Identifying QT prolongation from ECG impressions using a general-purpose Natural Language Processor.
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Identification of genomic predictors of atrioventricular conduction: using electronic medical records as a tool for genome scienceLessons learned from developing a drug evidence base to support pharmacovigilanceThe Mid-South clinical Data Research Network.Performance of a Natural Language Processing (NLP) Tool to Extract Pulmonary Function Test (PFT) Reports from Structured and Semistructured Veteran Affairs (VA) DataEvaluating electronic health record data sources and algorithmic approaches to identify hypertensive individuals.Ensembles of NLP Tools for Data Element Extraction from Clinical Notes.Tracking medical students' clinical experiences using natural language processingA genome-wide association study of heparin-induced thrombocytopenia using an electronic medical record.Influence of human leukocyte antigen (HLA) alleles and killer cell immunoglobulin-like receptors (KIR) types on heparin-induced thrombocytopenia (HIT).Discerning tumor status from unstructured MRI reports--completeness of information in existing reports and utility of automated natural language processing.Robust replication of genotype-phenotype associations across multiple diseases in an electronic medical record.MedEx: a medication information extraction system for clinical narratives.Extracting timing and status descriptors for colonoscopy testing from electronic medical records.Chapter 13: Mining electronic health records in the genomics era.Modulators of normal electrocardiographic intervals identified in a large electronic medical record.The emerging role of electronic medical records in pharmacogenomics.Applying semantic-based probabilistic context-free grammar to medical language processing--a preliminary study on parsing medication sentencesPASTE: patient-centered SMS text tagging in a medication management systemComparative analysis of pharmacovigilance methods in the detection of adverse drug reactions using electronic medical records.The effect of reducing maximum shift lengths to 16 hours on internal medicine interns' educational opportunitiesTissue banking, bioinformatics, and electronic medical records: the front-end requirements for personalized medicine.Electronic medical records for genetic research: results of the eMERGE consortiumGenome- and phenome-wide analyses of cardiac conduction identifies markers of arrhythmia risk.Natural language processing improves identification of colorectal cancer testing in the electronic medical record.Efficient Queries of Stand-off Annotations for Natural Language Processing on Electronic Medical RecordsMining Biomedical Literature for Terms related to Epidemiologic Exposures.Learning regular expressions for clinical text classification.A comparison of rule-based and machine learning approaches for classifying patient portal messages.Identifying potential drugs that induce QT prolongation using electronic medical records.Algorithms used to identify ventricular arrhythmias and sudden cardiac death in retrospective studies: a systematic literature review.
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P2860
Identifying QT prolongation from ECG impressions using a general-purpose Natural Language Processor.
description
article científic
@ca
article scientifique
@fr
articolo scientifico
@it
artigo científico
@pt
bilimsel makale
@tr
scientific article published on 19 October 2008
@en
vedecký článok
@sk
vetenskaplig artikel
@sv
videnskabelig artikel
@da
vědecký článek
@cs
name
Identifying QT prolongation fr ...... se Natural Language Processor.
@en
Identifying QT prolongation fr ...... se Natural Language Processor.
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type
label
Identifying QT prolongation fr ...... se Natural Language Processor.
@en
Identifying QT prolongation fr ...... se Natural Language Processor.
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prefLabel
Identifying QT prolongation fr ...... se Natural Language Processor.
@en
Identifying QT prolongation fr ...... se Natural Language Processor.
@nl
P2093
P2860
P1476
Identifying QT prolongation fr ...... ose Natural Language Processor
@en
P2093
Joshua F Peterson
Lemuel Russell Waitman
Mark A Arrieta
Randolph A Miller
P2860
P304
P356
10.1016/J.IJMEDINF.2008.09.001
P478
78 Suppl 1
P50
P577
2008-10-19T00:00:00Z