| Literature DB >> 34449713 |
Ankush Jajodia1, Ayushi Gupta2, Helmut Prosch3, Marius Mayerhoefer4, Swarupa Mitra5, Sunil Pasricha6, Anurag Mehta7, Sunil Puri1, Arvind Chaturvedi1.
Abstract
OBJECTIVES: To explore the potential of Radiomics alone and in combination with a diffusion-weighted derived quantitative parameter, namely the apparent diffusion co-efficient (ADC), using supervised classification algorithms in the prediction of outcomes and prognosis.Entities:
Keywords: MRI; cervical cancer; diffusion-weighted; radiomics
Mesh:
Year: 2021 PMID: 34449713 PMCID: PMC8396356 DOI: 10.3390/tomography7030031
Source DB: PubMed Journal: Tomography ISSN: 2379-1381
Clinical characteristics of patients included in study.
| Clinical Parameters | Total |
|---|---|
| Age range | 28–79 (Median = 53 years) |
| FIGO Stage | |
| IB2 | 3 (5.7%) |
| IIA | 8 (15.5%) |
| IIB | 16 (30.7%) |
| IIIA | 16 (30.7%) |
| IIIB | 4 (7.7%) |
| IVA | 3 (5.7%) |
| Clinical Outcomes/Variables | |
| Recurrence/No recurrence | 12/40 (23%/77%) |
| Distant Metastatic/Non metastatic | 15/37 (28%/72%) |
| Metastasis to Lung/Other sites | 5/10 (9%/19%) |
| Lymph node Present/Absent | 15/37 (28%/72%) |
| Paraaortic lymph node/Pelvic node | 2/13 (3.8%/25%) |
| Mean follow up | 29.9 months |
| Median follow up | 28.5 months |
| Mean recurrence interval | 18.5 months |
Tabulated content of recurrence with relevant classifier algorithm and corresponding AUC with Kappa values.
| Output | Features | Model | Metric | AUC | Kappa |
|---|---|---|---|---|---|
| Recurrence | Radiomics | pcaNNet | Kappa + AUC | 0.77 | 0.53 |
| Radiomics + ADC1 + ADC2 + Change ADC | svmLinearWeights | Kappa + AUC | 0.76 | 0.49 | |
| Radiomics + ADC1 | Monmlp | Kappa + AUC | 0.8 | 0.55 | |
| Radiomics + change ADC | RRFglobal | Kappa | 0.74 | 0.5 | |
| Radiomics + change ADC | svmLinearWeights | AUC | 0.77 | 0.48 | |
| ADC | FRBCS.W | Kappa + AUC | 0.57 | 0.17 |
Tabulated content of metastasis with relevant classifier algorithm and corresponding AUC with Kappa values.
| Output | Features | Model | Metric | AUC | Kappa |
|---|---|---|---|---|---|
| Metastasis | Radiomics | svmLinearWeights | Kappa + AUC | 0.76 | 0.5 |
| Radiomics + ADC1 + ADC2 + Change ADC | pcaNNet | Kappa + AUC | 0.84 | 0.65 | |
| Radiomics + ADC1 | pcaNNet | Kappa + AUC | 0.79 | 0.59 | |
| Radiomics + change ADC | pcaNNet | Kappa + AUC | 0.73 | 0.46 | |
| ADC | Rocc | Kappa | 0.63 | 0.3 | |
| ADC | svmLinearWeights | AUC | 0.67 | 0.27 |
Tabulated content of stage with relevant classifier algorithm and corresponding AUC with Kappa values.
| Output | Features | Model | Metric | AUC | Kappa |
|---|---|---|---|---|---|
| Stage | Radiomics | RRFglobal | Kappa | 0.51 | 0.31 |
| Radiomics | Knn | AUC | 0.71 | 0.25 | |
| Radiomics + ADC1 + ADC2 + Change ADC | Earth | Kappa | 0.64 | 0.3 | |
| Radiomics + ADC1 + ADC2 + Change ADC | Knn (k-Nearest Neighbors) | AUC | 0.71 | 0.25 | |
| Radiomics + ADC1 | Evtree | Kappa | 0.63 | 0.33 | |
| Radiomics + ADC1 | Knn (k-Nearest Neighbors) | AUC | 0.71 | 0.25 | |
| Radiomics + change ADC | Earth | Kappa | 0.64 | 0.31 | |
| Radiomics + change ADC | Knn (k-Nearest Neighbors) | AUC | 0.71 | 0.25 | |
| ADC | RRFglobal | Kappa | 0.57 | 0.19 | |
| ADC | LogitBoost | AUC | 0.66 | 0.06 |
Tabulated content of lymph node with relevant classifier algorithm and corresponding AUC with Kappa values.
| Output | Features | Model | Metric | AUC | Kappa |
|---|---|---|---|---|---|
| Lymph Node | Radiomics | evtree (Tree Models from Genetic Algorithms) | Kappa + AUC | 0.75 | 0.6 |
| Radiomics + ADC1 + ADC2 + Change ADC | evtree (Tree Models from Genetic Algorithms) | Kappa + AUC | 0.75 | 0.6 | |
| Radiomics + ADC1 | evtree (Tree Models from Genetic Algorithms) | Kappa + AUC | 0.75 | 0.6 | |
| Radiomics + change ADC | evtree (Tree Models from Genetic Algorithms) | Kappa + AUC | 0.75 | 0.6 | |
| ADC | evtree (Tree Models from Genetic Algorithms) | Kappa + AUC | 0.64 | 0.32 |
Figure 1Heat map showing correlation between different radiomics and ADC features with the two classes of lymph node (absent and present).
Figure 2Heat map showing correlation between different radiomics and ADC features with the two classes of distant metastasis (absent and present).
Figure 3Heat map showing correlation between different radiomics and ADC features with the two classes of recurrence (absent and present).
Figure 4Heat map showing correlation between each feature with clinical outcomes desired in this study design.