Package: multiClust
Type: Package
Title: A collection of gene feature selection and clustering analysis
        algorithms
Version: 1.8.1
Date: 2017-11-14
Authors@R: c(
    person("Nathan","Lawlor", email = "nathan.lawlor03@gmail.com",
    role = c("aut", "cre")),
    person("Peiyong", "Guan", role = "aut"),
    person("Alec","Fabbri", email = "fabbrialhs@gmail.com", role = "aut"),
    person("Krish", "Karuturi", email = "Krishna.Karuturi@jax.org",
    role = "aut"),
    person("Joshy", "George", email = "Joshy.George@jax.org", role = "aut")
    )
Description: Whole transcriptomic profiles are useful for studying the
    expression levels of thousands of genes across samples. Clustering
    algorithms are used to identify patterns in these profiles to determine
    clinically relevant subgroups. Feature selection is a critical integral
    part of the process. Currently, there are many feature selection and
    clustering methods to identify the relevant genes and perform clustering
    of samples. However, choosing the appropriate methods is difficult as
    recent work demonstrates that no method is the clear winner. Hence, we
    present an R-package called `multiClust` that allows researchers to
    experiment with the choice of combination of methods for gene selection
    and clustering with ease. In addition, using multiClust, we present the
    merit of gene selection and clustering methods in the context of clinical
    relevance of clustering, specifically clinical outcome. Our integrative R-
    package contains: 1. A function to read in gene expression data and
    format appropriately for analysis in R. 2. Four different ways to select
    the number of genes a. Fixed b. Percent c. Poly d. GMM 3. Four gene
    ranking options that order genes based on different statistical criteria
    a. CV_Rank b. CV_Guided c. SD_Rank d. Poly 4. Two ways to determine the
    cluster number a. Fixed b. Gap Statistic 5. Two clustering algorithms
    a. Hierarchical clustering b. K-means clustering 6. A function to
    calculate average gene expression in each sample cluster 7. A function
    to correlate sample clusters with clinical outcome Order of Function
    use: 1. input_file, a function to read-in the gene expression file and
    assign gene probe names as the rownames. 2. number_probes, a function to
    determine the number of probes to select for in the gene feature selection
    process. 3. probe_ranking, a function to select for gene probes using one
    of the available gene probe ranking options. 4. number_clusters, a
    function to determine the number of clusters to be used to cluster genes
    and samples. 5. cluster_analysis, a function to perform Kmeans or
    Hierarchical clustering analysis of the selected gene expression data.
    6. avg_probe_exp, a function to produce a matrix containing the average
    expression of each gene probe within each sample cluster.
    7. surv_analysis, a function to produce Kaplan-Meier Survival Plots
    of selected gene expression data.
License: GPL (>= 2)
biocViews: FeatureExtraction, Clustering, GeneExpression, Survival
LazyData: TRUE
Imports: mclust, ctc, survival, cluster, dendextend, amap, graphics,
        grDevices
Suggests: knitr, gplots, RUnit, BiocGenerics, preprocessCore, Biobase,
        GEOquery, imager
VignetteBuilder: knitr
RoxygenNote: 5.0.0
NeedsCompilation: no
Author: Nathan Lawlor [aut, cre], Peiyong Guan [aut], Alec Fabbri [aut], Krish Karuturi [aut], Joshy George [aut]
Maintainer: Nathan Lawlor <nathan.lawlor03@gmail.com>
Packaged: 2017-11-16 01:30:56 UTC; biocbuild
