This package is for version 3.15 of Bioconductor; for the stable, up-to-date release version, see MEB.
Bioconductor version: 3.15
Identifying differentially expressed genes between the same or different species is an urgent demand for biological and medical research. For RNA-seq data, systematic technical effects and different sequencing depths are usually encountered when conducting experiments. Normalization is regarded as an essential step in the discovery of biologically important changes in expression. The present methods usually involve normalization of the data with a scaling factor, followed by detection of significant genes. However, more than one scaling factor may exist because of the complexity of real data. Consequently, methods that normalize data by a single scaling factor may deliver suboptimal performance or may not even work. The development of modern machine learning techniques has provided a new perspective regarding discrimination between differentially expressed (DE) and non-DE genes. However, in reality, the non-DE genes comprise only a small set and may contain housekeeping genes (in same species) or conserved orthologous genes (in different species). Therefore, the process of detecting DE genes can be formulated as a one-class classification problem, where only non-DE genes are observed, while DE genes are completely absent from the training data. We transform the problem to an outlier detection problem by treating DE genes as outliers, and we propose a normalization-invariant minimum enclosing ball (NIMEB) method to construct a smallest possible ball to contain the known non-DE genes in a feature space. The genes outside the minimum enclosing ball can then be naturally considered to be DE genes. Compared with the existing methods, the proposed NIMEB method does not require data normalization, which is particularly attractive when the RNA-seq data include more than one scaling factor. Furthermore, the NIMEB method could be easily extended to different species without normalization.
Author: Yan Zhou, Jiadi Zhu
Maintainer: Jiadi Zhu <2160090406 at email.szu.edu.cn>, Yan Zhou <zhouy1016 at szu.edu.cn>
Citation (from within R,
enter citation("MEB")
):
To install this package, start R (version "4.2") and enter:
if (!require("BiocManager", quietly = TRUE)) install.packages("BiocManager") BiocManager::install("MEB")
For older versions of R, please refer to the appropriate Bioconductor release.
To view documentation for the version of this package installed in your system, start R and enter:
browseVignettes("MEB")
HTML | R Script | MEB Tutorial |
Reference Manual | ||
Text | NEWS |
biocViews | Classification, DifferentialExpression, GeneExpression, Normalization, Sequencing, Software |
Version | 1.10.0 |
In Bioconductor since | BioC 3.10 (R-3.6) (3 years) |
License | GPL-2 |
Depends | R (>= 3.6.0) |
Imports | e1071, SummarizedExperiment |
LinkingTo | |
Suggests | knitr, rmarkdown, BiocStyle |
SystemRequirements | |
Enhances | |
URL | |
Depends On Me | |
Imports Me | |
Suggests Me | |
Links To Me | |
Build Report |
Follow Installation instructions to use this package in your R session.
Source Package | MEB_1.10.0.tar.gz |
Windows Binary | MEB_1.10.0.zip |
macOS Binary (x86_64) | MEB_1.10.0.tgz |
Source Repository | git clone https://git.bioconductor.org/packages/MEB |
Source Repository (Developer Access) | git clone git@git.bioconductor.org:packages/MEB |
Package Short Url | https://bioconductor.org/packages/MEB/ |
Package Downloads Report | Download Stats |
Documentation »
Bioconductor
R / CRAN packages and documentation
Support »
Please read the posting guide. Post questions about Bioconductor to one of the following locations: