Cross-national comparative performance of three versions of the ICD-10 Charlson index.
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Performance of in-hospital mortality prediction models for acute hospitalization: hospital standardized mortality ratio in JapanUtilizing national patient-register data to control for comorbidity in prognostic studies.Charlson index scores from administrative data and case-note review compared favourably in a renal disease cohort.Referral patterns after a seizure admission in an English region: an opportunity for effective intervention? An observational study of routine hospital dataRisk adjustment performance of Charlson and Elixhauser comorbidities in ICD-9 and ICD-10 administrative databases.Assessment of hospital performance with a case-mix standardized mortality model using an existing administrative database in Japan.Wait times from presentation to treatment for colorectal cancer: a population-based study.A comparison of Charlson and Elixhauser comorbidity measures to predict colorectal cancer survival using administrative health data.Outcomes in localized prostate cancer: National Prostate Cancer Register of Sweden follow-up studyPostoperative complications following colectomy for ulcerative colitis: a validation study.Risk of hospitalization for diabetic macrovascular complications and in-hospital mortality with irregular physician visits using propensity score matching.Evidence of a broken healthcare delivery system in korea: unnecessary hospital outpatient utilization among patients with a single chronic disease without complicationsDoes young age influence the prognosis of colorectal cancer: a population-based analysis.Clinical and microbiological characteristics of bloodstream infections due to AmpC β-lactamase producing Enterobacteriaceae: an active surveillance cohort in a large centralized Canadian region.A cluster randomized trial for the implementation of an antibiotic checklist based on validated quality indicators: the AB-checklistThe impact of comorbid depression on adherence to therapy for multiple sclerosis.The Patient- And Nutrition-Derived Outcome Risk Assessment Score (PANDORA): Development of a Simple Predictive Risk Score for 30-Day In-Hospital Mortality Based on Demographics, Clinical Observation, and Nutrition.Factors associated with 30-day readmission of patients with heart failure from a Japanese administrative database.A mortality prediction rule for non-elderly patients with community-acquired pneumoniaComparison of Scoring Methods for ACE-27: Simpler Is Better.Finding the Primary Care Providers in the Specialist-Dominant Primary Care Setting of Korea: A Cluster AnalysisEffect of Psychotropic Drugs on Development of Diabetes Mellitus in Patients With Alzheimer's DiseaseEffects of longitudinal changes in Charlson comorbidity on prognostic survival model performance among newly diagnosed patients with hypertensionDe-implementation strategy to Reduce the Inappropriate use of urinary and intravenous CATheters: study protocol for the RICAT-study.Derivation and validation of automated electronic search strategies to extract Charlson comorbidities from electronic medical records.Gastrointestinal tuberculosis is not associated with proton pump inhibitors: a retrospective cohort study.Trends in time to diagnosis of colon cancer and impact on clinical outcomesAdverse events recorded in English primary care: observational study using the General Practice Research Database.Hospital mortality of patients aged 80 and older after surgical repair for type A acute aortic dissection in JapanWhy Summary Comorbidity Measures Such As the Charlson Comorbidity Index and Elixhauser Score Work.General practice consultations, diagnostic investigations, and prescriptions in the year preceding a lung cancer diagnosis.Risk of recurrent overdose associated with prescribing patterns of psychotropic medications after nonfatal overdoseUnderuse of Oral Anticoagulants and Inappropriate Prescription of Antiplatelet Therapy in Older Inpatients with Atrial Fibrillation.Impact of financial incentives for inter-provider care coordination on health-care resource utilization among elderly acute stroke patients.Determinants of time to surgery for patients with hip fracture.How often are patients with diabetes or hypertension being treated with partial nephrectomy for renal cell carcinoma? A population-based analysis.Psychological distress, health, and socio-economic factors in caregivers of terminally ill patients: a nationwide population-based cohort study.Epidemiology of overdose episodes from the period prior to hospitalization for drug poisoning until discharge in Japan: An exploratory descriptive study using a nationwide claims database.Monosomal karyotype predicts inferior survival independently of a complex karyotype in patients with myelodysplastic syndromes.Commissioning for COPD care: a new, recordable metric that supports the patient interest.
P2860
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P2860
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
description
2007 nî lūn-bûn
@nan
2007年の論文
@ja
2007年学术文章
@wuu
2007年学术文章
@zh
2007年学术文章
@zh-cn
2007年学术文章
@zh-hans
2007年学术文章
@zh-my
2007年学术文章
@zh-sg
2007年學術文章
@yue
2007年學術文章
@zh-hant
name
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@en
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@nl
type
label
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@en
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@nl
prefLabel
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@en
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@nl
P2093
P1433
P1476
Cross-national comparative performance of three versions of the ICD-10 Charlson index.
@en
P2093
Bernard Burnand
International Methodology Consortium for Coded Health Information (IMECCHI)
Jean-Christophe Luthi
Patricia Halfon
William A Ghali
P304
P356
10.1097/MLR.0B013E3181484347
P577
2007-12-01T00:00:00Z