Who has diabetes? Best estimates of diabetes prevalence in the Department of Veterans Affairs based on computerized patient data.
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Protective effects of NSAIDs on the development of Alzheimer disease"Everyone else gets ice cream here more often than I do--It burns me up"--Perspectives on Diabetes Care from Nursing Home Residents and their Doctors.Diagnostic accuracy of existing methods for identifying diabetic foot ulcers from inpatient and outpatient datasetsDiabetic foot ulcer severity predicts mortality among veterans with type 2 diabetes.Visit-to-visit systolic blood pressure variability and microvascular complications among patients with diabetes.Systolic blood pressure variability and lower extremity amputation in a non-elderly population with diabetes.Geographic Variation in Rosiglitazone Use Surrounding FDA Warnings in the Department of Veterans AffairsPositive predictive value of a case definition for diabetes mellitus using automated administrative health data in children and youth exposed to antipsychotic drugs or control medications: a Tennessee Medicaid studyFitting parametric random effects models in very large data sets with application to VHA national dataIdentifying diabetics in Medicare claims and survey data: implications for health services research.Use of administrative and electronic health record data for development of automated algorithms for childhood diabetes case ascertainment and type classification: the SEARCH for Diabetes in Youth Study.The prevalance, epidemiology and risk factors for onychomycosis in hemodialysis patients.Effectiveness of Sofosbuvir, Ledipasvir/Sofosbuvir, or Paritaprevir/Ritonavir/Ombitasvir and Dasabuvir Regimens for Treatment of Patients With Hepatitis C in the Veterans Affairs National Health Care System.An ontology for Autism Spectrum Disorder (ASD) to infer ASD phenotypes from Autism Diagnostic Interview-Revised data.Systematic review of validated case definitions for diabetes in ICD-9-coded and ICD-10-coded data in adult populations.Simulated estimates of pre-pregnancy and gestational diabetes mellitus in the US: 1980 to 2008.Identification of Dyslipidemic Patients Attending Primary Care Clinics Using Electronic Medical Record (EMR) Data from the Canadian Primary Care Sentinel Surveillance Network (CPCSSN) Database.Using administrative data to identify mental illness: what approach is best?Incidence of Neutropenia in Veterans Receiving Lung Cancer Chemotherapy: A Comparison of Administrative Coding and Electronic Laboratory Data.A classification of diabetic foot infections using ICD-9-CM codes: application to a large computerized medical database.Variation in antibiotic treatment for diabetic patients with serious foot infections: a retrospective observational study.Active care management supported by home telemonitoring in veterans with type 2 diabetes: the DiaTel randomized controlled trial.Association between kidney function and albuminuria with cardiovascular events in HIV-infected personsDoes adherence to medications for type 2 diabetes differ between individuals with vs without schizophrenia?Process of care compliance is associated with fewer diabetes complicationsAcute kidney injury associates with increased long-term mortalityTight glycemic control and use of hypoglycemic medications in older veterans with type 2 diabetes and comorbid dementiaInvestigating concordance in diabetes diagnosis between primary care charts (electronic medical records) and health administrative data: a retrospective cohort studyDiabetes care in black and white veterans in the southeastern U.S.Effect of trajectories of glycemic control on mortality in type 2 diabetes: a semiparametric joint modeling approach.The association of diabetes mellitus and high-grade prostate cancer in a multiethnic biopsy series.Assessing the risk of lower extremity amputations using an administrative data-based foot risk index in elderly patients with diabetes.Using quantile regression to investigate racial disparities in medication non-adherence.Impact of mental health visits on healthcare cost in patients with diabetes and comorbid mental health disordersHyperglycemia-related mortality in critically ill patients varies with admission diagnosis.Multiple uncontrolled conditions and blood pressure medication intensification: an observational study.Impact of medical and psychiatric multi-morbidity on mortality in diabetes: emerging evidence.The effects of pharmacist interventions on patients with polypharmacyHidden complexities in assessment of glycemic outcomes: are quality rankings aligned with treatment?Race and other risk factors for incident proteinuria in a national cohort of HIV-infected veterans.
P2860
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P2860
Who has diabetes? Best estimates of diabetes prevalence in the Department of Veterans Affairs based on computerized patient data.
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2004 nî lūn-bûn
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2004 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2004 թվականի մայիսին հրատարակված գիտական հոդված
@hy
2004年の論文
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2004年論文
@yue
2004年論文
@zh-hant
2004年論文
@zh-hk
2004年論文
@zh-mo
2004年論文
@zh-tw
2004年论文
@wuu
name
Who has diabetes? Best estimat ...... on computerized patient data.
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Who has diabetes? Best estimat ...... on computerized patient data.
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Who has diabetes? Best estimat ...... on computerized patient data.
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Who has diabetes? Best estimat ...... on computerized patient data.
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Who has diabetes? Best estimat ...... on computerized patient data.
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Who has diabetes? Best estimat ...... on computerized patient data.
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P1433
P1476
Who has diabetes? Best estimat ...... on computerized patient data.
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P2093
Leonard M Pogach
P304
P356
10.2337/DIACARE.27.SUPPL_2.B10
P407
P478
27 Suppl 2
P577
2004-05-01T00:00:00Z