[Bioc-devel] new version with extensive updates: mosaics
Dongjun Chung
chungdon at stat.wisc.edu
Fri Feb 17 22:40:20 CET 2012
Hi all,
We would like to announce a new version of our package, mosaics
(MOdel-based one and two Sample Analysis and Inference for ChIP-Seq),
with extensive updates.
R package mosaics implements MOSAiCS, a statistical framework for the
analysis of ChIP-seq data, proposed in Kuan et al. (2011), JASA, 106:
891-903. MOSAiCS stands for "MOdel-based one and two Sample Analysis and
Inference for ChIP-Seq Data". It implements a flexible parametric
mixture modeling approach for detecting peaks, i.e., enriched regions,
in one-sample (ChIP sample) or two-sample (ChIP and control samples)
ChIP-seq data. It accounts for mappability and GC content biases that
arise in ChIP-seq data.
This new version of the mosaics package (ver 1.2.5) provides many new
features and improvements, including:
- New model for deeply sequenced ChIP-Seq data.
- Supports for various aligned read file formats (eland_result,
eland_extended, eland_export, bowtie, SAM, BED, CSEM).
- Preprocessing of aligned read files can be done within the R
environment using constructBins().
- Easier model fitting for the two sample analysis using mosaicsRunAll().
- Preprocessing and model fitting become much faster (Rcpp).
- Parallel processing is now supported (multicore).
Please check the vignette of the package and 'package?mosaics' for
further details. The package is available at
http://bioconductor.org/packages/2.9/bioc/html/mosaics.html.
Please post any questions or comments at our mosaics google group
(http://groups.google.com/group/mosaics_user_group). Any comments or
suggestions would be very helpful.
Best,
Dongjun
PhD Candidate
Department of Statistics
Univerisity of Wisconsin at Madison
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