论文标题
基于变压器的微气泡本地化
Transformer-Based Microbubble Localization
论文作者
论文摘要
超声定位显微镜(ULM)是一种采用回声微泡(MB)定位的新兴技术,可对微循环进行精细样品并对超声成像的衍射极限进行成像。常规的MB定位方法主要基于考虑MBS的特定点扩散函数(PSF),这导致由重叠MB,非平稳性PSF和谐波MB回声引起的信息丢失。因此,必须设计可以准确定位MB的方法,同时对MB非线性弹性和扭曲MB PSF的MB浓度的变化。本文提出了一种基于变压器的MB本地化方法来解决此问题。我们采用了检测变压器(DETR)ARXIV:2005.12872,它是一种端到端对象识别方法,它使用基于集合的匈牙利损失和双方匹配来检测每个检测到的对象的唯一边界框。据作者所知,这是第一次将变形金刚用于MB本地化。为了评估拟议的策略,已经测试了使用转移学习原理检测MBS的预训练的DETR网络的性能。我们已经在IEEE IUS Ultra-SR挑战组织者提供的随机选择的数据集的随机帧中进行了微调,然后使用交叉验证对其进行了测试。对于模拟数据集,本文支持基于变压器的解决方案以高精度的方式部署用于MB的本地化。
Ultrasound Localization Microscopy (ULM) is an emerging technique that employs the localization of echogenic microbubbles (MBs) to finely sample and image the microcirculation beyond the diffraction limit of ultrasound imaging. Conventional MB localization methods are mainly based on considering a specific Point Spread Function (PSF) for MBs, which leads to loss of information caused by overlapping MBs, non-stationary PSFs, and harmonic MB echoes. Therefore, it is imperative to devise methods that can accurately localize MBs while being resilient to MB nonlinearities and variations of MB concentrations that distort MB PSFs. This paper proposes a transformer-based MB localization approach to address this issue. We adopted DEtection TRansformer (DETR) arXiv:2005.12872 , which is an end-to-end object recognition method that detects a unique bounding box for each of the detected objects using set-based Hungarian loss and bipartite matching. To the authors' knowledge, this is the first time transformers have been used for MB localization. To appraise the proposed strategy, the pre-trained DETR network's performance has been tested for detecting MBs using transfer learning principles. We have fine-tuned the network on a subset of randomly selected frames of the dataset provided by the IEEE IUS Ultra-SR challenge organizers and then tested on the rest using cross-validation. For the simulation dataset, the paper supports the deployment of transformer-based solutions for MB localization at high accuracy.