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Embedding machine learning based toxicity models within radiotherapy treatment plan optimization.
Maragno, Donato; Buti, Gregory; Birbil, S Ilker; Liao, Zhongxing; Bortfeld, Thomas; den Hertog, Dick; Ajdari, Ali.
Afiliación
  • Maragno D; Amsterdam Business School, University of Amsterdam, Amsterdam, The Netherlands.
  • Buti G; Massachusetts General Hospital and Harvard Medical School, Department of Radiation Oncology, Division of Radiation BioPhysics, Boston, MA, United States of America.
  • Birbil SI; Amsterdam Business School, University of Amsterdam, Amsterdam, The Netherlands.
  • Liao Z; University of Texas' MD Anderson Cancer Center, Department of Radiation Oncology, Division of Radiation Oncology, Houston, TX, United States of America.
  • Bortfeld T; Massachusetts General Hospital and Harvard Medical School, Department of Radiation Oncology, Division of Radiation BioPhysics, Boston, MA, United States of America.
  • den Hertog D; Amsterdam Business School, University of Amsterdam, Amsterdam, The Netherlands.
  • Ajdari A; Massachusetts General Hospital and Harvard Medical School, Department of Radiation Oncology, Division of Radiation BioPhysics, Boston, MA, United States of America.
Phys Med Biol ; 69(7)2024 Mar 14.
Article en En | MEDLINE | ID: mdl-38412530
ABSTRACT
Objective.This study addresses radiation-induced toxicity (RIT) challenges in radiotherapy (RT) by developing a personalized treatment planning framework. It leverages patient-specific data and dosimetric information to create an optimization model that limits adverse side effects using constraints learned from historical data.Approach.The study uses the optimization with constraint learning (OCL) framework, incorporating patient-specific factors into the optimization process. It consists of three

steps:

optimizing the baseline treatment plan using population-wide dosimetric constraints; training a machine learning (ML) model to estimate the patient's RIT for the baseline plan; and adapting the treatment plan to minimize RIT using ML-learned patient-specific constraints. Various predictive models, including classification trees, ensembles of trees, and neural networks, are applied to predict the probability of grade 2+ radiation pneumonitis (RP2+) for non-small cell lung (NSCLC) cancer patients three months post-RT. The methodology is assessed with four high RP2+ risk NSCLC patients, with the goal of optimizing the dose distribution to constrain the RP2+ outcome below a pre-specified threshold. Conventional and OCL-enhanced plans are compared based on dosimetric parameters and predicted RP2+ risk. Sensitivity analysis on risk thresholds and data uncertainty is performed using a toy NSCLC case.Main results.Experiments show the methodology's capacity to directly incorporate all predictive models into RT treatment planning. In the four patients studied, mean lung dose and V20 were reduced by an average of 1.78 Gy and 3.66%, resulting in an average RP2+ risk reduction from 95% to 42%. Notably, this reduction maintains tumor coverage, although in two cases, sparing the lung slightly increased spinal cord max-dose (0.23 and 0.79 Gy).Significance.By integrating patient-specific information into learned constraints, the study significantly reduces adverse side effects like RP2+ without compromising target coverage. This unified framework bridges the gap between predicting toxicities and optimizing treatment plans in personalized RT decision-making.
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Texto completo: 1 Colección: 01-internacional Banco de datos: MEDLINE Asunto principal: Traumatismos por Radiación / Carcinoma de Pulmón de Células no Pequeñas / Radioterapia de Intensidad Modulada / Neoplasias Pulmonares Límite: Humans Idioma: En Revista: Phys Med Biol Año: 2024 Tipo del documento: Article País de afiliación: Países Bajos

Texto completo: 1 Colección: 01-internacional Banco de datos: MEDLINE Asunto principal: Traumatismos por Radiación / Carcinoma de Pulmón de Células no Pequeñas / Radioterapia de Intensidad Modulada / Neoplasias Pulmonares Límite: Humans Idioma: En Revista: Phys Med Biol Año: 2024 Tipo del documento: Article País de afiliación: Países Bajos