Transducer Adaptive Ultrasound Volume Reconstruction
Hengtao Guo, Sheng Xu, Bradford J. Wood, Pingkun Yan

TL;DR
This paper introduces a domain adaptation approach for deep learning-based 3D ultrasound volume reconstruction that generalizes across different transducers without external tracking, improving clinical utility.
Contribution
It proposes a novel domain adaptation strategy that aligns features from different transducers, enabling universal freehand ultrasound volume reconstruction.
Findings
Successfully aligns features across transducers
Preserves transducer-specific information
Enhances generalization of reconstruction algorithms
Abstract
Reconstructed 3D ultrasound volume provides more context information compared to a sequence of 2D scanning frames, which is desirable for various clinical applications such as ultrasound-guided prostate biopsy. Nevertheless, 3D volume reconstruction from freehand 2D scans is a very challenging problem, especially without the use of external tracking devices. Recent deep learning based methods demonstrate the potential of directly estimating inter-frame motion between consecutive ultrasound frames. However, such algorithms are specific to particular transducers and scanning trajectories associated with the training data, which may not be generalized to other image acquisition settings. In this paper, we tackle the data acquisition difference as a domain shift problem and propose a novel domain adaptation strategy to adapt deep learning algorithms to data acquired with different…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Cancer-related molecular mechanisms research · Cardiac Valve Diseases and Treatments
