A deep learning-based automatic first-arrival picking method for ultrasound sound-speed tomography Journal Article


Authors: Qu, X.; Yan, G.; Zheng, D.; Fan, S.; Rao, Q.; Jiang, J.
Article Title: A deep learning-based automatic first-arrival picking method for ultrasound sound-speed tomography
Abstract: Ultrasound sound-speed tomography (USST) has shown great prospects for breast cancer diagnosis due to its advantages of nonradiation, low cost, 3-D breast images, and quantitative indicators. However, the reconstruction quality of USST is highly dependent on the first-arrival picking of the transmission wave. Traditional first-arrival picking methods have low accuracy and noise robustness. To improve the accuracy and robustness, we introduced a self-attention mechanism into the bidirectional long short-term memory (BLSTM) network and proposed the self-attention BLSTM (SAT-BLSTM) network. The proposed method predicts the probability of the first-arrival time and selects the time with maximum probability. A numerical simulation and prototype experiment were conducted. In the numerical simulation, the proposed SAT-BLSTM showed the best results. For signal-to-noise ratios (SNRs) of 50, 30, and 15 dB, the mean absolute errors (MAEs) were 48, 49, and 76 ns, respectively. The BLSTM had the second-best results, with MAEs of 55, 56, and 85 ns, respectively. The MAEs of the Akaike information criterion (AIC) method were 57, 296, and 489 ns, respectively. In the prototype experiment, the MAEs of the SAT-BLSTM, the BLSTM, and the AIC were 94, 111, and 410 ns, respectively. © 1986-2012 IEEE.
Keywords: controlled study; signal noise ratio; ultrasound; medical imaging; tomography; probability; computer simulation; attention; velocity; signal to noise ratio; human; article; breast cancer diagnosis; deep learning; akaike information criterion; threedimensional (3-d); prototype experiment; attention mechanisms; bidirectional long short-term memory (blstm); first-arrival picking; self-attention; ultrasound sound-speed tomography (usst); acoustic noise; numerical models; ultrasonic velocity measurement; quantitative indicators; reconstruction quality; sound-speed tomographies; long short term memory network
Journal Title: IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control
Volume: 68
Issue: 8
ISSN: 0885-3010
Publisher: IEEE  
Date Published: 2021-08-01
Start Page: 2675
End Page: 2686
Language: English
DOI: 10.1109/tuffc.2021.3074983
PUBMED: 33886467
PROVIDER: scopus
DOI/URL:
Notes: Article -- Export Date: 1 September 2021 -- Source: Scopus
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  1. Jue Jiang
    78 Jiang