Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A convolutional neural network model for EPID‐based non‐transit dosimetry

View through CrossRef
AbstractPurposeTo develop an alternative computational approach for EPID‐based non‐transit dosimetry using a convolutional neural network model.MethodA U‐net followed by a non‐trainable layer named True Dose Modulation recovering the spatialized information was developed. The model was trained on 186 Intensity‐Modulated Radiation Therapy Step & Shot beams from 36 treatment plans of different tumor locations to convert grayscale portal images into planar absolute dose distributions. Input data were acquired from an amorphous‐Silicon Electronic Portal Image Device and a 6 MV X‐ray beam. Ground truths were computed from a conventional kernel‐based dose algorithm. The model was trained by a two‐step learning process and validated through a five‐fold cross‐validation procedure with sets of training and validation of 80% and 20%, respectively. A study regarding the dependance of the amount of training data was conducted. The performance of the model was evaluated from a quantitative analysis based the ϒ‐index, absolute and relative errors computed between the inferred dose distributions and ground truths for six square and 29 clinical beams from seven treatment plans. These results were also compared to those of an existing portal image‐to‐dose conversion algorithm.ResultsFor the clinical beams, averages of ϒ‐index and ϒ‐passing rate (2%‐2mm > 10% Dmax) of 0.24 (±0.04) and 99.29 (±0.70)% were obtained. For the same metrics and criteria, averages of 0.31 (±0.16) and 98.83 (±2.40)% were obtained with the six square beams. Overall, the developed model performed better than the existing analytical method. The study also showed that sufficient model accuracy can be achieved with the amount of training samples used.ConclusionA deep learning‐based model was developed to convert portal images into absolute dose distributions. The accuracy obtained shows that this method has great potential for EPID‐based non‐transit dosimetry.
Title: A convolutional neural network model for EPID‐based non‐transit dosimetry
Description:
AbstractPurposeTo develop an alternative computational approach for EPID‐based non‐transit dosimetry using a convolutional neural network model.
MethodA U‐net followed by a non‐trainable layer named True Dose Modulation recovering the spatialized information was developed.
The model was trained on 186 Intensity‐Modulated Radiation Therapy Step & Shot beams from 36 treatment plans of different tumor locations to convert grayscale portal images into planar absolute dose distributions.
Input data were acquired from an amorphous‐Silicon Electronic Portal Image Device and a 6 MV X‐ray beam.
Ground truths were computed from a conventional kernel‐based dose algorithm.
The model was trained by a two‐step learning process and validated through a five‐fold cross‐validation procedure with sets of training and validation of 80% and 20%, respectively.
A study regarding the dependance of the amount of training data was conducted.
The performance of the model was evaluated from a quantitative analysis based the ϒ‐index, absolute and relative errors computed between the inferred dose distributions and ground truths for six square and 29 clinical beams from seven treatment plans.
These results were also compared to those of an existing portal image‐to‐dose conversion algorithm.
ResultsFor the clinical beams, averages of ϒ‐index and ϒ‐passing rate (2%‐2mm > 10% Dmax) of 0.
24 (±0.
04) and 99.
29 (±0.
70)% were obtained.
For the same metrics and criteria, averages of 0.
31 (±0.
16) and 98.
83 (±2.
40)% were obtained with the six square beams.
Overall, the developed model performed better than the existing analytical method.
The study also showed that sufficient model accuracy can be achieved with the amount of training samples used.
ConclusionA deep learning‐based model was developed to convert portal images into absolute dose distributions.
The accuracy obtained shows that this method has great potential for EPID‐based non‐transit dosimetry.

Related Results

SU‐E‐T‐05: A 2D EPID Transit Dosimetry Model Based On An Empirical Quadratic Formalism
SU‐E‐T‐05: A 2D EPID Transit Dosimetry Model Based On An Empirical Quadratic Formalism
Purpose:To describe a 2D electronic portal imaging device (EPID) transit dosimetry model, based on an empirical quadratic formalism, that can predict either EPID or in‐phantom dose...
Graph convolutional neural networks for 3D data analysis
Graph convolutional neural networks for 3D data analysis
(English) Deep Learning allows the extraction of complex features directly from raw input data, eliminating the need for hand-crafted features from the classical Machine Learning p...
Technologies for retrospective radiation dosimetry
Technologies for retrospective radiation dosimetry
Abstract Radiation dosimetry is an important task for assessing the biological damages created in human being due to ionising radiation exposure. Ionising radiation ...
Not Minding the Gap: Does Ride-Hailing Serve Transit Deserts?
Not Minding the Gap: Does Ride-Hailing Serve Transit Deserts?
Transit has long connected people to opportunities but access to transit varies greatly across space. In some cases, unevenly distributed transit supply creates gaps in service tha...

Back to Top