Patient-Adaptive Echocardiography using Cognitive Ultrasound.

Wessel L Van Nierop, Oisin Nolan, Tristan S W Stevens, Ruud J G Van Sloun
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Abstract

Focused transmits are the most commonly used transmit strategy for echocardiograms, but suffer from relatively low frame rates, and in 3D, even lower volume rates. Fast imaging based on unfocused transmits has disadvantages such as motion decorrelation and limited harmonic imaging capabilities. This work introduces a patient-adaptive focused transmit and receive scheme that has the ability to drastically reduce the number of transmits needed to produce a high-quality ultrasound image. The method relies on posterior sampling with a temporal diffusion model to perceive and reconstruct the anatomy based on partial observations, while subsequently acquiring the most informative transmits. This cognitive ultrasound modality outperforms random and equispaced subsampling in terms of distortion and perceptual metrics on the 2D EchoNet-Dynamic dataset and a 3D Philips dataset, where we actively select focused elevation planes. Furthermore, our method improves generalized contrast-to-noise ratio from 0.83 to 0.89 compared to the same number of diverging wave transmits on six in-house echocardiograms. Additionally, we can segment the left ventricle, with on average 0.91 Dice-Sørensen coefficient, through simulating using 2 out of 112 lines. Finally, our method can be run in real-time on GPU accelerators from 2023, increasing the maximum achievable frame-rate from 46 Hz to 58 Hz. The code is publicly available at https://tue-bmd.github.io/casl/.

使用认知超声的患者适应性超声心动图。
聚焦传输是超声心动图中最常用的传输策略,但帧率相对较低,在3D中,体积率甚至更低。基于非聚焦传输的快速成像存在运动去相关和谐波成像能力有限等缺点。这项工作介绍了一种患者自适应聚焦传输和接收方案,该方案能够大大减少产生高质量超声图像所需的传输次数。该方法依靠后验采样和时间扩散模型,在局部观察的基础上感知和重建解剖结构,随后获得最信息的传输。在二维EchoNet-Dynamic数据集和三维Philips数据集上,这种认知超声模式在失真和感知度量方面优于随机和均衡子采样,其中我们主动选择聚焦仰角平面。此外,与6张内部超声心动图上相同数量的发散波传输相比,我们的方法将广义比噪比从0.83提高到0.89。此外,我们可以通过使用112条线中的2条线进行模拟,以平均0.91的Dice-Sørensen系数分割左心室。最后,我们的方法可以从2023年开始在GPU加速器上实时运行,将最大可实现帧率从46 Hz提高到58 Hz。该代码可在https://tue-bmd.github.io/casl/上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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