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BMC Proceedings
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December 19, 2014
Testing optimally weighted combination of variants for hypertension
Xingwang Zhao, Qiuying Sha, Shuanglin Zhang, et al.
Scientific Reports
|
March 4, 2022
Gene-based association tests using GWAS summary statistics and incorporating eQTL
Xuewei Cao, Xuexia Wang, Shuanglin Zhang, et al.
Chemosphere
|
October 8, 2020
Extension of a biotic ligand model for predicting the toxicity of metalloid selenate to wheat: The effects of pH, phosphate and sulphate
Fangli Wang, Xuexia Wang, Qinghua Chen, et al.
Human Heredity
|
January 12, 2017
Gene Mapping in Admixed Families: A Cautionary Note on the Interpretation of the Transmission Disequilibrium Test and a Possible Solution
Xuexia Wang, Rui Xiao, Xiaofeng Zhu, et al.
BMC Proceedings
|
December 17, 2016
A novel statistical method for rare-variant association studies in general pedigrees
Huanhuan Zhu, Zhenchuan Wang, Xuexia Wang, et al.
BMC Proceedings
|
May 10, 2008
Genome-wide association tests by two-stage approaches with unified analysis of families and unrelated individuals
Xuexia Wang, Zhaogong Zhang, Shuanglin Zhang, et al.
Genetic Epidemiology
|
June 21, 2012
Detecting association of rare and common variants by testing an optimally weighted combination of variants
Qiuying Sha, Xuexia Wang, Xinli Wang, et al.
Plos One
|
August 10, 2019
A gene based approach to test genetic association based on an optimally weighted combination of multiple traits
Jianjun Zhang, Qiuying Sha, Guanfu Liu, et al.
Environmental Monitoring and Assessment
|
July 16, 2014
The effects of grassland degradation on plant diversity, primary productivity, and soil fertility in the alpine region of Asia's headwaters
Xuexia Wang, Shikui Dong, Bing Yang, et al.
BMC Bioinformatics
|
May 6, 2020
TS: a powerful truncated test to detect novel disease associated genes using publicly available gWAS summary data
Jianjun Zhang, Xuan Guo, Samantha Gonzales, et al.
Page
of 11
Search research articles
Search
Showing results (11-20 of 103) with videos related to
Sort By:
Page
of 11
BMC Proceedings
|
December 19, 2014
Testing optimally weighted combination of variants for hypertension
Xingwang Zhao, Qiuying Sha, Shuanglin Zhang, et al.
Scientific Reports
|
March 4, 2022
Gene-based association tests using GWAS summary statistics and incorporating eQTL
Xuewei Cao, Xuexia Wang, Shuanglin Zhang, et al.
Chemosphere
|
October 8, 2020
Extension of a biotic ligand model for predicting the toxicity of metalloid selenate to wheat: The effects of pH, phosphate and sulphate
Fangli Wang, Xuexia Wang, Qinghua Chen, et al.
Human Heredity
|
January 12, 2017
Gene Mapping in Admixed Families: A Cautionary Note on the Interpretation of the Transmission Disequilibrium Test and a Possible Solution
Xuexia Wang, Rui Xiao, Xiaofeng Zhu, et al.
BMC Proceedings
|
December 17, 2016
A novel statistical method for rare-variant association studies in general pedigrees
Huanhuan Zhu, Zhenchuan Wang, Xuexia Wang, et al.
BMC Proceedings
|
May 10, 2008
Genome-wide association tests by two-stage approaches with unified analysis of families and unrelated individuals
Xuexia Wang, Zhaogong Zhang, Shuanglin Zhang, et al.
Genetic Epidemiology
|
June 21, 2012
Detecting association of rare and common variants by testing an optimally weighted combination of variants
Qiuying Sha, Xuexia Wang, Xinli Wang, et al.
Plos One
|
August 10, 2019
A gene based approach to test genetic association based on an optimally weighted combination of multiple traits
Jianjun Zhang, Qiuying Sha, Guanfu Liu, et al.
Environmental Monitoring and Assessment
|
July 16, 2014
The effects of grassland degradation on plant diversity, primary productivity, and soil fertility in the alpine region of Asia's headwaters
Xuexia Wang, Shikui Dong, Bing Yang, et al.
BMC Bioinformatics
|
May 6, 2020
TS: a powerful truncated test to detect novel disease associated genes using publicly available gWAS summary data
Jianjun Zhang, Xuan Guo, Samantha Gonzales, et al.
Page
of 11