Time-frequency analysis based motion detection in perfusion weighted MRI

M. Sushma, Anubha Gupta, J. Sivaswamy
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Abstract

In this paper, we present a novel automated method to detect motion in perfusion weighted images (PWI), which is a type of magnetic resonance imaging (MRI). In PWI, blood perfusion is measured by injecting an exogenous tracer called bolus into the blood flow of a patient and then tracking it in the brain. PWI requires a long data acquisition time to form a time series of volumes. Hence, motion occurs due to patient's unavoidable movements during a scan, which in turn results into motion corrupted data. There is a necessity of detection of these motion artifacts on captured data for correct disease diagnosis. In PWI, intensity profile gets disturbed due to occurrence of motion and/or bolus passage through the blood vessels. There is no way to distinguish between motion occurrence and bolus passage. In this paper, we propose an efficient time-frequency analysis based motion detection method. We show that proposed method is computationally inexpensive and fast. This method is evaluated on a DSC-MRI sequence with simulated motion of different degrees. We show that our approach detects motion in a few seconds.
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灌注加权MRI中基于时频分析的运动检测
在本文中,我们提出了一种新的自动检测灌注加权图像(PWI)运动的方法,这是一种磁共振成像(MRI)。在PWI中,血液灌注是通过向患者的血流中注射一种称为bolus的外源性示踪剂,然后在大脑中进行跟踪来测量的。PWI需要较长的数据采集时间来形成时间序列的卷。因此,在扫描过程中,由于患者不可避免的运动而发生运动,这反过来又导致运动损坏数据。为了正确诊断疾病,有必要在捕获的数据上检测这些运动伪影。在PWI中,由于运动和/或药物通过血管,强度分布受到干扰。没有办法区分运动的发生和药丸的通过。本文提出了一种有效的基于时频分析的运动检测方法。结果表明,该方法计算成本低,速度快。该方法在模拟不同程度运动的DSC-MRI序列上进行了评估。我们证明,我们的方法可以在几秒钟内检测到运动。
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