2017
DOI: 10.5114/jcb.2017.72567
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Artificial neural network based gynaecological image-guided adaptive brachytherapy treatment planning correction of intra-fractional organs at risk dose variation

Abstract: PurposeIntra-fractional organs at risk (OARs) deformations can lead to dose variation during image-guided adaptive brachytherapy (IGABT). The aim of this study was to modify the final accepted brachytherapy treatment plan to dosimetrically compensate for these intra-fractional organs-applicators position variations and, at the same time, fulfilling the dosimetric criteria.Material and methodsThirty patients with locally advanced cervical cancer, after external beam radiotherapy (EBRT) of 45-50 Gy over five to … Show more

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Cited by 9 publications
(4 citation statements)
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“…The models achieved mean squared errors ranging from 0.13 Gy to 0.40 Gy ( 31 ). Furthermore, dose prediction models have also been used to assess intra-fractional dose variations in OARs ( 27 ). To our knowledge, the accumulated dose of EBRT and BT is currently used only for predicting toxicity prediction and not for KBP ( 45 , 46 ).…”
Section: Discussionmentioning
confidence: 99%
“…The models achieved mean squared errors ranging from 0.13 Gy to 0.40 Gy ( 31 ). Furthermore, dose prediction models have also been used to assess intra-fractional dose variations in OARs ( 27 ). To our knowledge, the accumulated dose of EBRT and BT is currently used only for predicting toxicity prediction and not for KBP ( 45 , 46 ).…”
Section: Discussionmentioning
confidence: 99%
“…), TCP/NTCP models to estimate the clinical effect of a dose deviation, and tools to pinpoint the its most likely cause. Such tools could employ artificial intelligence as already evaluated for treatment planning optimization [64] and inter-fraction adaptation [65] .…”
Section: Requirements and Future Directions For Research Developmentmentioning
confidence: 99%
“…Thanks to machine learning analysis of pre- and post-plan seeds disposition, effective algorithms were developed in order to obtain adequate target coverage and optimal OARs avoidance [ 28 , 29 ]. Intra-fractional dose variations could result in higher toxicities and delivery uncertainties; AI models may be able to optimize planning and motion management, achieving a more safe treatment delivery [ 30 ]. Recently, initial results from a phase I trial study on prostate cancer and LDR IRT have been released [ 31 ].…”
Section: Role Of Artificial Intelligence In Interventional Radiation mentioning
confidence: 99%