Zhao-Bang ZengWilliam Neal Reynolds Professor
email: zeng@stat.ncsu.edu
New Research Results:
- Multiple Interval Mapping for eQTL mapping: We have
developed an efficient procedure specifically for gene expression
QTL analysis. The method uses our previously developed MIM to
search for eQTL and uses the false discovery rate (FDR) (the
estimated proportion among the declared eQTL for all expression
profiles that are falsely positive) to justify the model selection
procedure. In this method, we proceed to scan the genome for one
or multiple QTL on each expression trait stepwisely. In each step,
we make the decision whether to continue the search for more QTL
or stop the process based on a criterion that can be tuned up from
FDR calculation. This process is similar to that proposed by
Storey et al (2005, PLoS Biology 3:e267), but with a few critical
differences or improvements. (1) The search is not restricted to
markers, but covers the whole genome in the fashion of interval
mapping. This improvement may not be very significant for dense
markers, but is a nice generalization and can be important for
less dense markers. (2) Our search is not restricted to two steps,
which is the case of Storey et al and can proceed to multiple
steps (eQTL) as justified. (3) The search in the second and
subsequent steps is restricted to those expression traits that the
previous search step is significant. This is quite different from
Storey et al's procedure that performs the two or multiple step
searches for all expression traits. In this study, we show that
our conditional search is actually much more powerful
statistically than Storey et al and we found more eQTL and eQTL
epistasis on the same yeast data (Brems and Krugleyak, 2005 PNAS
102:1572-1577) that Storey et al also analyzed with the same FDR
level.
Manuscript: Zou, W. and Z.-B. Zeng, Multiple
interval mapping for gene expression QTL analysis. (submitted)
Program codes: An R package to estimate FDR in
sequenctial genome scan that complements QTL Cartographer MIM
modules is developed. Information about the codes is here
Results: The mapping
results are displayed using eQTL Viewer tool. You need to
install SVG tool to show the results. See the information at eQTL
Viewer site.
- eQTL Viewer: The eQTL analysis will produce a list of
eQTL (i.e. genomic regions) for all the typed and analyzed
expression traits. The genomic region for each eQTL can be defined
by a 1.5 LOD-support interval calculated from MIM-eQTL, and the
genes in each region can be listed if the genome is sequenced and
annotated. So, essentially the final results of eQTL analysis
could be summarized in a gene list for each eQTL that are matched
to its expression gene. Then it would be necessary to come up an
efficient and informative way to display, annotate and interpret
the results. Using the Scalable Vector Graphics (SVG) technology,
we have developed a very informative and useful tool, called eQTL
Viewer, for displaying eQTL mapping results. The tool is a dynamic
database of the gene lists with a graphic 2D display with x-axis
for the genome location of eQTL genes and y-axis for the genome
location of expression genes. Each gene in the database can be
linked to the public genome databases. The scalable feature allows
us to zoom-in to look at the detail of a particular region and
zoom-out to look at the overall patterns. Many genomics annotation
features can be superinposed on the viewer.
Manuscript: Zou, W., D.L. Aylor and Z.-B. Zeng,
2007 eQTL
Viewer: visualizing how sequence variation affects genome-wide
transcription. BMC Bioinformatics 8:7
Tool: See information at eQTL
Viewer website
Research Interests
My research interest is generally in the area of theoretical and
statistical quantitative genetics. This includes research on
developing theoretical models and statistical methods to map
quantitative trait loci (QTL) and to estimate basic genetic
parameters of quantitative trait variation, such as number, genomic
positions, effects, interaction, and pleiotropy of genes responsible
for the variation. Currently, this research is mostly concentrated
on developing statistical methods for analyzing genetic architecture
of quantitative traits as a whole using multiple interval mapping
approach. Research topics include efficient and robust model
selection, analysis for complex epistasis, multiple trait analysis,
complex QTL by environment interaction analysis, mixed and mixture
models, general plant breeding population QTL analysis, full-sib
family analysis, linkage disequilibrium mapping. We also develop
software (QTL
Cartographer) for QTL mapping data analysis. The long-term goal
of the research is to develop quantitative genetic theories and
statistical methods for characterizing and analyzing variation of
quantitative traits and to learn genetic and evolutionary bases of
the variation within and between natural and experimental
populations.
Some Recent Publications
Theory and Methodology:
- Zeng, Z.-B. (1993) Theoretical
basis of separation of multiple linked gene effects on mapping
quantitative trait loci. Proceedings of the National
Academy of Science USA 90:10972-10976. [ Abstract].
- Zeng, Z.-B. (1994) Precision
mapping of quantitative trait loci. Genetics
136:1457-1468. [
Abstract].
- Jiang, C. and Z.-B. Zeng (1995) Multiple
trait analysis of genetic mapping for quantitative trait loci.
Genetics 140: 1111-1127. [Abstract].
- Cockerham, C. C. and Z.-B. Zeng (1996) Design III
with marker loci. Genetics 143:1437-1456. [
Abstract].
- Jiang, C. and Z.-B. Zeng (1997) Mapping
quantitative trait loci with dominant and missing markers in
various crosses from two inbred lines. Genetica
101:47-58. [Abstract].
- Kao, C.-H. and Z.-B. Zeng (1997) General
formulae for obtaining the MLEs and the asymptotic
variance-covariance matrix in mapping quantitative trait loci when
using the EM algorithm. Biometrics 53:653-665.
[Abstract
].
- Kao, C.-H.,Z.-B. Zeng and R. D. Teasdale (1999) Multiple
interval mapping for quantitative trait loci. Genetics
152:1203-1216. [Abstract]
[Full
Text]
- Zeng, Z.-B., C.-H. Kao, and C. J. Basten (1999) Estimating
the genetic architecture of quantitative traits. Genetical
Research 74:279-289. [ Abstract].
- Liu, Y. and Z.-B. Zeng (2000) A
general mixture model approach for mapping quantitative trait loci
from diverse cross experimental designs involving multiple inbred
lines. Genetical Research 75: 345-355.
[
Abstract]
- Luo, Z.L., S.H. Tao and Z.-B. Zeng
(2000) Inferring
linkage disequilibrium between a polymorphic marker locus and a
trait locus in natural populations .Genetics
156:457-467. [Abstract]
[Full
Text]
- Wu, R.L., and Z.-B. Zeng (2001) Joint
linkage and linkage disequilibrium mapping in natural
populations . Genetics 157: 899-909. [Abstract]
[Full
Text]
- Wu, R.L., M. Gallo-Meagher, R. C. Littell, and Z.-B.
Zeng (2001) A general polyploid model for
analyzing gene segregation in qutcrossing tetraploid
species. Genetics 159: 869-882.
[Abstract]
[Full
Text]
- Kao, C.-H. and Z.-B. Zeng (2002) Modeling
epistasis of quantitative trait loci using Cockerham's
model. Genetics 160: 1243-1261.
[Abstract]
[Full
Text]
- Wu, R.L., C.-X. Ma, I. Painter and Z.-B. Zeng (2002) Simultaneous
maximum likelihood estimation of linkage and linkage-phases in
outcrossing species. Theoretical Population Biology
61: 349-363. [Abstract]
- Zeng, Z.-B. (2005) QTL mapping
and the genetic basis of adaptation: recent developments.
Genetica 123: 25-37. [Also published in Georgia
Genetics Review III: Genetics of Adaptation. Edited by Rodney
Mauricio (2005) pp.25-37. Springer]
- Zeng, Z.-B., T. Wang and W. Zou (2005) Modeling
quantitative trait loci and interpretation of models.
Genetics 169:1711-1725.
- Liu,
L. and Z.-B. Zeng (2005) Mixture model equations for
marker-assisted genetic evaluation. Anim. Breed. Genet. 122: 229-239.
- Wang,
T., and Z.-B. Zeng (2006) Modeling quantitative trait loci with
epistasis and linkage disequilibrium in experimental and natural
populations. BMC Genetics 7:9.
- Wang,
T., B.S. Weir and Z.-B. Zeng (2006) A
population-based latent variable approach for association mapping of
quantitative trait loci. Annals of Human
Genetics
70: 506-523.
- Li, J., S. Wang and Z.-B. Zeng (2006) Multiple
interval mapping for ordinal traits, Genetics 173:
1649-1663.
Applications:
- Dragani, T. A., Z.-B. Zeng, F. Canzian, M. Gariboldi,
G. Manenti and M. A. Pierotti (1995) Molecular mapping of body
weight loci on mouse chromosome X. Mammalian Genome
6: 778-781. [Abstract].
- Nuzhdin, S. V., E. G. Pasyukova, C. L. Dilda, Z.-B.
Zeng and T. F. C. Mackay (1997) Sex-specific
quantitative trait loci affecting longevity in Drosophila
melanogaster. Proceedings of the National Academy of
Science USA 94: 9734-9739. [Abstract]
[Full
Text] [PDF]
[Data]
- Weber, K., R. Eisman, S. Higgins, L. Kuhl, A. Patty, J. Sparks
and Z.-B. Zeng (1999) An analysis
of polygenes affecting wing shape on chromosome three in
Drosophila melanogaster. Genetics 153:
773-786. [Abstract]
[Full
Text]?[Data]
- Vieira, C., E. G. Pasyukova, Z.-B. Zeng, J. B. Hackett,
R. F. Lyman and T. F. C. Mackay (2000) Genotype-environment
interaction for quantitative trait loci affecting lifespan in
Drosophila melanogater. Genetics 154:
213-227. [Abstract]
[Full
Text]?[Data]
- Zeng, Z.-B., J. Liu, L. F. Stam, C.-H. Kao, J. M.
Mercer and C.C. Laurie (2000) Genetic
architecture of a morphological shape difference between two
Drosophila species. Genetics 154:
299-310. [Abstract]
[Full
Text] [
Data]
- Weber, K., R. Eisman, S. Higgins, L. Morey, A. Patty, M.
Tausek and Z.-B. Zeng (2001) An
analysis of polygenes affecting wing shape on chromosome 2 in
Drosophila melanogaster. Genetics 159:
1045-1057. [Abstract]
[Full
Text]?[Data]
- Tao, Y., Z.-B. Zeng, J. Li, D. L. Hartl and C. C.
Laurie (2003) Genetic
dissection of hybrid incompatibilities between Drosophila
simulans and Drosophila mauritiana, II. Mapping hybrid
male sterility loci on the third chromosome. Genetics
164:1399-1418 [Abstract]
[Full
Text]
- Kirst, M., C. J. Basten, A. A. Myburg, Z.-B. Zeng and
R. R. Sederoff (2005) Genetic
architecture of transcript level variation in differentiating
xylem of an Eucalyptus hybrid. Genetics 169:2295-2303.
Software:
- Basten, C., B.S. Weir and Z.-B. Zeng (1995-2006) QTL
Cartographer. Department of Statistics, North Carolina State
University, Raleigh, NC.
- Wang, S., C. Basten and Z.-B. Zeng (2001-2006) WINDOWS QTL
Cartographer. Department of Statistics, North Carolina State
University, Raleigh, NC
- Zou, W., D.L. Aylor and Z.-B. Zeng (2006) eQTL
Viewer. Bioinformatics Research Center, North Carolina State
University, Raleigh, NC
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