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Reconstruction of micron resolution mouse brain surface from large-scale imaging dataset using resampling-based variational model

机译:使用基于重采样的变分模型从大规模成像数据集中重建微米分辨率的小鼠脑表面

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Brain surface profile is essential for brain studies, including registration, segmentation of brain structure and drawing neuronal circuits. Recent advances in high-throughput imaging techniques enable imaging whole mouse brain at micron spatial resolution and provide a basis for more fine quantitative studies in neuroscience. However, reconstructing micron resolution brain surface from newly produced neuronal dataset still faces challenges. Most current methods apply global analysis, which are neither applicable to a large imaging dataset nor to a brain surface with an inhomogeneous signal intensity. Here, we proposed a resampling-based variational model for this purpose. In this model, the movement directions of the initial boundary elements are fixed, the final positions of the initial boundary elements that form the brain surface are determined by the local signal intensity. These features assure an effective reconstruction of the brain surface from a new brain dataset. Compared with conventional typical methods, such as level set based method and active contour method, our method significantly increases the recall and precision rates above 97% and is approximately hundreds-fold faster. We demonstrated a fast reconstruction at micron level of the whole brain surface from a large dataset of hundreds of GB in size within 6?hours.
机译:脑表面轮廓对于脑研究至关重要,包括配准,脑结构分割和绘制神经元回路。高通量成像技术的最新进展使得能够以微米空间分辨率对整个小鼠大脑进行成像,并为神经科学中更精细的定量研究提供了基础。然而,从新产生的神经元数据集重建微米分辨率的脑表面仍然面临挑战。当前大多数方法都应用全局分析,这既不适用于大型成像数据集,也不适用于信号强度不均匀的大脑表面。在这里,我们为此目的提出了一个基于重采样的变分模型。在该模型中,初始边界元素的移动方向是固定的,形成脑表面的初始边界元素的最终位置由局部信号强度确定。这些功能可确保从新的大脑数据集中有效重建大脑表面。与传统的典型方法(例如基于水平集的方法和主动轮廓方法)相比,我们的方法显着提高了查全率和准确率,高于97%,并且快了大约数百倍。我们在6小时内从数百GB的大型数据集中展示了整个大脑表面微米级的快速重建。

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