Description Details Author(s) References See Also
fuchikoma detects differentially expressed genes (DEGs) in one of multiple clusters. To detect DEGs, fuchikoma has two calculation mode; "supervised-mode" and "unsupervised-mode". In supervised-mode, fuchikoma detects DEGs by using a label vector, in which the cluster of each sample or cell is written. In unsupervised-mode, fuchikoma detects DEGs without the label vector. In this mode, user run the diffusion map, and specify which diffusion components contribute to the difference of such cluster.
The DESCRIPTION file:
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The main function is fuchikoma, which returns an object containing the calculation results.
Koki Tsuyuzaki, Haruka Ozaki, Mika Yoshimura, Itoshi Nikaido
Maintainer: Koki Tsuyuzaki <k.t.the-answer@hotmail.co.jp>
Koki Tsuyuzaki et al. (2015) fuchikoma: Detection of Differentially Expressed Genes in one of multiple clusters using BAHSIC and Diffusion Map. R package version 1.0.0
L. J. P. van der Maaten et al. (2008) Visualizing High-Dimensional Data Using t-SNE. Journal of Machine Learning Research, 9(Nov), 2579-2605
Laleh Haghverdi et al. (2015) Diffusion maps for high-dimensional single-cell analysis of differentiation data. Bioinformatics, 31(18), 2989-2998
Le Song et al. (2007) Gene selection via the BAHSIC family of algorithms, Bioinformatics, 23(13), i490-i498
Y-h Taguchi et al. (2015) Principal component analysis-based unsupervised feature extraction applied to in silico drug discovery for posttraumatic stress disorder-mediated heart disease, BMC Bioinformatics, 16(139)
Diego Adhemar Jaitin et al. (2014) Massively Parallel Single-Cell RNA-Seq for Marker-Free Decomposition of Tissues into Cell Types. Science, 343 (6172): 776-779
Arthur Gretton et al. (2007) A Kernel Statistical Test of Independence, NIPS 21
Aaditya Ramdas et al. (2015) Nonparametric Independence Testing for Small Sample Sizes, IJCAI-15
Marioni, J.C. and Mason, C.E. and Mane, S.M. and Stephens, M. and Gilad, Y. (2008) RNA-seq: an assessment of technical reproducibility and comparison with gene expression arrays. Genome Research, 18: 1509–1517.
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