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首页> 外文期刊>Medical image analysis >Coupled minimum-cost flow cell tracking for high-throughput quantitative analysis.
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Coupled minimum-cost flow cell tracking for high-throughput quantitative analysis.

机译:耦合最小成本的流通池跟踪,以进行高通量定量分析。

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A growing number of screening applications require the automated monitoring of cell populations in a high-throughput, high-content environment. These applications depend on accurate cell tracking of individual cells that display various behaviors including mitosis, merging, rapid movement, and entering and leaving the field of view. Many approaches to cell tracking have been developed in the past, but most are quite complex, require extensive post-processing, and are parameter intensive. To overcome such issues, we present a general, consistent, and extensible tracking approach that explicitly models cell behaviors in a graph-theoretic framework. We introduce a way of extending the standard minimum-cost flow algorithm to account for mitosis and merging events through a coupling operation on particular edges. We then show how the resulting graph can be efficiently solved using algorithms such as linear programming to choose the edges of the graph that observe the constraints while leading to the lowest overall cost. This tracking algorithm relies on accurate denoising and segmentation steps for which we use a wavelet-based approach that is able to accurately segment cells even in images with very low contrast-to-noise. In addition, the framework is able to measure and correct for microscope defocusing and stage shift. We applied the algorithms on nearly 6000 images of 400,000 cells representing 32,000 tracks taken from five separate datasets, each composed of multiple wells. Our algorithm was able to segment and track cells and detect different cell behaviors with an accuracy of over 99%. This overall framework enables accurate quantitative analysis of cell events and provides a valuable tool for high-throughput biological studies.
机译:越来越多的筛选应用要求在高通量,高含量的环境中自动监控细胞数量。这些应用取决于对单个细胞的精确细胞跟踪,这些细胞显示出各种行为,包括有丝分裂,合并,快速移动以及进入和离开视野。过去已经开发了许多跟踪单元的方法,但是大多数方法非常复杂,需要大量的后处理,并且参数密集。为了克服这些问题,我们提出了一种通用的,一致的和可扩展的跟踪方法,该方法在图形理论框架中显式地对单元行为进行建模。我们介绍了一种扩展标准最小成本流算法的方法,以通过特定边缘上的耦合操作解决有丝分裂和合并事件。然后,我们展示了如何使用诸如线性编程之类的算法来有效地解决生成的图,以选择图的边沿来观察约束,同时使总成本最低。这种跟踪算法依赖于精确的降噪和分割步骤,对于这些步骤,我们使用基于小波的方法,即使在具有非常低的对比度噪声的图像中也能够准确地分割细胞。此外,该框架能够测量和校正显微镜的散焦和位移。我们将算法应用到了40个细胞的近6000张图像上,这些图像代表了从5个单独的数据集中获取的32,000条轨迹,每个数据集均由多个孔组成。我们的算法能够分割和跟踪细胞并检测不同的细胞行为,准确率超过99%。该总体框架能够对细胞事件进行准确的定量分析,并为高通量生物学研究提供了宝贵的工具。

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