about
Impact of Predicting Health Care Utilization Via Web Search Behavior: A Data-Driven AnalysisNetwork analysis of unstructured EHR data for clinical researchPractice-based evidence: profiling the safety of cilostazol by text-mining of clinical notesResource construction and evaluation for indirect opinion mining of drug reviewsHARVEST, a longitudinal patient record summarizerIdentifying plausible adverse drug reactions using knowledge extracted from the literatureDynamical phenotyping: using temporal analysis of clinically collected physiologic data to stratify populationsDiscovering body site and severity modifiers in clinical textsLessons learned in replicating data-driven experiments in multiple medical systems and patient populationsExploring and linking biomedical resources through multidimensional semantic spacesPharmacovigilance Using Clinical NotesToward an automatic method for extracting cancer- and other disease-related point mutations from the biomedical literature.Functional evaluation of out-of-the-box text-mining tools for data-mining tasks.Evaluating health interest profiles extracted from patient-generated data.Auditing associative relations across two knowledge sources.Semantic mappings and locality of nursing diagnostic concepts in UMLSTranslating the Foundational Model of Anatomy into French using knowledge-based and lexical methodsProfiling risk factors for chronic uveitis in juvenile idiopathic arthritis: a new model for EHR-based research.Mayo clinical Text Analysis and Knowledge Extraction System (cTAKES): architecture, component evaluation and applications.Toward personalizing treatment for depression: predicting diagnosis and severity.A semantic and syntactic text simplification tool for health content.Exploiting UMLS semantics for checking semantic consistency among UMLS concepts.Analyzing polysemous concepts from a clinical perspective: application to auditing concept categorization in the UMLSLogic-based assessment of the compatibility of UMLS ontology sources.Building the graph of medicine from millions of clinical narratives.Anaphoric relations in the clinical narrative: corpus creationKnowledge-based extraction of adverse drug events from biomedical text.Evaluating the state of the art in disorder recognition and normalization of the clinical narrative.Assessment of NER solutions against the first and second CALBC Silver Standard CorpusDynamic generation of a table of contents with consumer-friendly labels.Fingerprinting Biomedical Terminologies--Automatic Classification and Visualization of Biomedical Vocabularies through UMLS Semantic Group Profiles.Unified Medical Language System term occurrences in clinical notes: a large-scale corpus analysis.Development of phenotype algorithms using electronic medical records and incorporating natural language processing.Towards a semantic lexicon for clinical natural language processing.Automatic adverse drug events detection using letters to the editor.Abstraction networks for terminologies: Supporting management of "big knowledge".Semi-supervised Learning for Phenotyping Tasks.A common type system for clinical natural language processing.Auditing the NCI thesaurus with semantic web technologiesA multilingual gold-standard corpus for biomedical concept recognition: the Mantra GSC.
P2860
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P2860
description
2003 nî lūn-bûn
@nan
2003 թուականի Դեկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2003 թվականի դեկտեմբերին հրատարակված գիտական հոդված
@hy
2003年の論文
@ja
2003年論文
@yue
2003年論文
@zh-hant
2003年論文
@zh-hk
2003年論文
@zh-mo
2003年論文
@zh-tw
2003年论文
@wuu
name
Exploring semantic groups through visual approaches.
@ast
Exploring semantic groups through visual approaches.
@en
type
label
Exploring semantic groups through visual approaches.
@ast
Exploring semantic groups through visual approaches.
@en
prefLabel
Exploring semantic groups through visual approaches.
@ast
Exploring semantic groups through visual approaches.
@en
P2860
P1476
Exploring semantic groups through visual approaches.
@en
P2093
Alexa T McCray
Olivier Bodenreider
P2860
P304
P356
10.1016/J.JBI.2003.11.002
P577
2003-12-01T00:00:00Z