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Comparison of blood-based liver fibrosis scores in the Mount Sinai Health System, MASLD Registry, and NHANES 2017–2020 study
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Exome sequence analysis identifies rare coding variants associated with a machine learning-based marker for coronary artery disease
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Muesli Intake May Protect Against Coronary Artery Disease
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Prediction of Venous Thromboembolism in Diverse Populations Using Machine Learning and Structured Electronic Health Records
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Development of a human genetics-guided priority score for 19,365 genes and 399 drug indications
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A machine learning model identifies patients in need of autoimmune disease testing using electronic health records
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Machine Learning Identifies Plasma Metabolites Associated With Heart Failure in Underrepresented Populations With the TTR V122I Variant
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Phenome-wide Mendelian randomization study of plasma triglyceride levels and 2600 disease traits
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Short-term prediction of coronary artery disease using serum metabolomic patterns
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Coronary Risk Estimation Based on Clinical Data in Electronic Health Records
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Clinical prediction of pathogenic variants in non-coding regions of the human genome
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Evaluation of different approaches for missing data imputation on features associated to genomic data
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Prediction of recessive inheritance for missense variants in human disease
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Prediction of Incident Heart Failure in TTR Val122Ile Carriers One Year Ahead of Diagnosis in a Multiethnic Biobank
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