| Literature DB >> 30707277 |
Chao Li1,2,3, Shuo Wang4,5, Angela Serra6,7,8, Turid Torheim9,10, Jiun-Lin Yan11,12,13, Natalie R Boonzaier11,14, Yuan Huang4, Tomasz Matys5, Mary A McLean5,9, Florian Markowetz9,10, Stephen J Price11,15.
Abstract
OBJECTIVES: Integrating multiple imaging modalities is crucial for MRI data interpretation. The purpose of this study is to determine whether a previously proposed multi-view approach can effectively integrate the histogram features from multi-parametric MRI and whether the selected features can offer incremental prognostic values over clinical variables.Entities:
Keywords: Glioblastoma; Machine learning; Magnetic resonance imaging; Prognosis; Survival analysis
Mesh:
Substances:
Year: 2019 PMID: 30707277 PMCID: PMC6682853 DOI: 10.1007/s00330-018-5984-z
Source DB: PubMed Journal: Eur Radiol ISSN: 0938-7994 Impact factor: 5.315
Fig. 1Study design. DTI-p and DTI-q maps are generated from diffusion tensor imaging (DTI). The relative cerebral blood volume (rCBV), mean transit time (MTT), and relative cerebral blood flow (rCBF) maps are generated from dynamic susceptibility contrast (DSC) imaging. Histogram features extracted from the multiple modalities and regions (contrast-enhancing and non-enhancing) are treated as four independent views. Each view is firstly clustered to select centroid features, which are later used to cluster patients. The resulting clusters from each view are integrated to yield two final patient clusters. A leave-one-out cross validation is performed. Patient clusters are assessed in survival analysis and their metabolic signatures are compared. The centroid features are ranked according to the importance in the clustering and selected features are used to build multi-variate prognostic model
Clinical characteristics
| Variable | Patient number | |||
|---|---|---|---|---|
| Total ( | Cluster 1 ( | Cluster 2 ( | ||
| Age at diagnosis | ||||
| < 60 | 35 | 18 | 16 | 0.058 |
| ≥ 60 | 45 | 35 | 11 | |
| Sex | ||||
| Male | 58 | 41 | 17 | 0.201 |
| Female | 22 | 12 | 10 | |
| Extent of resection (of enhancing tumor) | ||||
| Complete resection | 56 | 35 | 21 | 0.267 |
| Partial resection | 22 | 17 | 5 | |
| Biopsy | 2 | 1 | 1 | |
| MGMT-methylation status* | ||||
| Methylated | 37 | 24 | 13 | 0.929 |
| Unmethylated | 41 | 27 | 14 | |
| IDH-1 mutation status | ||||
| Mutant | 7 | 4 | 3 | 0.622 |
| Wild-type | 73 | 49 | 24 | |
| Preoperative tumor volumes (cm3) # | ||||
| Contrast-enhancing | 49.7 ± 28.1 | 50.2 ± 28.4 | 50.4 ± 28.1 | 0.823 |
| Non-enhancing | 64.7 ± 48.3 | 48.7 ± 27.9 | 92.8 ± 53.5 |
|
| Survival (days) | ||||
| Median OS (range) | 461 (52–1259) | 424 (52–839) | 689 (109–1259) |
|
| Median PFS (range) | 264(25–1130) | 248 (25–607) | 318 (279–1130) |
|
Italics: p < 0.05
*MGMT-methylation status unavailable for 2 patients; mean ± SD of original data; †log-rank test
MGMT O-6-methylguanine-DNA methyltransferase, IDH-1 isocitrate dehydrogenase 1, OS overall survival, PFS progression-free survival
Fig. 2Multi-view feature selection. In each view, all features are clustered using the hierarchical ward clustering method. The centroid features (marked by yellow stars) are selected to represent each view. a View 1 (CE-DTI); b view 2 (NE-DTI); c view 3 (CE-PWI); d view 4 (NE-PWI)
Centroid features in each view
| View | Features |
|---|---|
| View1: CE-diffusion | Mean-p-CE |
| Prc25-p-CE | |
| Kurtosis -p-CE | |
| Mean-q-CE | |
| Kurtosis-q-CE | |
| View2: NE-diffusion | Mean-p-NE |
| Kurtosis-p-NE | |
| Mean-q-NE | |
| Kurtosis-q-NE | |
| View3: CE-perfusion | Prc75-rCBF-CE |
| Prc5-rCBV-CE | |
| Kurtosis-rCBV-CE | |
| Kurtosis-rCBF-CE | |
| Prc95-MTT-CE | |
| Median-MTT-CE | |
| Kurtosis-MTT-CE | |
| View4: NE-perfusion | Prc25-rCBV-NE |
| SD-rCBV-NE | |
| Skewness-rCBV-NE | |
| Median-MTT-NE | |
| SD-MTT-NE | |
| Kurtosis-MTT-NE |
CE contrast-enhancing region, NE non-enhancing region, Prc25/Prc75/Prc95 25th/75th/95th percentiles of histogram
Fig. 3Leave-one-out cross validation of patient clustering. After multi-view clustering, consensus analysis was performed based on the 80 clustering results obtained after the leave-one-out cross validation. The mean value of the co-occurrence consensus clustering matrix was 0.79 for patient Cluster 1 and 0.68 for patient Cluster 2
Fig. 4Survivals of patient clusters. Log-rank test showed patient Cluster 2 displayed better OS (p = 0.020) (a) and PFS (p < 0.001) (b). Higher man value of DTI-q in the non-enhancing region (Mean-q-NE) was associated with a worse OS (p = 0.002) (c) and PFS (p < 0.001) (d)
Fig. 5Feature ranking. The centroid features were ranked according to the importance in the clustering. The scores were scaled with a maximum value of 100
Survival statistics of selected feature
| Feature | Progression-free survival* | Overall survival* | ||||||
|---|---|---|---|---|---|---|---|---|
| HR | 95% CI | HR | 95% CI | |||||
| Mean-p-NE | 0.79 | 0.58–1.08 | 0.143 |
| 0.74 | 0.53–1.04 | 0.083 |
|
| Mean-q-NE | 1.40 | 1.05–1.86 |
|
| 1.36 | 1.03–1.79 |
|
|
| Prc25-rCBV-NE | 1.28 | 0.94–1.74 | 0.121 | 0.052 | 1.53 | 1.09–2.14 |
|
|
| Kurtosis-p-NE | 1.18 | 0.85–1.63 | 0.326 | 0.168 | 1.66 | 1.15–2.39 |
|
|
| Mean-q-CE | 1.17 | 0.90–1.51 | 0.245 |
| 1.17 | 0.89–1.55 | 0.268 | 0.197 |
| Prc25-p-CE | 0.88 | 0.66–1.17 | 0.369 |
| 0.79 | 0.56–1.10 | 0.165 |
|
| Prc95-rCBF-NE | 1.11 | 0.88–1.40 | 0.358 |
| 1.15 | 0.88–1.51 | 0.307 | 0.063 |
Italics: p < 0.05
*Cox models accounted for IDH-1 mutation status, MGMT methylation status, sex, age, extent of resection, and contrast-enhancing tumor volume
HR hazard ratio, CI confidence interval, p isotropic diffusivity of DTI, q anisotropic diffusivity of DTI, Prc25/Prc95 25th/95th percentiles of histogram, CE contrast-enhancing region, NE non-enhancing region
Fig. 6ROC curve analysis. ROC curves showed that the models of 12-month OS (left) and PFS (right) were significantly improved (p = 0.020, and p = 0.022 respectively) by adding the seven most important histogram features into the baseline models