| Literature DB >> 28389624 |
Dominique Barbolosi1, Ilyssa Summer1, Christophe Meille1, Raphaël Serre1, Antony Kelly2, Slimane Zerdoud3, Claire Bournaud4, Claire Schvartz5, Michel Toubeau6, Marie-Elisabeth Toubert7, Isabelle Keller8, David Taïeb9.
Abstract
PURPOSE: Radioiodine therapy (RAI) has traditionally been used as treatment for metastatic thyroid cancer, based on its ability to concentrate iodine. Propositions to maximize tumor response with minimizing toxicity, must recognize the infinite possibilities of empirical tests. Therefore, an approach of this study was to build a mathematical model describing tumor growth with the kinetics of thyroglobulin (Tg) concentrations over time, following RAI for metastatic thyroid cancer. EXPERIMENTALEntities:
Keywords: mathematical model; metastatic thyroid cancer; personalized medicine; radioactive iodine therapy; therapeutic nuclear medicine
Mesh:
Substances:
Year: 2017 PMID: 28389624 PMCID: PMC5503603 DOI: 10.18632/oncotarget.16637
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Estimations of Population Parameters
| Parameter | Value | S.E. (S.A.) | R.S.E. (%) |
|---|---|---|---|
| 1.12e+009 | 1.2e+003 | 0 | |
| 0.319 | 0.068 | 21 | |
| 3.86e-009 | - | - | |
| 0.00407 | - | - | |
| 0.0169 | - | - | |
| 9.8 | 1.6 | 16 | |
| 1.92 | 0.44 | 23 | |
| 2.05e-007 | - | - | |
| 1.16 | 0.23 | 20 | |
| 2.47 | 0.34 | 14 | |
| 0 | - | - | |
| 0 | - | - | |
| 0.3 | - | - | |
| b | 0.372 | 0.031 | 8 |
| 0.275 | 0.089 | 32 | |
| 0.725 | 0.089 | 12 | |
| 9.8 | 1.6 | 16 | |
| 66.6 | 29 | 44 |
Parameter estimates are displayed based of the estimation outputs from Monolix software. The values for the population parameters were found, along with their inter-individual variability. The bottom three values correspond to the confirmation of the mixture algorithm. Bottom: Mixture algorithm from Monolix used to estimate the mode.
Figure 1Observed Stimulated Tg Classification of Patients
Observed stimulated Tg values of patients. This figure represents the group classification visualized by the mixture algorithm by the model, which separates the patients according to the pace of the thyroglobulin evolution curve.
Figure 2Tumor Doubling Time Group Classifications
The boxplot above separates the groups via the tumor doubling, from non-responder Td average 9.8 months, and responder Td average 66.6 months.
Figure 3Visual Predicted Check Scheme
A visual predicted check scheme was done that showed all empirical percentiles were within the corresponding 90% pharmacodynamic confidence intervals.
Figure 4Patient Example Predictions
Model fits for two patients classified as non-responder (P31) and responder (P33). The top 2 subfigures represent the full patient stimulated Tg data and model fits. The bottom two represents the same patients, while using less stimulated Tg data points. The importance of this figure is to demonstrate that while having limited data, the model can still classify patients to whither they will respond or not to treatment.
Figure 5Schematic Model Diagram
A represents the activity of radioiodine, N, represents the metastatic thyroid cancer cell count and Tg, represents the thyroglobulin concentration. Solid lines depict model flow between compartments. Dashed lines depict interactions between compartments.
Description of Variables and Parameters of the model
| Variable | Description | |
|---|---|---|
| Radioiodine Therapy Activity | ||
| Tumor Cells | ||
| Thyroglobulin Concentration | ||
| Parameter | ||
| Delayed target iodine effectiveness rate | ||
| Tumor doubling time under treatment | ||
| Efficiency rate of iodine on tumor cells | 1/ | |
| Elimination rate of thyroglobulin from blood | ||
| Concentration of thyroglobulin produced by one tumor cell |
The model is constructed with three variables, representing the interactions between RAI treatment, metastatic thyroid cells and thyroglobulin concentration. The five parameters of the model are described along with their corresponding units.