| Literature DB >> 31898514 |
David A Hormuth1,2, Angela M Jarrett3,4, Thomas E Yankeelov3,4,5,6,7.
Abstract
BACKGROUND: Intra-and inter-tumoral heterogeneity in growth dynamics and vascularity influence tumor response to radiation therapy. Quantitative imaging techniques capture these dynamics non-invasively, and these data can initialize and constrain predictive models of response on an individual basis.Entities:
Keywords: DCE-MRI; DW-MRI; Diffusion; Glioma; Mathematical modeling
Mesh:
Year: 2020 PMID: 31898514 PMCID: PMC6941255 DOI: 10.1186/s13014-019-1446-2
Source DB: PubMed Journal: Radiat Oncol ISSN: 1748-717X Impact factor: 3.481
Model parameters and variables
| Parameter or variable | Interpretation | Source |
|---|---|---|
| Tumor cell volume fraction | Measured from DW-MRI | |
| Blood volume fraction | Measured from DCE-MRI | |
| Tumor cell proliferation rate | Calibrated | |
| Combined | Calculated | |
| Tumor cell carrying capacity | Calculated Eq. [ | |
| Calibrated | ||
| Shear modulus | Literature [ | |
| Poisson’s Ratio | Literature [ | |
|
| Coupling Constants | Calibrated |
| Coupling Constants | Set to 1 | |
| Threshold on | Calibrated | |
| Max carrying capacity | Calibrated | |
| Minimum value for carrying capacity | Assigned from DW-MRI | |
| Vasculature proliferation rate | Calibrated | |
| Vasculature death rate | Calibrated | |
| Distance top the periphery of the tumor | Calculated | |
| Maximum blood volume | Assigned from DCE-MRI | |
| Treatment efficacy (immediate effect) | Calibrated | |
| Treatment efficacy (long term effect) | Calibrated | |
| Treatment dose (in Gy) | Assigned | |
| Radiosensitivity Parameters | Calibrated | |
| Radiosensitivity Parameter | Assigned | |
| Average pre-treatment | Calculated |
Radiation therapy efficacy coupling approaches
| Coupling approach | Formula | |
|---|---|---|
| Logistic | ||
| Linear quadratic (LQ) | ||
| Vascular | ||
| Oxygen enhanced | ||
| None |
Fig. 1Schematic of experimental and computational methods. Panel a shows our model pre-processing work flow. Images are first registered using a rigid registration algorithm. DW- and DCE-MRI are then used to estimate and at each time point. Using data from t through t, all 10 models are calibrated (panel b) to return estimates of the model parameters that minimize the error between the measurement and model. The AIC is then calculated and used to select the most appropriate model (panel c) that balances model complexity and model fit. The selected model is then used in a forward evaluation to provide a “forecast” (panel d) of future and at t and t. The predicted and are then compared directly back to the measurement obtained from DW- and DCE-MRI
Model selection results
| Radiation therapy coupling model | Global parameters | Local parameters |
|---|---|---|
| 6.85 (0) | 9.69 (0) | |
| 3.08 (3) | 6.77 (0) | |
| α2.62 (5) | 6.92 (0) | |
| 2.85 (5) | 7.38 (0) | |
| 3.08 (0) | 5.77 (0) |
Average rank (number of animals ranked first). α indicates lowest score
Fig. 2Predicted response to radiation therapy for a representative animal receiving 20 Gy. Results are shown over the entire tumor volume for a representative animal receiving a single fraction of 20 Gy. The measured and model predicted and are shown for the RT1 model at t and t, respectively. The fused image depicts areas where there exists perfect agreement between the model and measurement (white areas), where the model exists where the measurement does not (green areas), and where the measurement exists and the model does not (pink areas). The blue contours represent the prediction of the RT2 model. The distributions of and are normalized to the maximum value of and observed in the measurement, and thus share a colorbar ranging from 0 to 1. This particular animal has a relatively spatially homogenous distribution of tumor cells. That is, it appears that no necrosis or low cell density regions have developed despite, poorly vascularized regions observed on the measured . The RT2 model overestimates tumor growth most noticeably in slices 1, 5, 6, and 7. Visually, the RT1 model resulted in accurate predictions of low and high regions at both t and t. The highest level agreement (white areas) was observed for the high region near the brain-skull boundary. Less agreement regions were observed away from the brain-skull boundary
Fig. 3Predicted response to radiation therapy for a representative animal receiving 40 Gy. Results are shown over the entire tumor volume for a representative animal receiving a single fraction of 40 Gy. (The results are presented in an identical fashion to Fig. 2) The RT1 model is capable of predicting the spatial heterogeneity (the development of necrosis) observed in the measured . The RT2 model overestimates the tumor volume at both prediction time points. For , the RT1 model was able to predict areas of low in the interior and areas of high at the periphery of the tumor. The model, however, predicts a lower at the interior of the tumor in comparison to the measurement. The fused images demonstrate a high level of agreement in the tumor (white regions), as well as areas where the model fails to predict future tumor growth extent (pink regions)
Fig. 4Summary statistics for the entire animal cohort. The summary statistics for the RT1 (orange bars) and RT2 (blue bars) are shown for both and predictions. Error bars represent the 95% confidence interval. Panel a shows the percent error in tumor volume at t and t. For the RT1 and RT2 models error ranged from 6.11 to 80.69%. Dice coefficients (panel b) generally decreased overtime with values ranging from 0.55 to 0.80. At the local level, the agreement was assessed using the CCC, resulting in values ranging from 0.63 to 0.78 for predictions (panel c), and 0.59 to 0.73 for predictions (panel d). Statistical significance (p < 0.05) between models are indicated by ‘*’