Determinação de Espectros de Energia de Elétrons Clínicos a partir de Curvas de Porcentagem de Dose em Profundidade (PDP) utilizando o Método de Recozimento Simulado Clássico
DOI:
https://doi.org/10.29384/rbfm.2016.v10.n3.p7-10Keywords:
RadioterapiaAbstract
As curvas de porcentagem de dose em profundidade representam um conjunto importante de dados para feixes de elétrons pois descrevem claramente as propriedades dosimétricas destes. Usando uma teoria de transporte acurada ou o método Monte Carlo encontram-se diferenças obvias entre a PDP de feixes de elétrons monoenergéticos e a de feixes de elétrons clínicos à energia nominal do acelerador em um objeto simulador de água. Em radioterapia, o espectro de energia de elétrons deve ser considerado para aprimorar a acurácia do cálculo da dose toda vez que o feixe de elétrons que atinge a superfície do objeto simulador de água após atravessar às estruturas do acelerador e o ar, não é mais monoenergetico. Existem três abordagens principais para extrair o espectro de energia de elétrons desde curvas de PDP: Método Monte Carlo, Medição Direta e Reconstrução Inversa. Neste trabalho será apresentado o método de Recozimento Simulado Clássico como uma abordagem prática, consistente e simples de reconstrução inversa como sendo uma boa alternativa aos outros dois métodos.
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