A machine learning-based model for a dose point kernel calculation

被引:3
|
作者
Scarinci, Ignacio [1 ,2 ]
Valente, Mauro [1 ,2 ,3 ,4 ]
Perez, Pedro [1 ,2 ]
机构
[1] Consejo Nacl Invest Cient & Tecn, Inst Fis Enrique Gaviola IFEG, Ave Medina Allende S-N, RA-5000 Cordoba, Argentina
[2] Univ Nacl Cordoba, Fac Matemat Astron Fis & Comp, Lab Invest & Instrumentac Fis Aplicada Med & Imag, Ave Medina Allende S-N, RA-5000 Cordoba, Argentina
[3] Univ la Frontera, Ctr Excelencia Fis & Ingn Salud CFIS, Ave Francisco Salazar 01145, Temuco 4811230, Cautin, Chile
[4] Univ la Frontera, Dept Ciencias Fis, Ave Francisco Salazar 01145, Temuco 4811230, Cautin, Chile
关键词
Beta emitters; Dose point kernel; Internal dosimetry; Machine learning; MONTE-CARLO; ARTIFICIAL-INTELLIGENCE; NUCLEAR-MEDICINE; S-VALUES; DOSIMETRY; REGRESSION; THERAPY; CODE; RADIOEMBOLIZATION; THERANOSTICS;
D O I
10.1186/s40658-023-00560-9
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: Absorbed dose calculation by kernel convolution requires the prior determination of dose point kernels (DPK). This study reports on the design, implementation, and test of a multi-target regressor approach to generate the DPKs for monoenergetic sources and a model to obtain DPKs for beta emitters. Methods: DPK for monoenergetic electron sources were calculated using the FLUKA Monte Carlo (MC) code for many materials of clinical interest and initial energies ranging from 10 to 3000 keV. Regressor Chains (RC) with three different coefficients regularization/shrinkage models were used as base regressors. Electron monoenergetic scaled DPKs (sDPKs) were used to assess the corresponding sDPKs for beta emitters typically used in nuclear medicine, which were compared against reference published data. Finally, the beta emitters sDPK were applied to a patient-specific case calculating the Voxel Dose Kernel (VDK) for a hepatic radioembolization treatment with Y-90.Results: The three trained machine learning models demonstrated a promising capacity to predict the sDPK for both monoenergetic emissions and beta emitters of clinical interest attaining differences lower than 10% in the mean average percentage error (MAPE) as compared with previous studies. Furthermore, differences lower than 7% were obtained for the absorbed dose in patient-specific dosimetry comparing against full stochastic MC calculations.Conclusion: An ML model was developed to assess dosimetry calculations in nuclear medicine. The implemented approach has shown the capacity to accurately predict the sDPK for monoenergetic beta sources in a wide range of energy in different materials. The ML model to calculate the sDPK for beta-emitting radionuclides allowed to obtain VDK useful to achieve reliable patient-specific absorbed dose distributions required short computation times.
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页数:18
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