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Needle tracking in low-resolution ultrasound volumes using deep learning.
Grube, Sarah; Latus, Sarah; Behrendt, Finn; Riabova, Oleksandra; Neidhardt, Maximilian; Schlaefer, Alexander.
Afiliação
  • Grube S; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany. sarah.grube@tuhh.de.
  • Latus S; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
  • Behrendt F; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
  • Riabova O; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
  • Neidhardt M; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
  • Schlaefer A; Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology, Hamburg, Germany.
Article em En | MEDLINE | ID: mdl-39002100
ABSTRACT

PURPOSE:

Clinical needle insertion into tissue, commonly assisted by 2D ultrasound imaging for real-time navigation, faces the challenge of precise needle and probe alignment to reduce out-of-plane movement. Recent studies investigate 3D ultrasound imaging together with deep learning to overcome this problem, focusing on acquiring high-resolution images to create optimal conditions for needle tip detection. However, high-resolution also requires a lot of time for image acquisition and processing, which limits the real-time capability. Therefore, we aim to maximize the US volume rate with the trade-off of low image resolution. We propose a deep learning approach to directly extract the 3D needle tip position from sparsely sampled US volumes.

METHODS:

We design an experimental setup with a robot inserting a needle into water and chicken liver tissue. In contrast to manual annotation, we assess the needle tip position from the known robot pose. During insertion, we acquire a large data set of low-resolution volumes using a 16  ×  16 element matrix transducer with a volume rate of 4 Hz. We compare the performance of our deep learning approach with conventional needle segmentation.

RESULTS:

Our experiments in water and liver show that deep learning outperforms the conventional approach while achieving sub-millimeter accuracy. We achieve mean position errors of 0.54 mm in water and 1.54 mm in liver for deep learning.

CONCLUSION:

Our study underlines the strengths of deep learning to predict the 3D needle positions from low-resolution ultrasound volumes. This is an important milestone for real-time needle navigation, simplifying the alignment of needle and ultrasound probe and enabling a 3D motion analysis.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article