediction. (b) Confusion matrix with proportions of correct and wrong predictions made by the clinical model (y-axis) relative to the true labels (x-axis).
AUC, area under the curve; ROC, receiver operating characteristic.
Figure 3.(a) ROC curve and the corresponding confidence interval of 95% in blue of the radiomics model, with AUC and 95% confidence interval shown. On the y-axis is the sensitivity and on the x-axis the specificity of the model at different classification thresholds. The dashed lines show the sensitivity and specificity for the threshold that was used to make the binary prediction. (b) Confusion matrix with proportions of correct and wrong predictions made by the radiomics model (y-axis) relative to the true labels (x-axis).
AUC, area under the curve; ROC, receiver operating characteristic.
Figure 4.(a) ROC curve and the corresponding confidence interval of 95% in blue of the clinical and radiomics model, with AUC and 95% confidence interval shown. On the y-axis is the sensitivity and on the x-axis the specificity of the model at different classification thresholds. The dashed lines show the sensitivity and specificity for the threshold that was used to make the binary prediction. (b) Confusion matrix with proportions of correct and wrong predictions made by the clinical and radiomics model (y-axis) relative to the true labels (x-axis).
AUC, area under the curve; ROC, receiver operating characteristic.
Study parameters of radiomics studies on BM or DM prediction in NSCLC.
| Study name | Coroller | Chen | Xu | Present study (2021) |
|---|---|---|---|---|
| Study population | Stage II–III/adenocarcinoma | T1-stage/adenocarcinoma | Stage III–IV/ALK positive | Stage IIIA/B |
| Sample size | ||||
| Primary outcome | DM | BM | BM | BM |
| Number of events in FU | 69 (37.9%) | 35 (39.3%) | 27 (25.7%) | 38 (17.4%) |
| Staging | ? | T1/N-stage based on non-CECT | ‘By medical images’ | Full imaging |
| 18F-FDG-PET-CT | − | − | ? | + |
| Brain MRI/CECT (% MRI received) | (N/A) | + (Not reported) | + (Not reported) | + (95) |
| Chest CECT | − | − | + | + |
| Pathological analysis | Pathologically confirmed lung adenocarcinoma | ‘Pathologically confirmed disease’ | Pathologically confirmed ALK | – |
| Imaging modality | Planning CT + GTV (patients excluded if CTx/surgery was before RTx scheduled date) | Pre-treatment non-CECT | Pre-treatment CECT + RTstruct | Pre-treatment CECT + RTstruct |
| Predictive performance (95% CI) | CI > 0.6 (−) | AUC 0.85 (0.767–0.933) | AUC 0.64 (0.501–0.783) | AUC 0.62 (0.47–0.76) |
| Strengths | (+) Pathologically confirmed | (+) Pathologically confirmed | (+) Pathologically confirmed | (+) Pathologically confirmed |
| Limitations | (−) Unclear staging | (−) Unclear staging; T1/N-stage determined with
non-CECT | (−) Unclear staging; PET-CT not reported | (−) Relatively low number of BM |
ALK, anaplastic lymphoma kinase; BM, brain metastasis; (CE-)CT, contrast-enhanced computed tomography; CTx, chemotherapy; DM, distant metastasis; 18F-FDG-PET-CT, 18F-fluorodeoxyglucose positron emission tomography-computed tomography; FU, follow-up; GTV: gross tumor volume LN, lymph node; MRI, magnetic resonance imaging; N, lymph node stage; NSCLC, non-small-cell lung cancer; RTx, radiotherapy; T1, tumour stage 1.