flowPeaks: a fast unsupervised clustering for flow cytometry data via K-means and density peak finding
about
Flow cytometry bioinformaticsAn Introduction to Automated Flow Cytometry Gating Tools and Their ImplementationCritical assessment of automated flow cytometry data analysis techniques.NetFCM: a semi-automated web-based method for flow cytometry data analysis.OpenCyto: an open source infrastructure for scalable, robust, reproducible, and automated, end-to-end flow cytometry data analysisComputational prediction of manually gated rare cells in flow cytometry dataA novel feature extraction approach for microarray data based on multi-algorithm fusion.Unfold High-Dimensional Clouds for Exhaustive Gating of Flow Cytometry Data.Automated mapping of phenotype space with single-cell data.Single and multi-subject clustering of flow cytometry data for cell-type identification and anomaly detectionUnderstanding health and disease with multidimensional single-cell methodsAutomated identification of stratifying signatures in cellular subpopulationsSetting objective thresholds for rare event detection in flow cytometry.Integration of lyoplate based flow cytometry and computational analysis for standardized immunological biomarker discovery.A non-parametric Bayesian model for joint cell clustering and cluster matching: identification of anomalous sample phenotypes with random effects.From cellular characteristics to disease diagnosis: uncovering phenotypes with supercells.Scalable clustering algorithms for continuous environmental flow cytometry.Modeling of inter-sample variation in flow cytometric data with the joint clustering and matching procedure.BayesFlow: latent modeling of flow cytometry cell populationsRegulatory T Cells in Melanoma Revisited by a Computational Clustering of FOXP3+ T Cell Subpopulations.A benchmark for evaluation of algorithms for identification of cellular correlates of clinical outcomes.SWIFT-scalable clustering for automated identification of rare cell populations in large, high-dimensional flow cytometry datasets, part 1: algorithm designWhat is a "unimodal" cell population? Using statistical tests as criteria for unimodality in automated gating and quality control.Toward deterministic and semiautomated SPADE analysis.FloReMi: Flow density survival regression using minimal feature redundancy.Consistent quantitative gene product expression: #1. Automated identification of regenerating bone marrow cell populations using support vector machines.immunoClust--An automated analysis pipeline for the identification of immunophenotypic signatures in high-dimensional cytometric datasets.Multi-parametric cytometry from a complex cellular sample: Improvements and limits of manual versus computational-based interactive analyses.Magnitude and Mechanism of Siderophore-Mediated Competition at Low Iron Solubility in the Pseudomonas aeruginosa Pyochelin System.High Throughput Automated Analysis of Big Flow Cytometry Data.DAFi: A directed recursive data filtering and clustering approach for improving and interpreting data clustering identification of cell populations from polychromatic flow cytometry data.Quantifying cell densities and biovolumes of phytoplankton communities and functional groups using scanning flow cytometry, machine learning and unsupervised clustering.
P2860
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P2860
flowPeaks: a fast unsupervised clustering for flow cytometry data via K-means and density peak finding
description
2012 nî lūn-bûn
@nan
2012 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2012 թվականի մայիսին հրատարակված գիտական հոդված
@hy
2012年の論文
@ja
2012年論文
@yue
2012年論文
@zh-hant
2012年論文
@zh-hk
2012年論文
@zh-mo
2012年論文
@zh-tw
2012年论文
@wuu
name
flowPeaks: a fast unsupervised ...... means and density peak finding
@ast
flowPeaks: a fast unsupervised ...... means and density peak finding
@en
flowPeaks: a fast unsupervised ...... means and density peak finding
@nl
type
label
flowPeaks: a fast unsupervised ...... means and density peak finding
@ast
flowPeaks: a fast unsupervised ...... means and density peak finding
@en
flowPeaks: a fast unsupervised ...... means and density peak finding
@nl
prefLabel
flowPeaks: a fast unsupervised ...... means and density peak finding
@ast
flowPeaks: a fast unsupervised ...... means and density peak finding
@en
flowPeaks: a fast unsupervised ...... means and density peak finding
@nl
P2860
P356
P1433
P1476
flowPeaks: a fast unsupervised ...... means and density peak finding
@en
P2093
Yongchao Ge
P2860
P304
P356
10.1093/BIOINFORMATICS/BTS300
P407
P577
2012-05-17T00:00:00Z