4.6 Article

Deep Learning for Instrumented Ultrasonic Tracking: From Synthetic Training Data to In Vivo Application

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TUFFC.2021.3126530

关键词

Deep learning (DL); in vivo imaging; interventional devices; ultrasonic needle tracking

资金

  1. Wellcome Trust [WT101957, 203145Z/16/Z, 203148/Z/16/Z]
  2. Engineering and Physical Sciences Research Council (EPSRC) [NS/A000027/1, NS/A000050/1, NS/A000049/1, EP/L016478/1]
  3. European Research Council [310970MOPHIM]
  4. Rosetrees Trust Small Project [PGS19-2/10006]
  5. CMIC-EPSRC Platform Grant [EP/M020533/1]
  6. Academy of Finland [336796, 338408]
  7. UCL/UCLH NIHR Comprehensive Biomedical Research Centre
  8. EPSRC [EP/M020533/1] Funding Source: UKRI

向作者/读者索取更多资源

A framework based on a convolutional neural network (CNN) is proposed to maintain spatial resolution with fewer tracking transmissions and enhance signal quality. Experimental results show that the performance of needle localization can be significantly improved even with an eightfold reduction in tracking transmissions. This framework will greatly improve the performance of ultrasonic tracking, leading to faster image acquisition rates and increased localization accuracy.
Instrumented ultrasonic tracking is used to improve needle localization during ultrasound guidance of minimally invasive percutaneous procedures. Here, it is implemented with transmitted ultrasound pulses from a clinical ultrasound imaging probe, which is detected by a fiber-optic hydrophone integrated into a needle. The detected transmissions are then reconstructed to form the tracking image. Two challenges are considered with the current implementation of ultrasonic tracking. First, tracking transmissions are interleaved with the acquisition of B-mode images, and thus, the effective B-mode frame rate is reduced. Second, it is challenging to achieve an accurate localization of the needle tip when the signal-to-noise ratio is low. To address these challenges, we present a framework based on a convolutional neural network (CNN) to maintain spatial resolution with fewer tracking transmissions and enhance signal quality. A major component of the framework included the generation of realistic synthetic training data. The trained network was applied to unseen synthetic data and experimental in vivo tracking data. The performance of needle localization was investigated when reconstruction was performed with fewer (up to eightfold) tracking transmissions. CNN-based processing of conventional reconstructions showed that the axial and lateral spatial resolutions could be improved even with an eightfold reduction in tracking transmissions. The framework presented in this study will significantly improve the performance of ultrasonic tracking, leading to faster image acquisition rates and increased localization accuracy.

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