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Joint volumetric extraction and enhancement of vasculature from low-SNR 3-D fluorescence microscopy images

机译:低信噪比3-D荧光显微图像的联合体积提取和血管系统增强

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摘要

To simultaneously overcome the challenges imposed by the nature of optical imaging characterized by a range of artifacts including space-varying signal to noise ratio (SNR), scattered light, and non-uniform illumination, we developed a novel method that segments the 3-D vasculature directly from original fluorescence microscopy images eliminating the need for employing pre- and post-processing steps such as noise removal and segmentation refinement as used with the majority of segmentation techniques. Our method comprises two initialization and constrained recovery and enhancement stages. The initialization approach is fully automated using features derived from bi-scale statistical measures and produces seed points robust to non-uniform illumination, low SNR, and local structural variations. This algorithm achieves the goal of segmentation via design of an iterative approach that extracts the structure through voting of feature vectors formed by distance, local intensity gradient, and median measures. Qualitative and quantitative analysis of the experimental results obtained from synthetic and real data prove the effcacy of this method in comparison to the state-of-the-art enhancing-segmenting methods. The algorithmic simplicity, freedom from having a priori probabilistic information about the noise, and structural definition gives this algorithm a wide potential range of applications where i.e. structural complexity significantly complicates the segmentation problem.
机译:为了同时克服光学成像的本质所带来的挑战,这些成像具有一系列伪影,包括时变信噪比(SNR),散射光和不均匀照明,我们开发了一种分割3-D的新颖方法直接来自原始荧光显微镜图像的脉管系统,无需像大多数分割技术一样使用预处理和后期处理步骤,例如噪声去除和分割细化。我们的方法包括两个初始化以及受约束的恢复和增强阶段。初始化方法是完全自动化的,使用的是从双尺度统计量度得出的特征,并且可以产生对不均匀照明,低SNR和局部结构变化具有鲁棒性的种子点。该算法通过设计一种迭代方法来实现分割的目的,该迭代方法通过对由距离,局部强度梯度和中值度量形成的特征向量进行投票来提取结构。从合成和真实数据中获得的实验结果的定性和定量分析证明,与最新的增强分段方法相比,该方法是有效的。该算法的简单性,免于获得关于噪声的先验概率信息的自由以及结构定义使该算法具有广泛的潜在应用范围,即结构复杂性使分割问题变得非常复杂。

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