| Literature DB >> 27111676 |
Mathias Girault1, Akihiro Hattori1, Hyonchol Kim1,2, Kenji Matsuura1, Masao Odaka1,2, Hideyuki Terazono2, Kenji Yasuda1,2.
Abstract
Recent advances in imaging flow cytometry and microfluidic applications have led to the development of suitable mathematical algorithms capable of detecting and identifying targeted cells in images. In contrast to currently existing algorithms, we herein proposed the identification and reconstruction of cell edges based on original approaches that overcome frequent detection limitations such as halos, noise, and droplet boundaries in microfluidic applications. Reconstructed cells are then discriminated between single cells and clusters of round-shaped cells, and cell information such as the area and location of a cell in an image is output. Using this method, 76% of cells detected in an image had an error <5% of the cell area size and 41% of the image had an error <1% of the cell area size (n = 1,000). The method developed in the present study is the first image processing algorithm designed to be flexible in use (i.e. independent of the size of an image, using a microfluidic droplet system or not, and able to recognize cell clusters in an image) and provides the scientific community with a very accurate imaging algorithm in the field of microfluidic applications.Keywords: algorithm; cell detection; cell reconstruction; droplet; imaging processing; microfluidic
Mesh:
Year: 2016 PMID: 27111676 DOI: 10.1002/cyto.a.22825
Source DB: PubMed Journal: Cytometry A ISSN: 1552-4922 Impact factor: 4.355