Biopsy Needle Segmentation using Deep Networks on inhomogeneous Ultrasound Images

Date

2022-07-11

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Type

Conference

Peer reviewed

Yes

Abstract

In minimally invasive interventional surgery, ultrasound imaging is usually used to provide real-time feedback in order to obtain the best diagnostic results or realize treatment plans, so how to accurately obtain the position of the medical biopsy needle is a problem worthy of study. 2D ultrasound simulation images containing the medical biopsy needle are generated, and our images background is from the real breast ultrasound image. Based on the deep learning network, the images containing the medical biopsy needle are used to analyze the effectiveness of different networks for needle localization for the purpose of returning needle positions in non-uniform ultrasound images. The results show that attention U-Net performed best and can accurately reflect the real position of the medical biopsy needle. The IoU and Precision can reach 90.19% and 96.25%, and the Angular Error is 0.40°.

Description

Keywords

deep network, 2D ultrasound images, biopsy needle

Citation

Zhao, Y., Lu, Y., Lu, X., Jing, J., Tao, L., Chen, X. (2022) Biopsy Needle Segmentation using Deep Networks on inhomogeneous Ultrasound Images. 44th Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC 2022), Glasgow, July 2022.

Rights

Research Institute