Computational Approach for Spatially Fractionated Radiation Therapy (SFRT) and Immunological Response in Precision Radiation Therapy
Abstract
:1. Introduction
2. The Case Report: Radiotherapy and Clinical Results
3. Methods
- was defined as the tumor volume before the first treatment;
- is the observed volume after n doses (“exp” indicates the experimental value);
- is the volume numerically evaluated starting with by applying the Linear Quadratic Model (LQM) (including OER when necessary) for n doses (“rad” indicates radiotherapy).
- Measurement of the initial tumor volume , since the initial size of the untreated tumor includes the effect of the host immune response.
- Numerical evaluation of the final volume according to the scheduled radio-treatment and the LQM (including OER if necessary). For example, for the normoxic cell volume, one gets
- Measurement of the final tumor volume , after n doses, which gives the effective tumor volume reduction.
- Comparison of the effective tumor size at the end of therapy with the theoretical value. If , define
- According to the computational model, is due to the immune response activated by radiotherapy, A (see Equations (A5) and (A6) in Appendix A), which at the end of the n treatments turns out to be
- To estimate the specific regrowth rate at the end of radiotherapy (see Equations (A8) and (A9) in Appendix A) one needs to evaluate the constant
- Compare the previous constant with the calculated in Equation (3). If
- More precisely, immediately after the end of radiotherapy, according to the reasonable assumption that in this limited timeframe the induced immune response remains almost constant, the progression depends on the condition
- If the previous condition is verified, the tumor volume initially decreases after the end of therapy, but the progression can restart. Indeed, for , the time evolution without further immunotherapy follows the law in Equation (A7) of Appendix A (see also Figure 4).By assuming a constant effect of the radiotherapy-activated immune response following radiotherapy, the time for the beginning of the regrowth can be evaluated and it turns out to be (see Equation (A9) in Appendix A, for )
4. Application to the Case Report
5. Discussion and Conclusions
- The evaluation of the cell killing fraction or volume shrinkage due to the immune response activated by radiotherapy, as a difference to the standard LQM results;
- An estimate of the complete recovery condition or of the regrowth time, by considering a constant immune-activated response at the end of radiotherapy;
- A possible prediction of the immunotherapy effects after the final radiation dose, by patient-oriented monitoring observations, which permits a phenomenological determination of the function B in Equations (10) and (A14).
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix A.1. General Formalism
Appendix A.2. Including Immunotherapy
Appendix A.3. Geometrical Setting and Radiotherapy Treatment of the Case Report
Day | Reduction Factor |
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0 | |
1 | |
2 | |
3 | |
4 | |
5 | |
6 | |
7 | |
8 | |
9 | |
10 |
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Castorina, P.; Castiglione, F.; Ferini, G.; Forte, S.; Martorana, E. Computational Approach for Spatially Fractionated Radiation Therapy (SFRT) and Immunological Response in Precision Radiation Therapy. J. Pers. Med. 2024, 14, 436. https://doi.org/10.3390/jpm14040436
Castorina P, Castiglione F, Ferini G, Forte S, Martorana E. Computational Approach for Spatially Fractionated Radiation Therapy (SFRT) and Immunological Response in Precision Radiation Therapy. Journal of Personalized Medicine. 2024; 14(4):436. https://doi.org/10.3390/jpm14040436
Chicago/Turabian StyleCastorina, Paolo, Filippo Castiglione, Gianluca Ferini, Stefano Forte, and Emanuele Martorana. 2024. "Computational Approach for Spatially Fractionated Radiation Therapy (SFRT) and Immunological Response in Precision Radiation Therapy" Journal of Personalized Medicine 14, no. 4: 436. https://doi.org/10.3390/jpm14040436
APA StyleCastorina, P., Castiglione, F., Ferini, G., Forte, S., & Martorana, E. (2024). Computational Approach for Spatially Fractionated Radiation Therapy (SFRT) and Immunological Response in Precision Radiation Therapy. Journal of Personalized Medicine, 14(4), 436. https://doi.org/10.3390/jpm14040436