Naive application of permutation testing leads to inflated type I error rates.
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A cautionary note on ignoring polygenic background when mapping quantitative trait loci via recombinant congenic strains.Combining powers of linkage and association mapping for precise dissection of QTL controlling resistance to gray leaf spot disease in maize (Zea mays L.).Genetical genomics: spotlight on QTL hotspotsRecombinational landscape and population genomics of Caenorhabditis elegans.Fine-mapping a locus for glucose tolerance using heterogeneous stock ratsGenomewide SNP screen to detect quantitative trait loci for alcohol preference in the high alcohol preferring and low alcohol preferring mice.A nonparametric test to detect quantitative trait loci where the phenotypic distribution differs by genotypes.Differential expression analysis for RNAseq using Poisson mixed models.Fine-mapping QTLs in advanced intercross lines and other outbred populations.Sex-specific gene expression in the BXD mouse liverQuantitative trait locus mapping methods for diversity outbred mice.Combining two Meishan F2 crosses improves the detection of QTL on pig chromosomes 2, 4 and 6.Toxicogenetics: population-based testing of drug and chemical safety in mouse models.Mapping quantitative traits and strategies to find quantitative trait genes.Generalized shrinkage F-like statistics for testing an interaction term in gene expression analysis in the presence of heteroscedasticity.Varying coefficient models for mapping quantitative trait loci using recombinant inbred intercrosses.Rapid and robust resampling-based multiple-testing correction with application in a genome-wide expression quantitative trait loci studyQuantile-based permutation thresholds for quantitative trait loci hotspots.Natural Variation in plep-1 Causes Male-Male Copulatory Behavior in C. elegans.A simulation study of permutation, bootstrap, and gene dropping for assessing statistical significance in the case of unequal relatednessGenetic Architectures of Quantitative Variation in RNA Editing PathwaysGenetic factors contributing to obesity and body weight can act through mechanisms affecting muscle weight, fat weight, or both.Chromosome substitution strains: gene discovery, functional analysis, and systems studies.Gene set analysis of genome-wide association studies: methodological issues and perspectives.The genetics of gene expression in complex mouse crosses as a tool to study the molecular underpinnings of behavior traits.Detecting epistasis with the marginal epistasis test in genetic mapping studies of quantitative traits.Structure of the Transcriptional Regulatory Network Correlates with Regulatory Divergence in Drosophila.A unified mixed effects model for gene set analysis of time course microarray experiments.Permutation testing in the presence of polygenic variation.Mapping in structured populations by resample model averaging.Microsatellite mapping of quantitative trait loci affecting female reproductive tract characteristics in Meishan x Large White F(2) pigs.Decoupled maternal and zygotic genetic effects shape the evolution of development
P2860
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P2860
Naive application of permutation testing leads to inflated type I error rates.
description
2008 nî lūn-bûn
@nan
2008年の論文
@ja
2008年論文
@yue
2008年論文
@zh-hant
2008年論文
@zh-hk
2008年論文
@zh-mo
2008年論文
@zh-tw
2008年论文
@wuu
2008年论文
@zh
2008年论文
@zh-cn
name
Naive application of permutation testing leads to inflated type I error rates.
@en
Naive application of permutation testing leads to inflated type I error rates.
@nl
type
label
Naive application of permutation testing leads to inflated type I error rates.
@en
Naive application of permutation testing leads to inflated type I error rates.
@nl
prefLabel
Naive application of permutation testing leads to inflated type I error rates.
@en
Naive application of permutation testing leads to inflated type I error rates.
@nl
P2860
P1433
P1476
Naive application of permutation testing leads to inflated type I error rates.
@en
P2093
G A Churchill
R W Doerge
P2860
P304
P356
10.1534/GENETICS.107.074609
P407
P577
2008-01-01T00:00:00Z