LLAMA: a robust and scalable machine learning pipeline for analysis of large scale 4D microscopy data: analysis of cell ruffles and filopodia
Autor: | Jennifer L. Stow, Yvette W. H. Koh, Nicholas A. Hamilton, Adam A. Wall, James G. Lefevre, Nicholas D. Condon |
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Rok vydání: | 2021 |
Předmět: |
QH301-705.5
Macrophage Computer science Computer applications to medicine. Medical informatics R858-859.7 Machine learning computer.software_genre Biochemistry Machine Learning 03 medical and health sciences 0302 clinical medicine Structural Biology Segmentation Pseudopodia Biology (General) Molecular Biology Throughput (business) 030304 developmental biology Filopodia Microscopy 0303 health sciences business.industry Macrophages Applied Mathematics Ruffles Supercomputer Object (computer science) Semantic segmentation Pipeline (software) Computer Science Applications Visualization Scalability High performance computing Artificial intelligence business computer Algorithms Software 030217 neurology & neurosurgery Object detection and tracking |
Zdroj: | BMC Bioinformatics BMC Bioinformatics, Vol 22, Iss 1, Pp 1-26 (2021) |
ISSN: | 1471-2105 |
DOI: | 10.1186/s12859-021-04324-z |
Popis: | Background 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. Results 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. Conclusions 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. |
Databáze: | OpenAIRE |
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