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Decorrelation-based adherent microbubble identification as a faster alternative to singular spectrum-based targeted molecular (SiSTM) imaging of large blood vessels

机译:基于解相关的粘附微气泡识别是大血管基于奇异谱的靶向分子(SiSTM)成像的更快替代方法

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Ultrasound-based targeted molecular imaging holds promise for early detection and diagnosis of cardiovascular disease and stroke. Current methods used to separate signal from adherent microbubbles are based on frequency domain filtering. Singular spectrum-based targeted molecular (SiSTM) imaging is a recently proposed technique that employ statistical properties, as quantified by the normalized singular spectrum area (NSSA), to more effectively separate signal components in large blood vessels. However, the computational cost to calculate NSSA is high, and thus real-time implementation is challenging. In this paper, flow phantom experiments demonstrated the NSSA-decorrelation patterns caused by different mechanisms: electronic noise, in-beam and out-of-beam movement of scatterers. Results showed that flow rates had little effect on the NSSA-decorrelation pattern caused by out-of-beam decorrelation. Based on the relationship between NSSA and decorrelation (approximately quadratic, adjusted-R2 > 0.86), decorrelation-based adherent microbubble detection was demonstrated to be a faster (2-fold) alternative while maintaining similar performance compared to the NSSA-based method (less than 3% difference).
机译:基于超声的靶向分子成像持有希望早期检测和诊断心血管疾病和中风。用于分离来自粘附微泡的信号的电流方法基于频域滤波。奇异谱的靶分子(SISTM)成像是最近提出的技术,其采用统计特性,其由归一化奇异谱区域(NSSA)量化,以更有效地分离大型血管中的信号分量。然而,计算NSSA的计算成本很高,因此实时实现是具有挑战性的。在本文中,流动幻像实验证明了由不同机制引起的NSSA - 去相关模式:散射体的电子噪声,梁和横梁外运动。结果表明,流量率对由偏光外去相关性引起的NSSA - 去相关模式几乎没有影响。基于NSSA和去序之间的关系(大致二次,调节-R 2 > 0.86),基于去晶的粘附微泡检测被证明是一种更快的(2倍)替代方案,同时保持类似的性能到基于NSSA的方法(差别不到3%)。

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