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Structure-leveraged Methods in Breast Cancer Risk Prediction
Comparing Mammography Abnormality Features to Genetic Variants in the Prediction of Breast Cancer in Women Recommended for Breast Biopsy
Developing a Utility Decision Framework to Evaluate Predictive Models in Breast Cancer Risk Estimation
Machine Learning for Treatment Assignment: Improving Individualized Risk Attribution
Developing a Clinical Utility Framework to Evaluate Prediction Models in Radiogenomics
Comparing the Value of Mammographic Features and Genetic Variants in Breast Cancer Risk Prediction
Multiple Testing under Dependence via Semiparametric Graphical Models
Learning Heterogeneous Hidden Markov Random Fields
New Genetic Variants Improve Personalized Breast Cancer Diagnosis
Genetic Variants Improve Breast Cancer Risk Prediction on Mammograms
Predicting Breast Cancer and Prostate Cancer Susceptibility from Single Nucleotide Polymorphisms
Graphical-model Based Multiple Testing under Dependence, with Applications to Genome-wide Association Studies
High-Dimensional Structured Feature Screening Using Binary Markov Random Fields
A Collective Ranking Method for Genome-wide Association Studies
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