基于决策理论的超声定位显微微泡识别

Alexandre Corazza;Pauline Muleki-Seya;Adrian Basarab;Barbara Nicolas
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引用次数: 1

摘要

超声定位显微镜(ULM)能够通过检测、定位和跟踪血管网络中的微气泡(MB)来评估血管微观结构。ULM提供了具有改进的空间分辨率但具有几分钟的采集时间的网络的血管图。因此,增加检测到的MB的数量以限制获取时间是非常重要的。ULM中的标准MB检测方法假设造影剂是超声图像上强度最高的结构。然而,体内数据显示MB强度可能低于残留组织甚至噪声。因此,为了便于检测这些MB,本文提出了一种基于决策理论的MB检测器。在本研究中,在模拟和体内大鼠大脑和肾脏数据上,将所提出的基于Neyman–Pearson标准的方法与基于标准强度和归一化互相关检测方法进行了比较。新的检测方法可以在不降低模拟数据MB检测率的情况下控制假阳性检测率,提高体内大脑数据的ULM血管图分辨率,并在体内肾脏数据上检测更多血管。
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Microbubble Identification Based on Decision Theory for Ultrasound Localization Microscopy
Ultrasound localization microscopy (ULM) enables the evaluation of the vascular microstructure by detecting, localizing, and tracking microbubbles (MBs) in the vascular network. ULM provides a vascular map of the network with improved spatial resolution but with an acquisition time of several minutes. Thus, it is of great importance to increase the number of MBs detected in order to limit the acquisition time. The standard MB detection method in ULM assumes that the contrast agents are the highest-intensity structures on the ultrasound images. However, in vivo data show that MB intensity may be lower than residual tissue or even noise. Thus, to facilitate the detection of these MBs, an MB detector based on decision theory is proposed in this paper. In this study, the proposed method based on the Neyman–Pearson criterion is compared with the standard intensity-based and the normalized cross-correlation detection methods on simulated and in vivo rat brain and kidney data. The new detection method makes it possible to control the false positive detection rate without degrading the MB detection rate on simulated data, to enhance the ULM vessel map resolution on in vivo brain data and to detect more vessels on in vivo kidney data.
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