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Comparison of methods for detection of contrast agents in ultrasound signals

机译:超声信号中造影剂检测方法的比较

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Detection and segmentation of events in noisy random signals, which are non-stationary or stationary by segments, are used when differentiation between tissues or between tissue and Ultrasound Contrast Agent (UCA) is required. Here 4 different detection algorithms were studied, for detecting small sections of UCA within tissue - 'transients'. The algorithms are based on linear time-frequency transforms: Autoregressive (AR) and the Short Time Fourier Transform (STFT). The processed signals were clustered and classified into 'Tissue' or 'Transient', by the Newman Pierson Decision Principle, the STFT with Smooth Threshold and the Novelty Detection algorithm with Kernel transform. The detection ability of the 4 methods were compared, using simulated signals and signals generated experimentally. The simulated signals include signals with different Transient-to-Tissue Energy Ratio (from -25 dB to 5dB) and different durations (20 and 150 samples in length). 'In-vitro' experiments were carried out with UCA (Optison) flowing through 2-6 mm Latex tubes inserted into real and artificial tissues. The STFT with Smooth Threshold method and Novelty Detection with Kernel Function method performed best. Thus, the series of laboratory experiments verified the simulation results that under similar conditions, flow of UCA in 2 mm tubes/arteries can be successfully detected.
机译:当需要区分组织之间或组织与超声造影剂(UCA)之间的差异时,可使用有噪声的随机信号中事件的检测和分段,这些信号是不固定的或按段固定的。在这里研究了4种不同的检测算法,用于检测组织内UCA的小部分-“瞬态”。该算法基于线性时频变换:自回归(AR)和短时傅立叶变换(STFT)。根据纽曼·皮尔森决策原理,具有平滑阈值的STFT和具有核变换的新颖性检测算法,将处理后的信号进行聚类并分类为“组织”或“瞬态”。使用模拟信号和实验生成的信号,比较了这四种方法的检测能力。模拟信号包括具有不同的瞬态与组织能量比(从-25 dB到5dB)和不同的持续时间(长度为20和150个样本)的信号。使用UCA(Optison)流过插入到真实和人造组织中的2-6 mm乳胶管进行“体外”实验。具有平滑阈值方法的STFT和具有内核功能的新颖性检测的STFT表现最佳。因此,一系列的实验室实验验证了模拟结果,即在类似条件下,可以成功检测到2 mm管/动脉中的UCA流量。

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