| Literature DB >> 31138288 |
Pedro José Gutiérrez-Diez1, Miguel Ángel López-Marcos2, Julia Martínez-Rodríguez3, Jose Russo4.
Abstract
BACKGROUND: The mathematical design of optimal therapies to fight cancer is an important research field in today's Biomathematics and Biomedicine given its relevance to formulate patient-specific treatments. Until now, however, cancer optimal therapies have considered that malignancy exclusively depends on the drug concentration and the number of cancer cells, ignoring that the faster the cancer grows the worse the cancer is, and that early drug doses are more prejudicial. Here, we analyze how optimal therapies are affected when the time evolution of treated cancer is envisaged as an additional element determining malignancy, analyzing in detail the implications for imatinib-treated Chronic Myeloid Leukemia.Entities:
Keywords: Chronic myeloid leukemia; Hematopoiesis; Imatinib therapy; Optimal control problem; System of difference equations; Time valuation factor
Mesh:
Year: 2019 PMID: 31138288 PMCID: PMC6540446 DOI: 10.1186/s12976-019-0106-4
Source DB: PubMed Journal: Theor Biol Med Model ISSN: 1742-4682 Impact factor: 2.432
Fig. 1Day to day interactions among cancer and normal cells in CML
Calibrated values for the parameters in the model
| Parameter | Description | Value | Units |
|---|---|---|---|
|
| Normal HSC division rate | 0.00357 | /day |
|
| Cancer HSC division rate | 0.0037 | /day |
|
| Normal HSC mortality rate | 0.005 | /day |
|
| Cancer HSC mortality rate | 0.0003 | /day |
|
| Normal DC production rate | 1011.5 | /day |
|
| Cancer DC production rate | 1011.5 | /day |
|
| Normal DC mortality rate | 1.25 | /day |
|
| Normal DC proliferation rate | 0.25 | /day |
|
| Cancer DC mortality rate | 1.1 | /day |
|
| Cancer DC proliferation rate | 0.5 | /day |
|
| Carrying Capacity of Bone Marrow | 12791 | HSC/day |
Fig. 2Uncontrolled dynamics. Time evolution in days (x-axis) of cells. Safe case: dashed line. Blast cases: solid line
Fig. 3Non truncated treatment. Optimal therapy without time dependence in the objective function (ρ=1). Time in days (x-axis)
Fig. 4Non truncated treatment. Time evolution in days (x-axis) of cells in the optimal therapy without time valuation in the objective function (ρ=1)
Representative parameters of the control solution depending on the discount factor ρ
|
| 1 | 0.9 | 0.8 | 0.7 | 0.65 |
|---|---|---|---|---|---|
| 850 | 829 | 816 | 806 | 801 | |
| 715372 | 696192 | 685644 | 677046 | 673026 |
T: duration of the maximum dose. U: accumulative total dose
Fig. 5Non truncated treatment. Optimal therapy. Solid line: without time valuation (ρ=1). Dashed line: with time valuation (ρ=0.65). Time in days (x-axis)
Fig. 6Non truncated treatment. Differences between the number of cells obtained with ρ=1 and ρ=0.65. Time in days (x-axis)
Fig. 7Truncated treatment. Time evolution in days (x-axis) of cells: effective 1053 days therapy (ρ=0.65), 10 years tracing