4.6 Article

Three-dimensional ultrasound image reconstruction based on 3D-ResNet in the musculoskeletal system using a 1D probe: ex vivo and in vivo feasibility studies

Journal

PHYSICS IN MEDICINE AND BIOLOGY
Volume 68, Issue 16, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6560/ace58b

Keywords

3D ultrasound reconstruction; 3D residual learning; musculoskeletal ultrasound imaging

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A new algorithm was proposed to efficiently reconstruct high-quality 3D ultrasound volumes using sparse 2D ultrasound images. The algorithm has the potential to provide rapid feedback and precise analysis of stereoscopic details in the musculoskeletal system scanning.
Objective. Three-dimensional (3D) ultrasound (US) is needed to provide sonographers with a more intuitive panoramic view of the complex anatomical structure, especially the musculoskeletal system. In actual scanning, sonographers may perform fast scanning using a one-dimensional (1D) array probe .at random angles to gain rapid feedback, which leads to a large US image interval and missing regions in the reconstructed volume. Approach. In this study, a 3D residual network (3D-ResNet) modified by a 3D global residual branch (3D-GRB) and two 3D local residual branches (3D-LRBs) was proposed to retain detail and reconstruct high-quality 3D US volumes with high efficiency using only sparse two-dimensional (2D) US images. The feasibility and performance of the proposed algorithm were evaluated on ex vivo and in vivo sets. Main r esults. High-quality 3D US volumes in the fingers, radial and ulnar bones, and metacarpophalangeal joints were obtained by the 3D-ResNet, respectively. Their axial, coronal, and sagittal slices exhibited rich texture and speckle details. Compared with kernel regression, voxel nearest-neighborhood, squared distance weighted methods, and a 3D convolution neural network in the ablation study, the mean peak-signal-to-noise ratio and mean structure similarity of the 3D-ResNet were up to 28.53 & PLUSMN; 1.29 dB and 0.98 & PLUSMN; 0.01, respectively, and the corresponding mean absolute error dropped to 0.023 & PLUSMN; 0.003 with a better resolution gain of 1.22 & PLUSMN; 0.19 and shorter reconstruction time. Significance. These results illustrate that the proposed algorithm can rapidly reconstruct high-quality 3D US volumes in the musculoskeletal system in cases of a large amount of data loss. This suggests that the proposed algorithm has the potential to provide rapid feedback and precise analysis of stereoscopic details in complex and meticulous musculoskeletal system scanning with a less limited scanning speed and pose variations for the 1D array probe.

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