Dose-Volume Histogram Prediction using KernelDensity Estimation

Dose plans developed for stereotactic radiosurgery are assessed by studying so called Dose-Volume Histograms. Since it is hard to compare an individual dose plan with doseplans created for other patients, much experience and knowledge is lost. This thesis therefore investigates a machine learning ap...

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Main Author: SKARPMAN MUNTER, JOHANNA
Format: Others
Language:English
Published: KTH, Skolan för datavetenskap och kommunikation (CSC) 2014
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-155893
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spelling ndltd-UPSALLA1-oai-DiVA.org-kth-1558932018-01-12T05:09:49ZDose-Volume Histogram Prediction using KernelDensity EstimationengSKARPMAN MUNTER, JOHANNAKTH, Skolan för datavetenskap och kommunikation (CSC)2014Computer SciencesDatavetenskap (datalogi)Dose plans developed for stereotactic radiosurgery are assessed by studying so called Dose-Volume Histograms. Since it is hard to compare an individual dose plan with doseplans created for other patients, much experience and knowledge is lost. This thesis therefore investigates a machine learning approach to predicting such Dose-Volume Histograms for a new patient, by learning from previous dose plans.The training set is chosen based on similarity in terms of tumour size. The signed distances between voxels in the considered volume and the tumour boundary decide the probability of receiving a certain dose in the volume. By using a method based on Kernel Density Estimation, the intrinsic probabilistic properties of a Dose-Volume Histogramare exploited.Dose-Volume Histograms for the brainstem of 22 Acoustic Schwannoma patients, treated with the Gamma Knife,have been predicted, solely based on each patient’s individual anatomical disposition. The method has proved higher prediction accuracy than a “quick-and-dirty” approach implemented for comparison. Analysis of the bias and variance of the method also indicate that it captures the main underlying factors behind individual variations. However,the degree of variability in dose planning results for the Gamma Knife has turned out to be very limited. Therefore, the usefulness of a data driven dose planning tool for the Gamma Knife has to be further investigated. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-155893application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Computer Sciences
Datavetenskap (datalogi)
spellingShingle Computer Sciences
Datavetenskap (datalogi)
SKARPMAN MUNTER, JOHANNA
Dose-Volume Histogram Prediction using KernelDensity Estimation
description Dose plans developed for stereotactic radiosurgery are assessed by studying so called Dose-Volume Histograms. Since it is hard to compare an individual dose plan with doseplans created for other patients, much experience and knowledge is lost. This thesis therefore investigates a machine learning approach to predicting such Dose-Volume Histograms for a new patient, by learning from previous dose plans.The training set is chosen based on similarity in terms of tumour size. The signed distances between voxels in the considered volume and the tumour boundary decide the probability of receiving a certain dose in the volume. By using a method based on Kernel Density Estimation, the intrinsic probabilistic properties of a Dose-Volume Histogramare exploited.Dose-Volume Histograms for the brainstem of 22 Acoustic Schwannoma patients, treated with the Gamma Knife,have been predicted, solely based on each patient’s individual anatomical disposition. The method has proved higher prediction accuracy than a “quick-and-dirty” approach implemented for comparison. Analysis of the bias and variance of the method also indicate that it captures the main underlying factors behind individual variations. However,the degree of variability in dose planning results for the Gamma Knife has turned out to be very limited. Therefore, the usefulness of a data driven dose planning tool for the Gamma Knife has to be further investigated.
author SKARPMAN MUNTER, JOHANNA
author_facet SKARPMAN MUNTER, JOHANNA
author_sort SKARPMAN MUNTER, JOHANNA
title Dose-Volume Histogram Prediction using KernelDensity Estimation
title_short Dose-Volume Histogram Prediction using KernelDensity Estimation
title_full Dose-Volume Histogram Prediction using KernelDensity Estimation
title_fullStr Dose-Volume Histogram Prediction using KernelDensity Estimation
title_full_unstemmed Dose-Volume Histogram Prediction using KernelDensity Estimation
title_sort dose-volume histogram prediction using kerneldensity estimation
publisher KTH, Skolan för datavetenskap och kommunikation (CSC)
publishDate 2014
url http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-155893
work_keys_str_mv AT skarpmanmunterjohanna dosevolumehistogrampredictionusingkerneldensityestimation
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