Enhancement of nerve structure segmentation by a correntropy-based pre-image approach

  • Julián Gil-González Universidad Tecnológica de Pereira
  • Andrés A. Álvarez-Meza Universidad Tecnológica de Pereira
  • Julián D. Echeverry-Correa Universidad Tecnológica de Pereira
  • Álvaro A. Orozco-Gutiérrez Universidad Tecnológica de Pereira
  • Mauricio A. Álvarez-López University of Sheffield
Keywords: Nerve structure segmentation, ultrasond images, pre-images approximation, Correntropy

Abstract

Peripheral Nerve Blocking (PNB) is a commonly used technique for performing regional anesthesia and managing pain. PNB comprises the administration of anesthetics in the proximity of a nerve. In this sense, the success of PNB procedures depends on an accurate location of the target nerve. Recently, ultrasound images (UI) have been widely used to locate nerve structures for PNB, since they enable a non-invasive visualization of the target nerve and the anatomical structures around it. However, UI are affected by speckle noise, which makes it difficult to accurately locate a given nerve. Thus, it is necessary to perform a filtering step to attenuate the speckle noise without eliminating relevant anatomical details that are required for high-level tasks, such as segmentation of nerve structures. In this paper, we propose an UI improvement strategy with the use of a pre-image-based filter. In particular, we map the input images by a nonlinear function (kernel). Specifically, we employ a correntropy-based mapping as kernel functional to code higher-order statistics of the input data under both nonlinear and non-Gaussian conditions. We validate our approach against an UI dataset focused on nerve segmentation for PNB. Likewise, our Correntropy-based Pre-Image Filtering (CPIF) is applied as a pre-processing stage to segment nerve structures in a UI. The segmentation performance is measured in terms of the Dice coefficient. According to the results, we observe that CPIF finds a suitable approximation for UI by highlighting discriminative nerve patterns.

Author Biographies

Julián Gil-González, Universidad Tecnológica de Pereira

MSc in Electrical Engineering, Electrical Engineering Program,Universidad Tecnológica de Pereira, Pereira-Colombia

Andrés A. Álvarez-Meza, Universidad Tecnológica de Pereira

PhD in Engineering-Automatics, Electrical Engineering Department, Universidad Tecnológica de Pereira, Pereira-Colombia

Julián D. Echeverry-Correa, Universidad Tecnológica de Pereira

PhD in Engineering-Electronic Systems, Electrical Engineering Department, Universidad Tecnológica de Pereira, Pereira-Colombia

Álvaro A. Orozco-Gutiérrez, Universidad Tecnológica de Pereira

PhD in Bioengineering, Electrical Engineering Department, Universidad Tecnológica de Pereira, Pereira-Colombia

Mauricio A. Álvarez-López, University of Sheffield

PhD in Computer Science, Department of Computer Science, University of Sheffield, Sheffield-United Kingdom

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How to Cite
[1]
J. Gil-González, A. A. Álvarez-Meza, J. D. Echeverry-Correa, Álvaro A. Orozco-Gutiérrez, and M. A. Álvarez-López, “Enhancement of nerve structure segmentation by a correntropy-based pre-image approach”, TecnoL., vol. 20, no. 39, pp. 197–208, May 2017.

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Published
2017-05-02
Section
Research Papers

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