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The study on the parallel processing based time series correlation analysis of RBC membrane flickering in quantitative phase imaging

机译:基于平行处理的RBC膜闪烁在定量相位成像中的平行处理的研究

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Not only static characteristics but also dynamic characteristics of the red blood cell (RBC) contains useful information for the blood diagnosis. Quantitative phase imaging (QPI) can capture sample images with sub-nanometer scale depth resolution and millisecond scale temporal resolution. Various researches have been used QPI for the RBC diagnosis, and recently many researches has been developed to decrease the process time of RBC information extraction using QPI by the parallel computing algorithm, however previous studies are interested in the static parameters such as morphology of the cells or simple dynamic parameters such as root mean square (RMS) of the membrane fluctuations. Previously, we presented a practical blood test method using the time series correlation analysis of RBC membrane flickering with QPI. However, this method has shown that there is a limit to the clinical application because of the long computation time. In this study, we present an accelerated time series correlation analysis of RBC membrane flickering using the parallel computing algorithm. This method showed consistent fractal scaling exponent results of the surrounding medium and the normal RBC with our previous research.
机译:不仅静态特性,而且红细胞的动态特性(RBC)包含血液诊断有用的信息。定量相位成像(QPI)可以捕捉与亚纳米尺度深度分辨率和毫秒级的时间分辨率的样品的图像。各种研究已经使用QPI为RBC诊断,最近许多研究已经发展到减少使用QPI由并行计算算法RBC信息提取的处理时间,但是以前的研究感兴趣的静态参数,如细胞的形态或简单的动态参数,如膜的波动的均方根(RMS)。先前,我们提出使用RBC膜与QPI闪烁的时间序列相关分析实际血液测试方法。但是,这种方法表明,有因为计算时间长的临床应用程序的限制。在这项研究中,我们提出的RBC膜使用并行计算算法闪烁的加速时间序列相关性分析。这种方法表明,周围介质,并与我们以前的研究正常红细胞的一致分形标度指数的结果。

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