Development and validation of a prediction model with missing predictor data: a practical approach.
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Developing risk prediction models for type 2 diabetes: a systematic review of methodology and reportingDiagnostic and prognostic prediction modelsAntenatal blood pressure for prediction of pre-eclampsia, preterm birth, and small for gestational age babies: development and validation in two general population cohortsDeveloping Risk Prediction Models for Postoperative Pancreatic Fistula: a Systematic Review of Methodology and Reporting QualityModeling the overall survival of patients with advanced-stage non-small cell lung cancer using data of routine laboratory tests.Critical appraisal and data extraction for systematic reviews of prediction modelling studies: the CHARMS checklist.Model development including interactions with multiple imputed dataThe estimation and use of predictions for the assessment of model performance using large samples with multiply imputed data.Prediction of fruit and vegetable intake from biomarkers using individual participant data of diet-controlled intervention studies.Assessment of predictive performance in incomplete data by combining internal validation and multiple imputationTiming of delivery in a high-risk obstetric population: a clinical prediction modelThe National Data Bank for rheumatic diseases: a multi-registry rheumatic disease data bank.Reporting performance of prognostic models in cancer: a review.Formal and informal prediction of recurrent stroke and myocardial infarction after stroke: a systematic review and evaluation of clinical prediction models in a new cohortAn independent and external validation of QRISK2 cardiovascular disease risk score: a prospective open cohort studyPatient Effort in Traumatic Brain Injury Inpatient Rehabilitation: Course and Associations With Age, Brain Injury Severity, and Time PostinjuryPredicting early mortality in adult trauma patients admitted to three public university hospitals in urban India: a prospective multicentre cohort study.Validating and updating a risk model for pneumonia - a case studyIndependent validation of an existing model enables prediction of hearing loss after childhood bacterial meningitisPredictive models for kidney disease: improving global outcomes (KDIGO) defined acute kidney injury in UK cardiac surgeryTime dependence of biomarkers: non-proportional effects of immunohistochemical panels predicting relapse risk in early breast cancer.Predicting risk of osteoporotic and hip fracture in the United Kingdom: prospective independent and external validation of QFractureScores.An epidemiologic risk prediction model for ovarian cancer in Europe: the EPIC study.Validation of prediction models based on lasso regression with multiply imputed data.Validation of death prediction after breast cancer relapses using joint models.Patient and disease characteristics associated with activation for self-management in patients with diabetes, chronic obstructive pulmonary disease, chronic heart failure and chronic renal disease: a cross-sectional survey studyTargeting aspirin in acute disabling ischemic stroke: an individual patient data meta-analysis of three large randomized trials.Risk Score to Predict 1-Year Mortality after Haemodialysis Initiation in Patients with Stage 5 Chronic Kidney Disease under Predialysis Nephrology CarePredicting mortality in sick African children: the FEAST Paediatric Emergency Triage (PET) Score.Development of a prognostic model for six-month mortality in older adults with declining health.Predicting the risk of chronic kidney disease in the UK: an evaluation of QKidney® scores using a primary care databasePredicting the 10 year risk of cardiovascular disease in the United Kingdom: independent and external validation of an updated version of QRISK2The art versus science of predicting prognosis: can a prognostic index predict short-term mortality better than experienced nurses do?Predictive Factors for Delivery within 7 Days after Successful 48-Hour Treatment of Threatened Preterm Labor.Efficiency of a clinical prediction model for selective rapid testing in children with pharyngitis: A prospective, multicenter studyPrediction of thrombo-embolic risk in patients with hypertrophic cardiomyopathy (HCM Risk-CVA).Predictors of ethylene glycol ingestion cases called into a regional poison centerPreoperative biliary drainage in perihilar cholangiocarcinoma: identifying patients who require percutaneous drainage after failed endoscopic drainageCombining fractional polynomial model building with multiple imputation.A clinical risk stratification tool for predicting treatment resistance in major depressive disorder
P2860
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P2860
Development and validation of a prediction model with missing predictor data: a practical approach.
description
2009 nî lūn-bûn
@nan
2009 թուականի Յուլիսին հրատարակուած գիտական յօդուած
@hyw
2009 թվականի հուլիսին հրատարակված գիտական հոդված
@hy
2009年の論文
@ja
2009年論文
@yue
2009年論文
@zh-hant
2009年論文
@zh-hk
2009年論文
@zh-mo
2009年論文
@zh-tw
2009年论文
@wuu
name
Development and validation of ...... or data: a practical approach.
@ast
Development and validation of ...... or data: a practical approach.
@en
type
label
Development and validation of ...... or data: a practical approach.
@ast
Development and validation of ...... or data: a practical approach.
@en
prefLabel
Development and validation of ...... or data: a practical approach.
@ast
Development and validation of ...... or data: a practical approach.
@en
P50
P1476
Development and validation of ...... or data: a practical approach.
@en
P2093
Karel G M Moons
Yvonne Vergouwe
P304
P356
10.1016/J.JCLINEPI.2009.03.017
P577
2009-07-12T00:00:00Z