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Spatio-temporal diffusion-based dynamic cell segmentation

机译:基于时空扩散的动态细胞分割

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Cell segmentation is a critical step for quantification and monitoring of cell behavior in image sequences. In this study, we propose to use a non-linear heat diffusion equation model in the joint spatio-temporal domain for cell segmentation of time-lapse image sequences. Moving regions are initially detected in each set of three consecutive sequence images by numerically solving a system of coupled spatio-temporal partial differential equations and determining the optimal values for the temporal and spatial diffusion parameters. After the spatio-temporal diffusion stage is completed, we compute the edge map by non-parametric density estimation using Parzen kernels. This process is followed by watershed-based segmentation to detect the moving cells. We applied this method on several datasets of fluorescence microscopy images with varying levels of difficulty with respect to cell density, resolution, contrast, and signal-to-noise ratio. We compared the results with those produced by Chan and Vese level-set based segmentation and a temporally linked level set technique. We validated all segmentation techniques against reference masks provided by the international Cell Tracking Challenge consortium. Our proposed method produced encouraging segmentation accuracy, especially when applied to images containing cells undergoing mitosis and low SNR. The performance evaluation clearly indicates the efficiency and robustness of this method in detecting and segmenting the cells with an average Dice similarity coefficient of 85% over a variety of simulated and real fluorescent image sequences. The proposed technique yielded average improvements of 7% in segmentation accuracy compared to both strictly spatial and temporally linked Chan-Vese techniques.
机译:细胞分割是量化和监测图像序列中细胞行为的关键步骤。在这项研究中,我们建议在联合时空域中使用非线性热扩散方程模型对时移图像序列进行细胞分割。通过数值求解时空偏微分方程组并确定时间和空间扩散参数的最佳值,首先在每组三个连续序列图像中检测运动区域。时空扩散阶段完成后,我们使用Parzen核通过非参数密度估计来计算边缘图。此过程之后是基于分水岭的分割,以检测运动的细胞。我们将此方法应用于荧光显微镜图像的几个数据集,这些数据集在细胞密度,分辨率,对比度和信噪比方面具有不同的难度。我们将结果与基于Chan和Vese的水平集分割和时间链接的水平集技术所产生的结果进行了比较。我们根据国际细胞跟踪挑战协会提供的参考口罩验证了所有分割技术。我们提出的方法产生了令人鼓舞的分割精度,尤其是应用于包含有丝分裂和低SNR的细胞的图像时。性能评估清楚地表明了该方法在各种模拟和真实荧光图像序列上检测和分割细胞的平均Dice相似系数为85%的效率和鲁棒性。与严格的时空链接的Chan-Vese技术相比,该技术在分割精度方面平均提高了7%。

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