Cargando…

A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications

During radiotherapy treatment for thoracic and abdomen cancers, for example, lung cancers, respiratory motion moves the target tumor and thus badly affects the accuracy of radiation dose delivery into the target. A real-time image-guided technique can be used to monitor such lung tumor motion for ac...

Descripción completa

Detalles Bibliográficos
Autores principales: Bukovsky, Ivo, Homma, Noriyasu, Ichiji, Kei, Cejnek, Matous, Slama, Matous, Benes, Peter M., Bila, Jiri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi Publishing Corporation 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4393907/
https://www.ncbi.nlm.nih.gov/pubmed/25893194
http://dx.doi.org/10.1155/2015/489679
_version_ 1782366227012780032
author Bukovsky, Ivo
Homma, Noriyasu
Ichiji, Kei
Cejnek, Matous
Slama, Matous
Benes, Peter M.
Bila, Jiri
author_facet Bukovsky, Ivo
Homma, Noriyasu
Ichiji, Kei
Cejnek, Matous
Slama, Matous
Benes, Peter M.
Bila, Jiri
author_sort Bukovsky, Ivo
collection PubMed
description During radiotherapy treatment for thoracic and abdomen cancers, for example, lung cancers, respiratory motion moves the target tumor and thus badly affects the accuracy of radiation dose delivery into the target. A real-time image-guided technique can be used to monitor such lung tumor motion for accurate dose delivery, but the system latency up to several hundred milliseconds for repositioning the radiation beam also affects the accuracy. In order to compensate the latency, neural network prediction technique with real-time retraining can be used. We have investigated real-time prediction of 3D time series of lung tumor motion on a classical linear model, perceptron model, and on a class of higher-order neural network model that has more attractive attributes regarding its optimization convergence and computational efficiency. The implemented static feed-forward neural architectures are compared when using gradient descent adaptation and primarily the Levenberg-Marquardt batch algorithm as the ones of the most common and most comprehensible learning algorithms. The proposed technique resulted in fast real-time retraining, so the total computational time on a PC platform was equal to or even less than the real treatment time. For one-second prediction horizon, the proposed techniques achieved accuracy less than one millimeter of 3D mean absolute error in one hundred seconds of total treatment time.
format Online
Article
Text
id pubmed-4393907
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Hindawi Publishing Corporation
record_format MEDLINE/PubMed
spelling pubmed-43939072015-04-19 A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications Bukovsky, Ivo Homma, Noriyasu Ichiji, Kei Cejnek, Matous Slama, Matous Benes, Peter M. Bila, Jiri Biomed Res Int Research Article During radiotherapy treatment for thoracic and abdomen cancers, for example, lung cancers, respiratory motion moves the target tumor and thus badly affects the accuracy of radiation dose delivery into the target. A real-time image-guided technique can be used to monitor such lung tumor motion for accurate dose delivery, but the system latency up to several hundred milliseconds for repositioning the radiation beam also affects the accuracy. In order to compensate the latency, neural network prediction technique with real-time retraining can be used. We have investigated real-time prediction of 3D time series of lung tumor motion on a classical linear model, perceptron model, and on a class of higher-order neural network model that has more attractive attributes regarding its optimization convergence and computational efficiency. The implemented static feed-forward neural architectures are compared when using gradient descent adaptation and primarily the Levenberg-Marquardt batch algorithm as the ones of the most common and most comprehensible learning algorithms. The proposed technique resulted in fast real-time retraining, so the total computational time on a PC platform was equal to or even less than the real treatment time. For one-second prediction horizon, the proposed techniques achieved accuracy less than one millimeter of 3D mean absolute error in one hundred seconds of total treatment time. Hindawi Publishing Corporation 2015 2015-03-29 /pmc/articles/PMC4393907/ /pubmed/25893194 http://dx.doi.org/10.1155/2015/489679 Text en Copyright © 2015 Ivo Bukovsky et al. https://creativecommons.org/licenses/by/3.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Bukovsky, Ivo
Homma, Noriyasu
Ichiji, Kei
Cejnek, Matous
Slama, Matous
Benes, Peter M.
Bila, Jiri
A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title_full A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title_fullStr A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title_full_unstemmed A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title_short A Fast Neural Network Approach to Predict Lung Tumor Motion during Respiration for Radiation Therapy Applications
title_sort fast neural network approach to predict lung tumor motion during respiration for radiation therapy applications
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4393907/
https://www.ncbi.nlm.nih.gov/pubmed/25893194
http://dx.doi.org/10.1155/2015/489679
work_keys_str_mv AT bukovskyivo afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT hommanoriyasu afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT ichijikei afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT cejnekmatous afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT slamamatous afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT benespeterm afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT bilajiri afastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT bukovskyivo fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT hommanoriyasu fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT ichijikei fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT cejnekmatous fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT slamamatous fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT benespeterm fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications
AT bilajiri fastneuralnetworkapproachtopredictlungtumormotionduringrespirationforradiationtherapyapplications