Leveraging summary statistics to make inferences about complex phenotypes in large biobanks
暂无分享,去创建一个
Nathan L. Tintle | Jason Westra | Angela Gasdaska | Derek Friend | Rachel Chen | Matthew Zawistowski | William Lindsey | M. Zawistowski | N. Tintle | J. Westra | Angela Gasdaska | D. Friend | Rachel Chen | W. Lindsey
[1] P. Sasieni. From genotypes to genes: doubling the sample size. , 1997, Biometrics.
[2] W. Harris,et al. A genome-wide association study of saturated, mono- and polyunsaturated red blood cell fatty acids in the Framingham Heart Offspring Study. , 2015, Prostaglandins, leukotrienes, and essential fatty acids.
[3] Andreas Holzinger,et al. Interactive Knowledge Discovery and Data Mining in Biomedical Informatics , 2014, Lecture Notes in Computer Science.
[4] R. Vasan,et al. Clinical correlates and heritability of erythrocyte eicosapentaenoic and docosahexaenoic acid content in the Framingham Heart Study. , 2012, Atherosclerosis.
[5] Raymond Heatherly,et al. Privacy and Security within Biobanking: The Role of Information Technology , 2016, Journal of Law, Medicine & Ethics.
[6] W. Harris,et al. A genome-wide association study of red-blood cell fatty acids and ratios incorporating dietary covariates: Framingham Heart Study Offspring Cohort , 2018, PloS one.
[7] P. Elliott,et al. UK Biobank: An Open Access Resource for Identifying the Causes of a Wide Range of Complex Diseases of Middle and Old Age , 2015, PLoS medicine.