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A Parallel Distributed-Memory Particle Method Enables Acquisition-Rate Segmentation of Large Fluorescence Microscopy Images

机译:并行的分布式内存粒子方法使大型荧光显微镜图像的采集速率分割成为可能。

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摘要

Modern fluorescence microscopy modalities, such as light-sheet microscopy, are capable of acquiring large three-dimensional images at high data rate. This creates a bottleneck in computational processing and analysis of the acquired images, as the rate of acquisition outpaces the speed of processing. Moreover, images can be so large that they do not fit the main memory of a single computer. We address both issues by developing a distributed parallel algorithm for segmentation of large fluorescence microscopy images. The method is based on the versatile Discrete Region Competition algorithm, which has previously proven useful in microscopy image segmentation. The present distributed implementation decomposes the input image into smaller sub-images that are distributed across multiple computers. Using network communication, the computers orchestrate the collectively solving of the global segmentation problem. This not only enables segmentation of large images (we test images of up to 1010 pixels), but also accelerates segmentation to match the time scale of image acquisition. Such acquisition-rate image segmentation is a prerequisite for the smart microscopes of the future and enables online data compression and interactive experiments.
机译:诸如光片显微镜的现代荧光显微镜方法能够以高数据速率获取大型三维图像。由于采集速度超过了处理速度,因此这在计算处理和采集图像的分析中造成了瓶颈。此外,图像可能太大,以致无法容纳单台计算机的主存储器。我们通过开发用于大型荧光显微镜图像分割的分布式并行算法来解决这两个问题。该方法基于通用的离散区域竞争算法,该算法先前已被证明可用于显微镜图像分割。本分布式实现将输入图像分解成较小的子图像,这些子图像分布在多台计算机上。使用网络通信,计算机可以统筹解决全局分割问题。这不仅可以对大图像进行分割(我们最多测试10 10 像素的图像),而且可以加快分割速度,以匹配图像采集的时间尺度。这种采集速率的图像分割是未来智能显微镜的先决条件,并且可以进行在线数据压缩和交互式实验。

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  • 期刊名称 other
  • 作者单位
  • 年(卷),期 -1(11),4
  • 年度 -1
  • 页码 e0152528
  • 总页数 36
  • 原文格式 PDF
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