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Describing the relationship between cat bites and human depression using data from an electronic health recordThe risk and consequences of clinical miscoding due to inadequate medical documentation: a case study of the impact on health services fundingSafety and efficacy of hysteroscopic sterilization compared with laparoscopic sterilization: an observational cohort studyOpioid overdose rates and implementation of overdose education and nasal naloxone distribution in Massachusetts: interrupted time series analysisBig data are coming to psychiatry: a general introductionExtracting research-quality phenotypes from electronic health records to support precision medicineApplying MetaMap to Medline for identifying novel associations in a large clinical dataset: a feasibility analysisOntology-based data integration between clinical and research systemsBurden attributable to Cardiometabolic Diseases in Zimbabwe: a retrospective cross-sectional study of national mortality dataIncidence and prevalence of treated epilepsy among poor health and low-income Americans.How accurate is the reporting of stroke in hospital discharge data? A pilot validation study using a population-based stroke registry as control.Leveraging administrative data to monitor rituximab use in 2875 patients at 42 freestanding children's hospitals across the United States.The Analytic Information Warehouse (AIW): a platform for analytics using electronic health record data.Evaluation of data completeness in the electronic health record for the purpose of patient recruitment into clinical trials: a retrospective analysis of element presence.Caveats for the use of operational electronic health record data in comparative effectiveness research.Use of health care claims data to study patients with ophthalmologic conditionsAccuracy of administrative and clinical registry data in reporting postoperative complications after surgery for oral cavity squamous cell carcinoma.Use of state administrative data sources to study adolescents and young adults with rare conditionsMining rich health data from Canadian physician claims: features and face validity.Validity of administrative data in recording sepsis: a systematic review.Statewide Hospital Discharge Data: Collection, Use, Limitations, and ImprovementsAccessing primary care Big Data: the development of a software algorithm to explore the rich content of consultation records.Improving National Trauma Data Bank® coding data reliability for traumatic injury using a prospective systems approach.Codifying healthcare--big data and the issue of misclassification.Validation and optimisation of an ICD-10-coded case definition for sepsis using administrative health data.Using Big Data to Evaluate the Association between Periodontal Disease and Rheumatoid ArthritisA validated case definition for chronic rhinosinusitis in administrative data: a Canadian perspective.Using Hospital Inpatient Discharge Data to Supplement Active Surveillance for Invasive Pneumococcal Disease: Is the Extract Worth the Exertion?Lack of agreement in pediatric emergency department discharge diagnoses from clinical and administrative data sources.Systematic review of validated case definitions for diabetes in ICD-9-coded and ICD-10-coded data in adult populations.Using uncertain data from body-worn sensors to gain insight into type 1 diabetes.Identifying neuropsychiatric disorders in the Medicare Current Beneficiary Survey: the benefits of combining health survey and claims data.Identification of Dyslipidemic Patients Attending Primary Care Clinics Using Electronic Medical Record (EMR) Data from the Canadian Primary Care Sentinel Surveillance Network (CPCSSN) Database.Measuring quality of care in syncope: case definition affects reported electrocardiogram use but does not bias reporting.Extracting principal diagnosis, co-morbidity and smoking status for asthma research: evaluation of a natural language processing system.ICD-10 coding algorithms for defining comorbidities of acute myocardial infarctionValidation of ICD-9-CM coding algorithm for improved identification of hypoglycemia visitsAssessing validity of ICD-9-CM and ICD-10 administrative data in recording clinical conditions in a unique dually coded database.The impact of electronic medical records data sources on an adverse drug event quality measure.Do coder characteristics influence validity of ICD-10 hospital discharge data?
P2860
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P2860
description
2005 nî lūn-bûn
@nan
2005 թուականի Հոկտեմբերին հրատարակուած գիտական յօդուած
@hyw
2005 թվականի հոտեմբերին հրատարակված գիտական հոդված
@hy
2005年の論文
@ja
2005年論文
@yue
2005年論文
@zh-hant
2005年論文
@zh-hk
2005年論文
@zh-mo
2005年論文
@zh-tw
2005年论文
@wuu
name
Measuring diagnoses: ICD code accuracy
@ast
Measuring diagnoses: ICD code accuracy
@en
Measuring diagnoses: ICD code accuracy
@nl
type
label
Measuring diagnoses: ICD code accuracy
@ast
Measuring diagnoses: ICD code accuracy
@en
Measuring diagnoses: ICD code accuracy
@nl
prefLabel
Measuring diagnoses: ICD code accuracy
@ast
Measuring diagnoses: ICD code accuracy
@en
Measuring diagnoses: ICD code accuracy
@nl
P2093
P2860
P3181
P1476
Measuring diagnoses: ICD code accuracy
@en
P2093
Carol M Ashton
Karon F Cook
Kimberly J O'Malley
Kimberly Raiford Wildes
Matt D Price
P2860
P304
P3181
P356
10.1111/J.1475-6773.2005.00444.X
P407
P433
P577
2005-10-01T00:00:00Z