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Mammographic density defined by higher than conventional brightness threshold better predicts breast cancer risk for full-field digital mammograms.Bone mineral density and the risk of breast cancer: a case-control study of Korean women.Twin birth changes DNA methylation of subsequent siblings.Childhood body mass index and adult mammographic density measures that predict breast cancer risk.Mammographic density defined by higher than conventional brightness thresholds better predicts breast cancer risk.Explaining variance in the cumulus mammographic measures that predict breast cancer risk: a twins and sisters study.Comparison of the association of mammographic density and clinical factors with ductal carcinoma in situ versus invasive ductal breast cancer in Korean women.Breast Cancer Risk Associations with Digital Mammographic Density by Pixel Brightness Threshold and Mammographic System.Association between mammographic density and tumor marker-defined breast cancer subtypes: a case-control study.Causal effect of smoking on DNA methylation in peripheral blood: a twin and family study.Inference about causation between body mass index and DNA methylation in blood from a twin family studyCauses of blood methylomic variation for middle-aged women measured by the HumanMethylation450 arrayMammographic Density and Circulating Sex Hormones: a Cross-Sectional Study in Postmenopausal Korean WomenInterval breast cancer risk associations with breast density, family history and breast tissue agingDNA methylation-based biological age, genome-wide average DNA methylation, and conventional breast cancer risk factorsGenome-wide association study of peripheral blood DNA methylation and conventional mammographic density measuresCirrus: An Automated Mammography-Based Measure of Breast Cancer Risk Based on Textural FeaturesMeasurement challenge: protocol for international case-control comparison of mammographic measures that predict breast cancer risk
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description
researcher ORCID ID = 0000-0002-6597-8363
@en
wetenschapper
@nl
name
Tuong L Nguyen
@ast
Tuong L Nguyen
@en
Tuong L Nguyen
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type
label
Tuong L Nguyen
@ast
Tuong L Nguyen
@en
Tuong L Nguyen
@nl
prefLabel
Tuong L Nguyen
@ast
Tuong L Nguyen
@en
Tuong L Nguyen
@nl
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P31
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0000-0002-6597-8363