Thresholding Segmentation Errors and Uncertainty with Patient-Specific Geometries
Title
Thresholding Segmentation Errors and Uncertainty with Patient-Specific Geometries
Date
2021
Publisher
Salvia Medical Sciences Ltd.
Subject
Medical physics
Medical radiology
Nuclear medicine
Image processing, computer-assisted, errors
Patient-specific modeling
Thresholding
Uncertainty
Medical radiology
Nuclear medicine
Image processing, computer-assisted, errors
Patient-specific modeling
Thresholding
Uncertainty
Language
English
Abstract
Computer simulations provide virtual hands-on experience when actual hands-on experience is not possible. To use these simulations in medical science, they need to be able to predict the behavior of actual processes with actual patient-specific geometries. Many uncertainties enter in the process of developing these simulations, starting with creating the geometry. The actual patient-specific geometry is often complex and hard to process. Usually, simplifications to the geometry are introduced in exchange for faster results. However, when simplified, these simulations can no longer be considered patient-specific as they do not represent the actual patient they come from. The ultimate goal is to keep the geometries truly patient-specific without any simplification. However, even without simplifications, the patient-specific geometries are based on medical imaging modalities and consequent use of numerical algorithms to create and process the 3D surface. Multiple users are asked to process medical images of a complex geometry. Their resulting geometries are used to assess how the user’s choices determine the resulting dimensions of the 3D model. It is shown that the resulting geometry heavily depends on user’s choices.
Source
Journal of Biomedical Physics and Engineering, Volume 11, Issue 1, February 2021, pages 115-122
Rights
Copyright: © Journal of Biomedical Physics and Engineering.
Format
PDF
Type
Text
Identifier
Bibliographic Citation
Toma, M. (2021). Thresholding Segmentation Errors and Uncertainty with Patient-Specific Geometries. In Journal of Biomedical Physics and Engineering (Vol. 11, Issue 1). Salvia Medical Sciences Ltd. https://doi.org/10.31661/jbpe.v0i0.2001-1062
Files
Collection
Citation
Toma, M., Lu, Y., Zhou, H., & Garcia, J.D., Thresholding Segmentation Errors and Uncertainty with Patient-Specific Geometries. Journal of Biomedical Physics and Engineering, Volume 11, Issue 1, February 2021, pages 115-122, New York Tech Institutional Repository, accessed September 14, 2024, https://repository.nyitlibrary.org/items/show/3767
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