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Inference on the Genetic Architecture of Breast Cancer Risk
Yutaka Yasui
, William Letsou
, Fan Wang
,
Cindy Im
, Yadav Sapkota
, Zhaoming Wang
, Sedigheh Mirzaei Salehabadi
, Jessica L. Baedke
, Won Jong Moon
, Qi Liu
, Leslie L. Robison
, Jose Miguel Martinez
Research output
:
Contribution to journal
›
Article
›
peer-review
5
Scopus citations
Overview
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Keyphrases
Genetic Architecture
100%
Breast Cancer Risk
100%
Incidence Rate
100%
Zygosity
100%
Germline DNA
66%
Risk Factors
33%
Genome-wide Association Study
33%
Population-based
33%
Twin Study
33%
Monozygotic Twins
33%
Rare Variants
33%
Rare mutation
33%
Non-modifiable Risk Factors
33%
Lifetime Risk
33%
Major Determinants
33%
Dizygotic Twins
33%
Inconsistency
33%
Common Variants
33%
Polygenic Score
33%
Breast Cancer Cases
33%
Average Risk
33%
Co-twin
33%
Non-genetic Factors
33%
Average Lifetime
33%
Complex Allele
33%
Mean Time Interval
33%
Breast Cancer Etiology
33%
Risk Determinants
33%
Deductive Reasoning
33%
Twin Pair
33%
BRCA1, BRCA2
33%
Women Breast Cancer
33%
Biochemistry, Genetics and Molecular Biology
Genetic Architecture
100%
Germline
100%
Lifespan
100%
Zygosity
100%
Germ Cell
100%
Twin Study
50%
BRCA1
50%
Allele
50%
Conditioning
50%
Monozygotic Twins
50%
Dizygotic Twins
50%
Twin Zygosity
50%
Genome-Wide Association Study
50%
Polygenic Score
50%
Rare Variant
50%