Multicriterial CNN based beam generation for robotic radiosurgery of the prostate
Although robotic radiosurgery offers a flexible arrangement of treatment beams, generating treatment plans is computationally challenging and a time consuming process for the planner. Furthermore, different clinical goals have to be considered during planning and generally different sets of beams co...
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De Gruyter
2020-09-01
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Series: | Current Directions in Biomedical Engineering |
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Online Access: | https://doi.org/10.1515/cdbme-2020-0030 |
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doaj-96f32be816d942b682458c8d60b9a5522021-09-06T19:19:28ZengDe GruyterCurrent Directions in Biomedical Engineering2364-55042020-09-0161153810.1515/cdbme-2020-0030cdbme-2020-0030Multicriterial CNN based beam generation for robotic radiosurgery of the prostateGerlach Stefan0Fürweger Christoph1Hofmann Theresa2Schlaefer Alexander3Institute of Medical Technology, Hamburg University of Technology, Hamburg, GermanyEuropäisches Cyberknife Zentrum München-Großhadern, Munich, GermanyEuropäisches Cyberknife Zentrum München-Großhadern, Munich, GermanyInstitute of Medical Technology, Hamburg University of Technology, Hamburg, GermanyAlthough robotic radiosurgery offers a flexible arrangement of treatment beams, generating treatment plans is computationally challenging and a time consuming process for the planner. Furthermore, different clinical goals have to be considered during planning and generally different sets of beams correspond to different clinical goals. Typically, candidate beams sampled from a randomized heuristic form the basis for treatment planning. We propose a new approach to generate candidate beams based on deep learning using radiological features as well as the desired constraints. We demonstrate that candidate beams generated for specific clinical goals can improve treatment plan quality. Furthermore, we compare two approaches to include information about constraints in the prediction. Our results show that CNN generated beams can improve treatment plan quality for different clinical goals, increasing coverage from 91.2 to 96.8% for 3,000 candidate beams on average. When including the clinical goal in the training, coverage is improved by 1.1% points.https://doi.org/10.1515/cdbme-2020-0030machine learningrobotic radiosurgerytreatment planning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Gerlach Stefan Fürweger Christoph Hofmann Theresa Schlaefer Alexander |
spellingShingle |
Gerlach Stefan Fürweger Christoph Hofmann Theresa Schlaefer Alexander Multicriterial CNN based beam generation for robotic radiosurgery of the prostate Current Directions in Biomedical Engineering machine learning robotic radiosurgery treatment planning |
author_facet |
Gerlach Stefan Fürweger Christoph Hofmann Theresa Schlaefer Alexander |
author_sort |
Gerlach Stefan |
title |
Multicriterial CNN based beam generation for robotic radiosurgery of the prostate |
title_short |
Multicriterial CNN based beam generation for robotic radiosurgery of the prostate |
title_full |
Multicriterial CNN based beam generation for robotic radiosurgery of the prostate |
title_fullStr |
Multicriterial CNN based beam generation for robotic radiosurgery of the prostate |
title_full_unstemmed |
Multicriterial CNN based beam generation for robotic radiosurgery of the prostate |
title_sort |
multicriterial cnn based beam generation for robotic radiosurgery of the prostate |
publisher |
De Gruyter |
series |
Current Directions in Biomedical Engineering |
issn |
2364-5504 |
publishDate |
2020-09-01 |
description |
Although robotic radiosurgery offers a flexible arrangement of treatment beams, generating treatment plans is computationally challenging and a time consuming process for the planner. Furthermore, different clinical goals have to be considered during planning and generally different sets of beams correspond to different clinical goals. Typically, candidate beams sampled from a randomized heuristic form the basis for treatment planning. We propose a new approach to generate candidate beams based on deep learning using radiological features as well as the desired constraints. We demonstrate that candidate beams generated for specific clinical goals can improve treatment plan quality. Furthermore, we compare two approaches to include information about constraints in the prediction. Our results show that CNN generated beams can improve treatment plan quality for different clinical goals, increasing coverage from 91.2 to 96.8% for 3,000 candidate beams on average. When including the clinical goal in the training, coverage is improved by 1.1% points. |
topic |
machine learning robotic radiosurgery treatment planning |
url |
https://doi.org/10.1515/cdbme-2020-0030 |
work_keys_str_mv |
AT gerlachstefan multicriterialcnnbasedbeamgenerationforroboticradiosurgeryoftheprostate AT furwegerchristoph multicriterialcnnbasedbeamgenerationforroboticradiosurgeryoftheprostate AT hofmanntheresa multicriterialcnnbasedbeamgenerationforroboticradiosurgeryoftheprostate AT schlaeferalexander multicriterialcnnbasedbeamgenerationforroboticradiosurgeryoftheprostate |
_version_ |
1717778520678072320 |