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首页> 外文期刊>BMC Bioinformatics >LLAMA: a robust and scalable machine learning pipeline for analysis of large scale 4D microscopy data: analysis of cell ruffles and filopodia
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LLAMA: a robust and scalable machine learning pipeline for analysis of large scale 4D microscopy data: analysis of cell ruffles and filopodia

机译:骆驼:一种稳健且可扩展的机器学习管道,用于分析大规模4D显微镜数据:细胞褶边和氟化绦虫的分析

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With recent advances in microscopy, recordings of cell behaviour can result in terabyte-size datasets. The lattice light sheet microscope (LLSM) images cells at high speed and high 3D resolution, accumulating data at 100 frames/second over hours, presenting a major challenge for interrogating these datasets. The surfaces of vertebrate cells can rapidly deform to create projections that interact with the microenvironment. Such surface projections include spike-like filopodia and wave-like ruffles on the surface of macrophages as they engage in immune surveillance. LLSM imaging has provided new insights into the complex surface behaviours of immune cells, including revealing new types of ruffles. However, full use of these data requires systematic and quantitative analysis of thousands of projections over hundreds of time steps, and an effective system for analysis of individual structures at this scale requires efficient and robust methods with minimal user intervention. We present LLAMA, a platform to enable systematic analysis of terabyte-scale 4D microscopy datasets. We use a machine learning method for semantic segmentation, followed by a robust and configurable object separation and tracking algorithm, generating detailed object level statistics. Our system is designed to run on high-performance computing to achieve high throughput, with outputs suitable for visualisation and statistical analysis. Advanced visualisation is a key element of LLAMA: we provide a specialised tool which supports interactive quality control, optimisation, and output visualisation processes to complement the processing pipeline. LLAMA is demonstrated in an analysis of macrophage surface projections, in which it is used to i) discriminate ruffles induced by lipopolysaccharide (LPS) and macrophage colony stimulating factor (CSF-1) and ii) determine the autonomy of ruffle morphologies. LLAMA provides an effective open source tool for running a cell microscopy analysis pipeline based on semantic segmentation, object analysis and tracking. Detailed numerical and visual outputs enable effective statistical analysis, identifying distinct patterns of increased activity under the two interventions considered in our example analysis. Our system provides the capacity to screen large datasets for specific structural configurations. LLAMA identified distinct features of LPS and CSF-1 induced ruffles and it identified a continuity of behaviour between tent pole ruffling, wave-like ruffling and filopodia deployment.
机译:随着近期显微镜的进步,细胞行为的录音可能导致TberaByte大小的数据集。晶格光板显微镜(LLSM)高速和高3D分辨率的图像单元,在100帧/秒钟内累积数据,呈现用于询问这些数据集的主要挑战。脊椎动物细胞的表面可以迅速变形以产生与微环境相互作用的突起。这种表面突起包括穗状花序的氟纤维,并且在巨噬细胞表面上的波浪状褶边,因为它们从事免疫监测。 LLSM成像已经为免疫细胞的复杂表面行为提供了新的洞察力,包括揭示新型褶边。然而,充分利用这些数据需要数千个超过数百个时间步长的数千个投影的系统和定量分析,并且在这种规模上分析各个结构的有效系统需要具有最小的用户干预的高效和鲁棒方法。我们呈现Llama,一个平台,以实现Terabyte级4D显微镜数据集的系统分析。我们使用机器学习方法进行语义分割,然后是一种强大而可配置的对象分离和跟踪算法,生成详细的对象级别统计信息。我们的系统旨在在高性能计算上运行,以实现高吞吐量,输出适合可视化和统计分析。高级可视化是LLAMA的一个关键元素:我们提供了一种专用工具,支持交互式质量控制,优化和输出可视化过程,以补充处理管道。在分析巨噬细胞表面凸起的分析中证明了Llama,其中用于i)脂多糖(LPS)和巨噬细胞殖民地刺激因子(CSF-1)和II)诱导的歧视褶皱确定了荷叶酚形态的自主权。 Llama提供了一种基于语义分割,对象分析和跟踪的小区显微镜分析管道的有效开源工具。详细的数值和视觉输出使有效的统计分析能够识别我们在示例分析中考虑的两种干预措施下的不同活动的不同模式。我们的系统提供了用于特定结构配置的大型数据集的容量。 Llama确定了LPS和CSF-1诱导褶皱的不同特征,它识别出帐篷杆荷丝,波状褶皱和Filopodia部署之间的行为的连续性。

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