Literature DB >> 22065448

Identifying fluorescently labeled single molecules in image stacks using machine learning.

Scott A Rifkin1.   

Abstract

In the past several years, a host of new technologies have made it possible to visualize single molecules within cells and organisms (Raj et al., Nat Methods 5:877-879, 2008; Paré et al., Curr Biol 19:2037-2042, 2009; Lu and Tsourkas, Nucleic Acids Res 37:e100, 2009; Femino et al., Science 280:585-590, 1998; Rodriguez et al., Semin Cell Dev Biol 18:202-208, 2007; Betzig et al., Science 313:1642-1645, 2006; Rust et al., Nat Methods 3:793-796, 2006; Fusco et al., Curr Biol 13:161-167, 2003). Many of these are based on fluorescence, either fluorescent proteins or fluorescent dyes coupled to a molecule of interest. In many applications, the fluorescent signal is limited to a few pixels, which poses a classic signal processing problem: how can actual signal be distinguished from background noise? In this chapter, I present a MATLAB (MathWorks (2010) MATLAB. Retrieved from http://www.mathworks.com) software suite designed to work with these single-molecule visualization technologies (Rifkin (2010) spotFinding Suite. http://www.biology.ucsd.edu/labs/rifkin/software.html). It takes images or image stacks from a fluorescence microscope as input and outputs locations of the molecules. Although the software was developed for the specific application of identifying single mRNA transcripts in fixed specimens, it is more general than this and can be used and/or customized for other applications that produce localized signals embedded in a potentially noisy background. The analysis pipeline consists of the following steps: (a) create a gold-standard dataset, (b) train a machine-learning algorithm to classify image features as signal or noise depending upon user defined statistics, (c) run the machine-learning algorithm on a new dataset to identify mRNA locations, and (d) visually inspect and correct the results.

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Year:  2011        PMID: 22065448     DOI: 10.1007/978-1-61779-228-1_20

Source DB:  PubMed          Journal:  Methods Mol Biol        ISSN: 1064-3745


  5 in total

1.  Mutagenesis of GATA motifs controlling the endoderm regulator elt-2 reveals distinct dominant and secondary cis-regulatory elements.

Authors:  Lawrence Du; Sharon Tracy; Scott A Rifkin
Journal:  Dev Biol       Date:  2016-02-16       Impact factor: 3.582

2.  MED GATA factors promote robust development of the C. elegans endoderm.

Authors:  Morris F Maduro; Gina Broitman-Maduro; Hailey Choi; Francisco Carranza; Allison Chia-Yi Wu; Scott A Rifkin
Journal:  Dev Biol       Date:  2015-05-08       Impact factor: 3.582

3.  Aro: a machine learning approach to identifying single molecules and estimating classification error in fluorescence microscopy images.

Authors:  Allison Chia-Yi Wu; Scott A Rifkin
Journal:  BMC Bioinformatics       Date:  2015-03-27       Impact factor: 3.169

4.  An automated workflow for quantifying RNA transcripts in individual cells in large data-sets.

Authors:  Matthew C Pharris; Tzu-Ching Wu; Xinping Chen; Xu Wang; David M Umulis; Vikki M Weake; Tamara L Kinzer-Ursem
Journal:  MethodsX       Date:  2017-09-01

5.  Automatic classification and segmentation of single-molecule fluorescence time traces with deep learning.

Authors:  Jieming Li; Leyou Zhang; Alexander Johnson-Buck; Nils G Walter
Journal:  Nat Commun       Date:  2020-11-17       Impact factor: 14.919

  5 in total

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