Loading [MathJax]/extensions/tex2jax.js

Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Authors

  • Johannes Gaa
  • Samuel Müller
  • G. Jakob Lexow
  • Omid Majdani
  • Lüder Alexander Kahrs
  • Tobias Ortmaier

Research Organisations

External Research Organisations

  • Hannover Medical School (MHH)
  • Cluster of Excellence Hearing4all
  • Vanderbilt University
  • Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU Erlangen-Nürnberg)

Details

Original languageEnglish
Title of host publication15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie
Place of PublicationBern, Switzerland
Pages137-142
Publication statusPublished - 2016

Abstract

Statistical Shape Models (SSM) became a standard tool in medical image analysis. Its versatile use led to numerous enhancements with a wide range of application possibilities. Although, the basic usage is usually the same and requires the following steps: Preparing a trainings data set, analysis of the variance of the training data, extracting a SSM, initialization of the SSM in the target image data and fitting the SSM. For the last step several strategies have been proposed. While no strategy is generally applicable, some claim to be more adaptable and others aim on application specific robustness. This work considers multiple proposed fitting methods for SSM in the context of cochlear segmentation. In the first part we give an overview of fitting algorithms and motivate a selection we examined in subsequent experiments. We used a SSM, trained by six data sets manually segmented with expert knowledge and applied it on ten new target image datasets. Each fitting per target image dataset was done using the strategies investigated. In the results section we compare those strategies regarding accuracy, robustness and runtime.

Cite this

Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies. / Gaa, Johannes; Müller, Samuel; Lexow, G. Jakob et al.
15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie. Bern, Switzerland, 2016. p. 137-142.

Research output: Chapter in book/report/conference proceedingConference contributionResearchpeer review

Gaa, J, Müller, S, Lexow, GJ, Majdani, O, Kahrs, LA & Ortmaier, T 2016, Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies. in 15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie. Bern, Switzerland, pp. 137-142.
Gaa, J., Müller, S., Lexow, G. J., Majdani, O., Kahrs, L. A., & Ortmaier, T. (2016). Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies. In 15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie (pp. 137-142).
Gaa J, Müller S, Lexow GJ, Majdani O, Kahrs LA, Ortmaier T. Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies. In 15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie. Bern, Switzerland. 2016. p. 137-142
Gaa, Johannes ; Müller, Samuel ; Lexow, G. Jakob et al. / Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies. 15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie. Bern, Switzerland, 2016. pp. 137-142
Download
@inproceedings{e9bc08c468804a498e392c7d4fd8ec76,
title = "Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies",
abstract = "Statistical Shape Models (SSM) became a standard tool in medical image analysis. Its versatile use led to numerous enhancements with a wide range of application possibilities. Although, the basic usage is usually the same and requires the following steps: Preparing a trainings data set, analysis of the variance of the training data, extracting a SSM, initialization of the SSM in the target image data and fitting the SSM. For the last step several strategies have been proposed. While no strategy is generally applicable, some claim to be more adaptable and others aim on application specific robustness. This work considers multiple proposed fitting methods for SSM in the context of cochlear segmentation. In the first part we give an overview of fitting algorithms and motivate a selection we examined in subsequent experiments. We used a SSM, trained by six data sets manually segmented with expert knowledge and applied it on ten new target image datasets. Each fitting per target image dataset was done using the strategies investigated. In the results section we compare those strategies regarding accuracy, robustness and runtime.",
author = "Johannes Gaa and Samuel M{\"u}ller and Lexow, {G. Jakob} and Omid Majdani and Kahrs, {L{\"u}der Alexander} and Tobias Ortmaier",
year = "2016",
language = "English",
pages = "137--142",
booktitle = "15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie",

}

Download

TY - GEN

T1 - Statistical Shape Model for Automated Cochlear Segmentation: A Comparison of Fitting Strategies

AU - Gaa, Johannes

AU - Müller, Samuel

AU - Lexow, G. Jakob

AU - Majdani, Omid

AU - Kahrs, Lüder Alexander

AU - Ortmaier, Tobias

PY - 2016

Y1 - 2016

N2 - Statistical Shape Models (SSM) became a standard tool in medical image analysis. Its versatile use led to numerous enhancements with a wide range of application possibilities. Although, the basic usage is usually the same and requires the following steps: Preparing a trainings data set, analysis of the variance of the training data, extracting a SSM, initialization of the SSM in the target image data and fitting the SSM. For the last step several strategies have been proposed. While no strategy is generally applicable, some claim to be more adaptable and others aim on application specific robustness. This work considers multiple proposed fitting methods for SSM in the context of cochlear segmentation. In the first part we give an overview of fitting algorithms and motivate a selection we examined in subsequent experiments. We used a SSM, trained by six data sets manually segmented with expert knowledge and applied it on ten new target image datasets. Each fitting per target image dataset was done using the strategies investigated. In the results section we compare those strategies regarding accuracy, robustness and runtime.

AB - Statistical Shape Models (SSM) became a standard tool in medical image analysis. Its versatile use led to numerous enhancements with a wide range of application possibilities. Although, the basic usage is usually the same and requires the following steps: Preparing a trainings data set, analysis of the variance of the training data, extracting a SSM, initialization of the SSM in the target image data and fitting the SSM. For the last step several strategies have been proposed. While no strategy is generally applicable, some claim to be more adaptable and others aim on application specific robustness. This work considers multiple proposed fitting methods for SSM in the context of cochlear segmentation. In the first part we give an overview of fitting algorithms and motivate a selection we examined in subsequent experiments. We used a SSM, trained by six data sets manually segmented with expert knowledge and applied it on ten new target image datasets. Each fitting per target image dataset was done using the strategies investigated. In the results section we compare those strategies regarding accuracy, robustness and runtime.

M3 - Conference contribution

SP - 137

EP - 142

BT - 15. Jahrestagung der Deutschen Gesellschaft Computer- und Roboterassistierte Chirurgie

CY - Bern, Switzerland

ER -