Electronic medical record phenotyping using the anchor and learn framework.
about
Learning statistical models of phenotypes using noisy labeled training data.Electronic phenotyping with APHRODITE and the Observational Health Sciences and Informatics (OHDSI) data network.EHR-based phenotyping: Bulk learning and evaluation.Precision medicine informatics.Flexible, Cluster-Based Analysis of the Electronic Medical Record of Sepsis with Composite Mixture Models.Clinical Informatics Researcher's Desiderata for the Data Content of the Next Generation Electronic Health Record.Enabling phenotypic big data with PheNorm.Estimating summary statistics for electronic health record laboratory data for use in high-throughput phenotyping algorithms.Automated disease cohort selection using word embeddings from Electronic Health Records.Impact of problem-based charting on the utilization and accuracy of the electronic problem list.High-fidelity phenotyping: richness and freedom from bias.Pragmatic Randomized, Controlled Trial of Patient Navigators and Enhanced Personal Health Records in CKD.Comparing deep learning and concept extraction based methods for patient phenotyping from clinical narratives.Development of an automated phenotyping algorithm for hepatorenal syndrome.Opportunities and obstacles for deep learning in biology and medicine.Careflow Mining Techniques to Explore Type 2 Diabetes Evolution.
P2860
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P2860
Electronic medical record phenotyping using the anchor and learn framework.
description
article científic
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article scientifique
@fr
articolo scientifico
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artigo científico
@pt
bilimsel makale
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scientific article published on 23 April 2016
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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
Electronic medical record phenotyping using the anchor and learn framework.
@en
Electronic medical record phenotyping using the anchor and learn framework.
@nl
type
label
Electronic medical record phenotyping using the anchor and learn framework.
@en
Electronic medical record phenotyping using the anchor and learn framework.
@nl
prefLabel
Electronic medical record phenotyping using the anchor and learn framework.
@en
Electronic medical record phenotyping using the anchor and learn framework.
@nl
P2093
P2860
P356
P1476
Electronic medical record phenotyping using the anchor and learn framework.
@en
P2093
David Sontag
Steven Horng
Yoni Halpern
Youngduck Choi
P2860
P304
P356
10.1093/JAMIA/OCW011
P577
2016-04-23T00:00:00Z