Brice Rauby, Paul Xing, Jonathan Poree, Maxime Gasse, Jean Provost
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摘要

超声定位显微镜(ULM)是一种非侵入性技术,可对体内微血管进行深度成像,分辨率约为 10 微米。ULM 基于注入血液中的单个微气泡的亚分辨率定位。绘制整个血管结构图需要积累数千帧的微气泡轨迹,通常需要几分钟的采集时间。ULM 采集时间可通过增加微泡浓度来缩短,但需要更先进的算法来单独检测微泡。已经有几种深度学习方法被提出用于这项任务,但它们仍然局限于二维成像,部分原因是相关的大内存要求。在此,我们建议使用稀疏张量神经网络,通过提高维度来改善内存的可扩展性,从而实现基于深度学习的 3D ULM。我们研究了几种将超声数据有效转换为稀疏格式的方法,并研究了相关信息损失的影响。与密集网络相比,在二维应用中,稀疏格式减少了 2 倍的内存需求,但性能却略有下降。在三维空间中,所提出的方法将内存需求降低了两个数量级,同时在高浓度环境中大大优于传统的 ULM。我们的研究表明,稀疏张量神经网络在 3D ULM 中的优势与基于密集深度学习的方法在 2D ULM 中的优势相同,即使用更高浓度的硅胶和减少采集时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pruning Sparse Tensor Neural Networks Enables Deep Learning for 3D Ultrasound Localization Microscopy.

Ultrasound Localization Microscopy (ULM) is a non-invasive technique that allows for the imaging of micro-vessels in vivo, at depth and with a resolution on the order of ten microns. ULM is based on the sub-resolution localization of individual microbubbles injected in the bloodstream. Mapping the whole angioarchitecture requires the accumulation of microbubbles trajectories from thousands of frames, typically acquired over a few minutes. ULM acquisition times can be reduced by increasing the microbubble concentration, but requires more advanced algorithms to detect them individually. Several deep learning approaches have been proposed for this task, but they remain limited to 2D imaging, in part due to the associated large memory requirements. Herein, we propose the use of sparse tensor neural networks to enable deep learning-based 3D ULM by improving memory scalability with increased dimensionality. We study several approaches to efficiently convert ultrasound data into a sparse format and study the impact of the associated loss of information. When applied in 2D, the sparse formulation reduces the memory requirements by a factor 2 at the cost of a small reduction of performance when compared against dense networks. In 3D, the proposed approach reduces memory requirements by two order of magnitude while largely outperforming conventional ULM in high concentration settings. We show that Sparse Tensor Neural Networks in 3D ULM allow for the same benefits as dense deep learning based method in 2D ULM i.e. the use of higher concentration in silico and reduced acquisition time.

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