Automated extraction of clinical traits of multiple sclerosis in electronic medical records.
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Knowledge retrieval from PubMed abstracts and electronic medical records with the Multiple Sclerosis OntologyBig data in medicine is driving big changesReview and evaluation of electronic health records-driven phenotype algorithm authoring tools for clinical and translational research.Functional evaluation of out-of-the-box text-mining tools for data-mining tasks.Common Genetic Variants Influence Circulating Vitamin D Levels in Inflammatory Bowel Diseases.The intelligent use and clinical benefits of electronic medical records in multiple sclerosisDesiderata for computable representations of electronic health records-driven phenotype algorithms.Early recognition of multiple sclerosis using natural language processing of the electronic health recordDesigning an Electronic Patient Management System for Multiple Sclerosis: Building a Next Generation Multiple Sclerosis Documentation System.Shared Genetic Etiology of Autoimmune Diseases in Patients from a Biorepository Linked to De-identified Electronic Health Records.Unravelling the human genome-phenome relationship using phenome-wide association studies.The importance of collecting structured clinical information on multiple sclerosis.Harnessing electronic medical records to advance research on multiple sclerosis.Clinical Informatics Researcher's Desiderata for the Data Content of the Next Generation Electronic Health Record.The association of timing of disease-modifying drug initiation and relapse in patients with multiple sclerosis using electronic health records.[Real-world evidence : Benefits and limitations in multiple sclerosis research].
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Automated extraction of clinical traits of multiple sclerosis in electronic medical records.
description
article científic
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article scientifique
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articolo scientifico
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artigo científico
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bilimsel makale
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scientific article published on 22 October 2013
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vedecký článok
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vetenskaplig artikel
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videnskabelig artikel
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vědecký článek
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name
Automated extraction of clinic ...... in electronic medical records.
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Automated extraction of clinic ...... in electronic medical records.
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type
label
Automated extraction of clinic ...... in electronic medical records.
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Automated extraction of clinic ...... in electronic medical records.
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Automated extraction of clinic ...... in electronic medical records.
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Automated extraction of clinic ...... in electronic medical records.
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P2860
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Automated extraction of clinic ...... in electronic medical records.
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Joshua C Denny
Mary F Davis
Subramaniam Sriram
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10.1136/AMIAJNL-2013-001999
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2013-10-22T00:00:00Z