Diffusion tensor transformation for personalizing target volumes in radiation therapy.

in Medical image analysis by Gregory Buti, Ali Ajdari, Christopher P Bridge, Gregory C Sharp, Thomas Bortfeld

TLDR

  • This study uses a special kind of imaging called diffusion tensor imaging (DTI) to understand how tumor cells move into the brain. When a patient-specific DTI is not available, a template image such as a DTI atlas can be transformed to the patient anatomy using image registration. The study investigates a model, the invariance under coordinate transform (ICT), that transforms diffusion tensors from a template image to the patient image, based on the principle that the tumor growth process can be mapped, at any point in time, between the images using the same transformation function that we use to map the anatomy. The ICT model allows the mapping of tumor cell densities and tumor fronts from the template image to the patient image for inclusion in radiotherapy treatment planning. The study provides a framework for more personalized radiotherapy treatment planning, without the use of additional imaging.

Abstract

Diffusion tensor imaging (DTI) is used in tumor growth models to provide information on the infiltration pathways of tumor cells into the surrounding brain tissue. When a patient-specific DTI is not available, a template image such as a DTI atlas can be transformed to the patient anatomy using image registration. This study investigates a model, the invariance under coordinate transform (ICT), that transforms diffusion tensors from a template image to the patient image, based on the principle that the tumor growth process can be mapped, at any point in time, between the images using the same transformation function that we use to map the anatomy. The ICT model allows the mapping of tumor cell densities and tumor fronts (as iso-levels of tumor cell density) from the template image to the patient image for inclusion in radiotherapy treatment planning. The proposed approach transforms the diffusion tensors to simulate tumor growth in locally deformed anatomy and outputs the tumor cell density distribution over time. The ICT model is validated in a cohort of ten brain tumor patients. Comparative analysis with the tumor cell density in the original template image shows that the ICT model accurately simulates tumor cell densities in the deformed image space. By creating radiotherapy target volumes as tumor fronts, this study provides a framework for more personalized radiotherapy treatment planning, without the use of additional imaging.

Overview

  • The study investigates a model, the invariance under coordinate transform (ICT), that transforms diffusion tensors from a template image to the patient image, based on the principle that the tumor growth process can be mapped, at any point in time, between the images using the same transformation function that we use to map the anatomy. The ICT model allows the mapping of tumor cell densities and tumor fronts (as iso-levels of tumor cell density) from the template image to the patient image for inclusion in radiotherapy treatment planning. The proposed approach transforms the diffusion tensors to simulate tumor growth in locally deformed anatomy and outputs the tumor cell density distribution over time. The ICT model is validated in a cohort of ten brain tumor patients. Comparative analysis with the tumor cell density in the original template image shows that the ICT model accurately simulates tumor cell densities in the deformed image space. By creating radiotherapy target volumes as tumor fronts, this study provides a framework for more personalized radiotherapy treatment planning, without the use of additional imaging.

Comparative Analysis & Findings

  • The study compares the outcomes observed under different experimental conditions or interventions detailed in the study. The ICT model is validated in a cohort of ten brain tumor patients. Comparative analysis with the tumor cell density in the original template image shows that the ICT model accurately simulates tumor cell densities in the deformed image space. The study provides a framework for more personalized radiotherapy treatment planning, without the use of additional imaging.

Implications and Future Directions

  • The study's findings have significant implications for the field of research or clinical practice. The ICT model allows the mapping of tumor cell densities and tumor fronts from the template image to the patient image for inclusion in radiotherapy treatment planning. This provides a framework for more personalized radiotherapy treatment planning, without the use of additional imaging. The study identifies limitations that need to be addressed in future research, such as the need for more data to validate the model and the need to incorporate other factors that may affect tumor growth, such as genetic and molecular factors. Future research directions could build on the results of the study, explore unresolved questions, or utilize novel approaches, such as incorporating machine learning algorithms to improve the accuracy of the model.