Time‑aware deep neural networks for needle tip localization in 2D ultrasound
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Date
2021
Journal Title
Journal ISSN
Volume Title
Publisher
International Journal of Computer Assisted Radiology and Surgery
Abstract
Accurate placement of the needle is critical in interventions like biopsies and regional anesthesia, during which
incorrect needle insertion can lead to procedure failure and complications. Therefore, ultrasound guidance is widely used to
improve needle placement accuracy. However, at steep and deep insertions, the visibility of the needle is lost. Computational
methods for automatic needle tip localization could improve the clinical success rate in these scenarios.
Methods We propose a novel algorithm for needle tip localization during challenging ultrasound-guided insertions when
the shaft may be invisible, and the tip has a low intensity. There are two key steps in our approach. First, we enhance the
needle tip features in consecutive ultrasound frames using a detection scheme which recognizes subtle intensity variations
caused by needle tip movement. We then employ a hybrid deep neural network comprising a convolutional neural network
and long short-term memory recurrent units. The input to the network is a consecutive plurality of fused enhanced frames
and the corresponding original B-mode frames, and this spatiotemporal information is used to predict the needle tip location.
Results We evaluate our approach on an ex vivo dataset collected with in-plane and out-of-plane insertion of 17G and 22G
needles in bovine, porcine, and chicken tissue, acquired using two different ultrasound systems. We train the model with 5000
frames from 42 video sequences. Evaluation on 600 frames from 30 sequences yields a tip localization error of 0.52 ± 0.06
mm and an overall inference time of 0.064 s (15 fps). Comparison against prior art on challenging datasets reveals a 30%
improvement in tip localization accuracy.
Conclusion The proposed method automatically models temporal dynamics associated with needle tip motion and is more
accurate than state-of-the-art methods. Therefore, it has the potential for improving needle tip localization in challenging
ultrasound-guided interventions.
Description
Keywords
Needle tip localization, Ultrasound, LSTM, Minimally invasive procedures
Citation
Mwikirize, C., Kimbowa, A. B., Imanirakiza, S., Katumba, A., Nosher, J. L., & Hacihaliloglu, I. (2021). Time-aware deep neural networks for needle tip localization in 2D ultrasound. International Journal of Computer Assisted Radiology and Surgery, 16(5), 819-827. https://doi.org/10.1007/s11548-021-02361-w