'Global trigger tool' shows that adverse events in hospitals may be ten times greater than previously measured.
about
Learning without Borders: A Review of the Implementation of Medical Error Reporting in Médecins Sans FrontièresAdverse Drug Reaction Identification and Extraction in Social Media: A Scoping ReviewValidation of triggers and development of a pediatric trigger tool to identify adverse eventsTowards a Computable Data Corpus of Temporal Correlations between Drug Administration and Lab Value ChangesDramatyping: a generic algorithm for detecting reasonable temporal correlations between drug administration and lab value alterationsInsights into temporal patterns of hospital patient safety from routinely collected electronic data"I meant that med for Baylee not Bailey!": a mixed method study to identify incidence and risk factors for CPOE patient misidentificationPharmacovigilance Using Clinical NotesImpact of Inpatient Harms on Hospital Finances and Patient Clinical Outcomes.Exploring new avenues to assess the sharp end of patient safety: an analysis of nationally aggregated peer review data.Accuracy of using automated methods for detecting adverse events from electronic health record data: a research protocol.Accuracy and generalizability of using automated methods for identifying adverse events from electronic health record data: a validation study protocol.Aims and approaches of Web-RADR: a consortium ensuring reliable ADR reporting via mobile devices and new insights from social media.Characterisations of adverse events detected in a university hospital: a 4-year study using the Global Trigger Tool method.Systematic health management: the time has come to do the right thing for each person.Impact of intelligent intravenous infusion pumps on directing care toward evidence-based standards: a retrospective data analysis.Adverse drug event detection in pediatric oncology and hematology patients: using medication triggers to identify patient harm in a specialized pediatric patient population.Phenotyping for patient safety: algorithm development for electronic health record based automated adverse event and medical error detection in neonatal intensive careDisclosure of adverse events in the United States and Canada: an update, and a proposed framework for improvementUsing structured telephone follow-up assessments to improve suicide-related adverse event detectionPatient stratification and identification of adverse event correlations in the space of 1190 drug related adverse events.Profiling risk factors for chronic uveitis in juvenile idiopathic arthritis: a new model for EHR-based research.Characterization of adverse events detected in a large health care delivery system using an enhanced global trigger tool over a five-year intervalText mining for adverse drug events: the promise, challenges, and state of the art.The role of the anesthesiologist in perioperative patient safety.Retrospective record review in proactive patient safety work - identification of no-harm incidents.The Care Process Self-Evaluation Tool: a valid and reliable instrument for measuring care process organization of health care teams.The Universal Form of Treatment Options (UFTO) as an alternative to Do Not Attempt Cardiopulmonary Resuscitation (DNACPR) orders: a mixed methods evaluation of the effects on clinical practice and patient care.AKI in low-risk versus high-risk patients in intensive careBuilding the graph of medicine from millions of clinical narratives.Barriers to discharge in an acute care medical teaching unit: a qualitative analysis of health providers' perceptionsAdverse events in hospitalized paediatric patients: a systematic review and a meta-regression analysis.Application of a trigger tool in near real time to inform quality improvement activities: a prospective study in a general medicine ward.CMS reimbursement reform and the incidence of hospital-acquired pulmonary embolism or deep vein thrombosis.Measuring adverse events in helicopter emergency medical services: establishing content validity.One fourth of unplanned transfers to a higher level of care are associated with a highly preventable adverse event: a patient record review in six Belgian hospitals.A comparative assessment of adverse event classification in the out-of-hospital setting.Improving patient safety by optimizing the use of nursing human resources.Predictive modeling of structured electronic health records for adverse drug event detection.A numerical similarity approach for using retired Current Procedural Terminology (CPT) codes for electronic phenotyping in the Scalable Collaborative Infrastructure for a Learning Health System (SCILHS).
P2860
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P2860
'Global trigger tool' shows that adverse events in hospitals may be ten times greater than previously measured.
description
2011 nî lūn-bûn
@nan
2011年の論文
@ja
2011年学术文章
@wuu
2011年学术文章
@zh-cn
2011年学术文章
@zh-hans
2011年学术文章
@zh-my
2011年学术文章
@zh-sg
2011年學術文章
@yue
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2011年學術文章
@zh-hant
name
'Global trigger tool' shows th ...... ater than previously measured.
@en
'Global trigger tool' shows th ...... ater than previously measured.
@nl
type
label
'Global trigger tool' shows th ...... ater than previously measured.
@en
'Global trigger tool' shows th ...... ater than previously measured.
@nl
prefLabel
'Global trigger tool' shows th ...... ater than previously measured.
@en
'Global trigger tool' shows th ...... ater than previously measured.
@nl
P2093
P1433
P1476
'Global trigger tool' shows th ...... ater than previously measured.
@en
P2093
Allan Frankel
Andrew Seger
Brent C James
David C Classen
Frances Griffin
Frank Federico
John C Whittington
Nancy Kimmel
Roger Resar
Terri Frankel
P304
P356
10.1377/HLTHAFF.2011.0190
P407
P577
2011-04-01T00:00:00Z