R/flowcatchR-pkg.R

#' flowcatchR: analyzing time-lapse microscopy imaging, from detection to tracking
#'
#' A toolset to analyze in vivo microscopy imaging data focused on tracking
#' flowing blood cells.
#' 
#' flowcatchR is a set of tools to analyze in vivo microscopy imaging
#' data, focused on tracking flowing blood cells. It guides the steps from
#' segmentation to calculation of features, filtering out particles not of
#' interest, providing also a set of utilities to help checking the quality of
#' the performed operations (e.g. how good the segmentation was). The main
#' novel contribution investigates the issue of tracking flowing cells such as
#' in blood vessels, to categorize the particles in flowing, rolling and
#' adherent. This classification is applied in the study of phenomena such as
#' hemostasis and study of thrombosis development.
#' 
#' @import EBImage
#' @import colorRamps
#' @import methods
#' @importFrom abind asub
#' @importFrom graphics grid lines locator plot text
#' @importFrom stats acf median na.omit
#' @importFrom utils read.table setTxtProgressBar txtProgressBar write.table
#' @importFrom plotly plot_ly layout
#' @import shiny
#' 
#' @author
#' Federico Marini \email{marinif@@uni-mainz.de},
#' Johanna Mazur \email{mazur@@uni-mainz.de},
#' Harald Binder \email{binderh@@uni-mainz.de}, 2015
#'
#' Maintainer: Federico Marini \email{marinif@@uni-mainz.de}
#' @name flowcatchR-pkg
#' @docType package
NULL




#' A sample \code{Frames} object 
#' 
#' The sample \code{Frames} object is constituted by a subset of a time-lapse intravital microscopy imaging dataset.
#' Green channel marks leukocytes, red channel focuses on blood platelets. 20 frames are provided in this subset.
#' Images are kindly provided by Sven Jaeckel (\email{Sven.Jaeckel@@unimedizin-mainz.de}).
#' 
#' @author Federico Marini, \email{marinif@@uni-mainz.de}, 2014
#' @name MesenteriumSubset
#' @docType data
NULL



#' A sample \code{ParticleSet} object
#' 
#' The sample \code{ParticleSet} object is constituted by the platelets identified from the \code{MesenteriumSubset} data
#' 
#' @author Federico Marini, \email{marinif@@uni-mainz.de}, 2014
#' @name candidate.platelets
#' @docType data
NULL



# .FLOWCATCHR_VERSION <- '0.99.1'
# #'
# #'
# .onAttach <- function(lib, pkg, ...) {
# packageStartupMessage(sprintf("\nThis is flowcatchR version %s - A toolset to analyze in vivo microscopy imaging data
# for tracking flowing blood cells. Copyright (C) 2014 Federico Marini\n
# Type '?flowcatchR' for help or see www.imbei.de for more details", .FLOWCATCHR_VERSION))
# }

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flowcatchR documentation built on Nov. 8, 2020, 5:04 p.m.