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Clustering clinical trials with similar eligibility criteria featuresBirth month affects lifetime disease risk: a phenome-wide methodIn Search of 'Birth Month Genes': Using Existing Data Repositories to Locate Genes Underlying Birth Month-Disease Relationships.From expert-derived user needs to user-perceived ease of use and usefulness: a two-phase mixed-methods evaluation framework.Improving condition severity classification with an efficient active learning based frameworkClimate Classification is an Important Factor in Assessing Quality-of-Care Across HospitalsDevelopment and validation of a classification approach for extracting severity automatically from electronic health recordsUsing software to elicit user needs for clinical research visit scheduling.EliXR: an approach to eligibility criteria extraction and representationAre All Vaccines Created Equal? Using Electronic Health Records to Discover Vaccines Associated With Clinician-Coded Adverse EventsAn initial log analysis of usage patterns on a research networking system.Mapping the effects of drugs on the immune system.Systems biology approaches for identifying adverse drug reactions and elucidating their underlying biological mechanisms.Discovering medical conditions associated with periodontitis using linked electronic health records.A Computational Drug Repositioning Approach for Targeting Oncogenic Transcription Factors.An Integrated Model for Patient Care and Clinical Trials (IMPACT) to support clinical research visit scheduling workflow for future learning health systems.A method for probing disease relatedness using common clinical eligibility criteria.Replicating Cardiovascular Condition-Birth Month Associations.The digital revolution in phenotyping.Characterization of the biomedical query mediation process.Defining a comprehensive verotype using electronic health records for personalized medicine.EliXR-TIME: A Temporal Knowledge Representation for Clinical Research Eligibility Criteria.Uncovering exposures responsible for birth season - disease effects: a global study.An Active Learning Framework for Efficient Condition Severity ClassificationPreparing next-generation scientists for biomedical big data: artificial intelligence approaches
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P50
name
Mary Regina Boland
@en
Mary Regina Boland
@nl
type
label
Mary Regina Boland
@en
Mary Regina Boland
@nl
prefLabel
Mary Regina Boland
@en
Mary Regina Boland
@nl