Robust adversarial learning model to segment non-speckle regions in blood flow echo

Yuga Mori*, Masaaki Omura*, Shota Suzuki, Ryo Nagaoka, Shangce Gao, Kunimasa Yagi, Hideyuki Hasegawa

*この論文の責任著者

研究成果: ジャーナルへの寄稿学術論文査読

抄録

In our previous study, we analyzed the contrast of blood flow echo, and non-speckle regions were more frequently detected in the porcine blood with the high flow velocity. However, this contrast method is dependent on the degree of smoothing and threshold for outliers. This study developed a new U-Net model incorporating domain adaptation with both in silico and experimental data. This model segments blood flow echo into speckle and non-speckle regions. The performance of the developed U-Net model with several conditions of scatterer number density from 0.1 to 1.5 scatterers mm−3 and scatterer amplitude from 2 to 50 times against the speckle component was assessed using in silico data and experimental data with blood-mimicking fluid. The results indicated that the developed U-Net model with adversarial learning could stably detect non-speckle regions compared to the model without the adversarial learning and the contrast analysis method, in both in silico and experimental data.

本文言語英語
論文番号04SP60
ジャーナルJapanese Journal of Applied Physics
63
4
DOI
出版ステータス出版済み - 2024/04/01

ASJC Scopus 主題領域

  • 工学一般
  • 物理学および天文学一般

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