TY - JOUR A2 - Gottardo, Raphael AU - Walther, Guenther AU - Zimmerman, Noah AU - Moore, Wayne AU - Parks, David AU - Meehan, Stephen AU - Belitskaya, Ilana AU - Pan, Jinhui AU - Herzenberg, Leonore PY - 2009 DA - 2009/11/19 TI - Automatic Clustering of Flow Cytometry Data with Density-Based Merging SP - 686759 VL - 2009 AB - The ability of flow cytometry to allow fast single cell interrogation of a large number of cells hasmade this technology ubiquitous and indispensable in the clinical and laboratory setting. A current limit to the potential of this technology is the lack of automated tools for analyzing the resulting data. We describe methodology and software to automatically identify cell populations in flow cytometry data. Our approach advances the paradigm of manually gating sequential two-dimensional projections of the data to a procedure that automatically produces gates based on statistical theory. Our approach is nonparametric and can reproduce nonconvex subpopulations that are known to occur in flow cytometry samples, but which cannot be produced with current parametric model-based approaches. We illustrate the methodology with a sample of mouse spleen and peritoneal cavity cells. SN - 1687-8027 UR - https://doi.org/10.1155/2009/686759 DO - 10.1155/2009/686759 JF - Advances in Bioinformatics PB - Hindawi Publishing Corporation KW - ER -