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1.
Methods ; 112: 201-210, 2017 01 01.
Artículo en Inglés | MEDLINE | ID: mdl-27594698

RESUMEN

Imaging flow cytometry (IFC) enables the high throughput collection of morphological and spatial information from hundreds of thousands of single cells. This high content, information rich image data can in theory resolve important biological differences among complex, often heterogeneous biological samples. However, data analysis is often performed in a highly manual and subjective manner using very limited image analysis techniques in combination with conventional flow cytometry gating strategies. This approach is not scalable to the hundreds of available image-based features per cell and thus makes use of only a fraction of the spatial and morphometric information. As a result, the quality, reproducibility and rigour of results are limited by the skill, experience and ingenuity of the data analyst. Here, we describe a pipeline using open-source software that leverages the rich information in digital imagery using machine learning algorithms. Compensated and corrected raw image files (.rif) data files from an imaging flow cytometer (the proprietary .cif file format) are imported into the open-source software CellProfiler, where an image processing pipeline identifies cells and subcellular compartments allowing hundreds of morphological features to be measured. This high-dimensional data can then be analysed using cutting-edge machine learning and clustering approaches using "user-friendly" platforms such as CellProfiler Analyst. Researchers can train an automated cell classifier to recognize different cell types, cell cycle phases, drug treatment/control conditions, etc., using supervised machine learning. This workflow should enable the scientific community to leverage the full analytical power of IFC-derived data sets. It will help to reveal otherwise unappreciated populations of cells based on features that may be hidden to the human eye that include subtle measured differences in label free detection channels such as bright-field and dark-field imagery.


Asunto(s)
Citometría de Flujo/métodos , Citometría de Imagen/métodos , Procesamiento de Imagen Asistido por Computador/estadística & datos numéricos , Aprendizaje Automático , Recuento de Células , Humanos , Interfase/genética , Células Jurkat , Mitosis , Reproducibilidad de los Resultados , Programas Informáticos , Flujo de Trabajo
2.
Phys Biol ; 14(3): 036001, 2017 05 11.
Artículo en Inglés | MEDLINE | ID: mdl-28198357

RESUMEN

Accessing gene expression at a single-cell level has unraveled often large heterogeneity among seemingly homogeneous cells, which remains obscured when using traditional population-based approaches. The computational analysis of single-cell transcriptomics data, however, still imposes unresolved challenges with respect to normalization, visualization and modeling the data. One such issue is differences in cell size, which introduce additional variability into the data and for which appropriate normalization techniques are needed. Otherwise, these differences in cell size may obscure genuine heterogeneities among cell populations and lead to overdispersed steady-state distributions of mRNA transcript numbers. We present cgCorrect, a statistical framework to correct for differences in cell size that are due to cell growth in single-cell transcriptomics data. We derive the probability for the cell-growth-corrected mRNA transcript number given the measured, cell size-dependent mRNA transcript number, based on the assumption that the average number of transcripts in a cell increases proportionally to the cell's volume during the cell cycle. cgCorrect can be used for both data normalization and to analyze the steady-state distributions used to infer the gene expression mechanism. We demonstrate its applicability on both simulated data and single-cell quantitative real-time polymerase chain reaction (PCR) data from mouse blood stem and progenitor cells (and to quantitative single-cell RNA-sequencing data obtained from mouse embryonic stem cells). We show that correcting for differences in cell size affects the interpretation of the data obtained by typically performed computational analysis.


Asunto(s)
Aumento de la Célula , Tamaño de la Célula , Perfilación de la Expresión Génica/métodos , Expresión Génica , ARN Mensajero/metabolismo , Biología Computacional , Modelos Genéticos
3.
Nat Commun ; 8(1): 463, 2017 09 06.
Artículo en Inglés | MEDLINE | ID: mdl-28878212

RESUMEN

We show that deep convolutional neural networks combined with nonlinear dimension reduction enable reconstructing biological processes based on raw image data. We demonstrate this by reconstructing the cell cycle of Jurkat cells and disease progression in diabetic retinopathy. In further analysis of Jurkat cells, we detect and separate a subpopulation of dead cells in an unsupervised manner and, in classifying discrete cell cycle stages, we reach a sixfold reduction in error rate compared to a recent approach based on boosting on image features. In contrast to previous methods, deep learning based predictions are fast enough for on-the-fly analysis in an imaging flow cytometer.The interpretation of information-rich, high-throughput single-cell data is a challenge requiring sophisticated computational tools. Here the authors demonstrate a deep convolutional neural network that can classify cell cycle status on-the-fly.


Asunto(s)
Retinopatía Diabética/patología , Progresión de la Enfermedad , Aprendizaje Automático , Redes Neurales de la Computación , Ciclo Celular , División Celular , Simulación por Computador , ADN/análisis , Citometría de Flujo , Humanos , Células Jurkat , Mitosis , Reproducibilidad de los Resultados
4.
Cell Syst ; 2(1): 49-58, 2016 01 27.
Artículo en Inglés | MEDLINE | ID: mdl-27136689

RESUMEN

Post-translational modifications (PTMs) are pivotal to cellular information processing, but how combinatorial PTM patterns ("motifs") are set remains elusive. We develop a computational framework, which we provide as open source code, to investigate the design principles generating the combinatorial acetylation patterns on histone H4 in Drosophila melanogaster. We find that models assuming purely unspecific or lysine site-specific acetylation rates were insufficient to explain the experimentally determined motif abundances. Rather, these abundances were best described by an ensemble of models with acetylation rates that were specific to motifs. The model ensemble converged upon four acetylation pathways; we validated three of these using independent data from a systematic enzyme depletion study. Our findings suggest that histone acetylation patterns originate through specific pathways involving motif-specific acetylation activity.


Asunto(s)
Histonas/metabolismo , Acetilación , Animales , Drosophila melanogaster , Metilación , Procesamiento Proteico-Postraduccional
5.
Nat Commun ; 7: 10256, 2016 Jan 07.
Artículo en Inglés | MEDLINE | ID: mdl-26739115

RESUMEN

Imaging flow cytometry combines the high-throughput capabilities of conventional flow cytometry with single-cell imaging. Here we demonstrate label-free prediction of DNA content and quantification of the mitotic cell cycle phases by applying supervised machine learning to morphological features extracted from brightfield and the typically ignored darkfield images of cells from an imaging flow cytometer. This method facilitates non-destructive monitoring of cells avoiding potentially confounding effects of fluorescent stains while maximizing available fluorescence channels. The method is effective in cell cycle analysis for mammalian cells, both fixed and live, and accurately assesses the impact of a cell cycle mitotic phase blocking agent. As the same method is effective in predicting the DNA content of fission yeast, it is likely to have a broad application to other cell types.


Asunto(s)
Ciclo Celular/fisiología , Citometría de Flujo/métodos , ADN/genética , Humanos , Procesamiento de Imagen Asistido por Computador , Células Jurkat , Aprendizaje Automático , Schizosaccharomyces
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