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QTL.gCIMapping (version 3.4)

QTL Genome-Wide Composite Interval Mapping

Description

Conduct multiple quantitative trait loci (QTL) and QTL-by-environment interaction (QEI) mapping via ordinary or compressed variance component mixed models with random- or fixed QTL/QEI effects. First, each position on the genome is detected in order to obtain a negative logarithm P-value curve against genome position. Then, all the peaks on each effect (additive or dominant) curve or on each locus curve are viewed as potential main-effect QTLs and QEIs, all their effects are included in a multi-locus model, their effects are estimated by both least angle regression and empirical Bayes (or adaptive lasso) in backcross and F2 populations, and true QTLs and QEIs are identified by likelihood radio test. See Zhou et al. (2022) and Wen et al. (2018) .

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Version

Install

install.packages('QTL.gCIMapping')

Monthly Downloads

364

Version

3.4

License

GPL (>= 2)

Maintainer

Yuanming Zhang

Last Published

February 24th, 2022

Functions in QTL.gCIMapping (3.4)

ZhouF

To perform QTL mapping with Wen method
QTL.gCIMapping

QTL Genome-Wide Composite Interval Mapping
F2data

F2 example data from 2 environments
Readdata

Read raw data
WangF

To perform QTL mapping with wang method
DHdata

DH example data
Dodata

Process raw data
markerinsert

To insert marker in genotype.
WangS

The second step of wang method
WenF

To perform QTL mapping with Wen method
ZhouMethod

The second step of Zhou method for multiple environments
ZhouMethod_single_env

The second step of Zhou method for single environment
WenS

The second step of Wen method