Latent modeling of flow cytometry cell populations
نویسندگان
چکیده
Flow cytometry is a widespread single-cell measurement technology with a multitude of clinical and research applications. Interpretation of flow cytometry data is hard; the instrumentation is delicate and can not render absolute measurements, hence samples can only be interpreted in relation to each other while at the same time comparisons are confounded by inter-sample variation. Despite this, current automated flow cytometry data analysis methods either treat samples individually or ignore the variation by for example pooling the data. In this article we introduce a Bayesian hierarchical model for studying latent relations between cell populations in flow cytometry samples, thereby systematizing inter-sample variation. The model is applied to a data set containing replicated flow cytometry measurements of samples from healthy individuals, with informative priors capturing expert knowledge. It is shown that the technical variation in the inferred cell population sizes is small in comparison to the intrinsic biological variation. The large size of flow cytometry data, where a single sample can contain measurements on hundreds of thousands of cells, necessitates ∗[email protected]; Corresponding author 1 ar X iv :1 50 2. 04 05 8v 1 [ st at .A P] 1 3 Fe b 20 15 computationally efficient methods. To address this, we have implemented a parallel Markov Chain Monte Carlo scheme for sampling the posterior distribution.
منابع مشابه
Corrigendum: Stochastic Individual-Based Modeling of Bacterial Growth and Division Using Flow Cytometry
A realistic description of the variability in bacterial growth and division is critical to produce reliable predictions of safety risks along the food chain. Individual-based modeling of bacteria provides the theoretical framework to deal with this variability, but it requires information about the individual behavior of bacteria inside populations. In this work, we overcome this problem by est...
متن کاملO-3: Identification and Characterization of Repopulating Spermatogonial Stem Cells from The Adult Human Testis
Background: This study was conducted to identify and characterize repopulating spermatogonial stem cells (SSCs) in the adult human testes. Materials and Methods: Testes biopsies from obstructive azoospermic patients and normal segments of human testicular tissue were used. Flow cytometry, real time PCR and immunohistochemical analysis were performed. Purified human spermatogonia were transplant...
متن کاملSingle-Cell Cytokine Gene Expression in Peripheral Blood Cells Correlates with Latent Tuberculosis Status.
RNA flow cytometry (FISH-Flow) achieves high-throughput measurement of single-cell gene expression by combining in-situ nucleic acid hybridization with flow cytometry. We tested whether antigen-specific T-cell responses detected by FISH-Flow correlated with latent tuberculosis infection (LTBI), a condition affecting one-third of the world population. Peripheral-blood mononuclear cells from dono...
متن کاملAutomated High-Dimensional Flow Cytometric Data Analysis
Flow cytometric analysis allows rapid single cell interrogation of surface and intracellular determinants by measuring fluorescence intensity of fluorophore-conjugated reagents. The availability of new platforms, allowing detection of increasing numbers of cell surface markers, has challenged the traditional technique of identifying cell populations by manual gating and resulted in a growing ne...
متن کاملEvaluation of antibiotic resistance pattern of meropenem and piperacillin in Multi drug resistant Acinetobacter baumannii isolates by Flow cytometry method
Background and Objective:: Flow cytometry is a rapid method that can analysis thousands of cells per second and can be used fordetermination of microbial populations and determination of bacterial antimicrobial susceptibility. In this study antibiotic resistance pattern of Acinetobacter baumannii isolates by flow cytometer was evaluated. Materials and Methods: 55 isolates of Acinetobacter b...
متن کامل