Unified Medical Language System term occurrences in clinical notes: a large-scale corpus analysis.
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Impact of Predicting Health Care Utilization Via Web Search Behavior: A Data-Driven AnalysisThe discriminatory cost of ICD-10-CM transition between clinical specialties: metrics, case study, and mitigating toolsClinical research informatics: a conceptual perspectiveNetwork analysis of unstructured EHR data for clinical researchPractice-based evidence: profiling the safety of cilostazol by text-mining of clinical notesTextual inference for eligibility criteria resolution in clinical trialsTranslational research platforms integrating clinical and omics data: a review of publicly available solutionsNCBI disease corpus: a resource for disease name recognition and concept normalizationUsing large clinical corpora for query expansion in text-based cohort identificationPharmacovigilance Using Clinical NotesFunctional evaluation of out-of-the-box text-mining tools for data-mining tasks.Profiling risk factors for chronic uveitis in juvenile idiopathic arthritis: a new model for EHR-based research.Toward personalizing treatment for depression: predicting diagnosis and severity.Semantic similarity in the biomedical domain: an evaluation across knowledge sourcesText mining for adverse drug events: the promise, challenges, and state of the art.Androgen Deprivation Therapy and Future Alzheimer's Disease RiskImproved de-identification of physician notes through integrative modeling of both public and private medical text.Building the graph of medicine from millions of clinical narratives.Identifying named entities from PubMed for enriching semantic categories.Interactive Cohort Identification of Sleep Disorder Patients Using Natural Language Processing and i2b2.Statin Intensity or Achieved LDL? Practice-based Evidence for the Evaluation of New Cholesterol Treatment Guidelines.Using temporal patterns in medical records to discern adverse drug events from indications.Towards a semantic lexicon for clinical natural language processing.Comparison of UMLS terminologies to identify risk of heart disease using clinical notes.Automatic Extraction of ICD-O-3 Primary Sites from Cancer Pathology Reports.ADEpedia 2.0: Integration of Normalized Adverse Drug Events (ADEs) Knowledge from the UMLS.Identifying phenotypic signatures of neuropsychiatric disorders from electronic medical records.Validating a strategy for psychosocial phenotyping using a large corpus of clinical text.Mining clinical text for signals of adverse drug-drug interactions.Empirical advances with text mining of electronic health records.A Clinical Score for Predicting Atrial Fibrillation in Patients with Cryptogenic Stroke or Transient Ischemic Attack.The utility of including pathology reports in improving the computational identification of patients.Electronic health records-driven phenotyping: challenges, recent advances, and perspectives
P2860
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P2860
Unified Medical Language System term occurrences in clinical notes: a large-scale corpus analysis.
description
2012 nî lūn-bûn
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2012年の論文
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2012年論文
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2012年論文
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2012年論文
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2012年論文
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2012年論文
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2012年论文
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name
Unified Medical Language Syste ...... a large-scale corpus analysis.
@ast
Unified Medical Language Syste ...... a large-scale corpus analysis.
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type
label
Unified Medical Language Syste ...... a large-scale corpus analysis.
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Unified Medical Language Syste ...... a large-scale corpus analysis.
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prefLabel
Unified Medical Language Syste ...... a large-scale corpus analysis.
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Unified Medical Language Syste ...... a large-scale corpus analysis.
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P2093
P2860
P1476
Unified Medical Language Syste ...... a large-scale corpus analysis.
@en
P2093
Christopher G Chute
Dingcheng Li
Hongfang Liu
Nigam H Shah
Stephen T Wu
P2860
P304
P356
10.1136/AMIAJNL-2011-000744
P577
2012-04-04T00:00:00Z