about
Causes of chest pain in primary care--a systematic review and meta-analysis.How well do health professionals interpret diagnostic information? A systematic reviewPredicting rotator cuff tears using data mining and Bayesian likelihood ratiosBayes' theorem and the physical examination: probability assessment and diagnostic decision makingPhilosophy of science and the diagnostic process.Predicting long-term outcome after traumatic brain injury using repeated measurements of Glasgow Coma Scale and data mining methods.Clinical severity score system in dogs with degenerative mitral valve diseaseWhy are clinicians not embracing the results from pivotal clinical trials in severe sepsis? A bayesian analysis.Gender differences in presentation and diagnosis of chest pain in primary care.Heartburn or angina? Differentiating gastrointestinal disease in primary care patients presenting with chest pain: a cross sectional diagnostic studyInterpretation of evidence in data by untrained medical students: a scenario-based studyAccuracy of symptoms and signs for coronary heart disease assessed in primary careMultivariate modeling to identify patterns in clinical data: the example of chest pain.Does prevalence matter to physicians in estimating post-test probability of disease? A randomized trialThe AmpliChip CYP450 genotyping test: Integrating a new clinical tool.Can point-of-care urine LAM strip testing for tuberculosis add value to clinical decision making in hospitalised HIV-infected persons?Conceptualization of category-oriented likelihood ratio: a useful tool for clinical diagnostic reasoningSurgical skills and lessons from other vocations: a personal viewMedical generalists: connecting the map and the territoryEvaluating developmental screening in clinical practice.Screening and case-finding instruments for depression: a meta-analysis.Internal Medicine residents use heuristics to estimate disease probabilityIntelligent framework for diagnosis of frozen shoulder using cross sectional survey and case studies.Impact of stroke units on mortality: a Bayesian analysis.Gut feelings as a third track in general practitioners' diagnostic reasoning.Rational clinical evaluation of suspected acute coronary syndromes: The value of more information.Bayesian clinical reasoning: does intuitive estimation of likelihood ratios on an ordinal scale outperform estimation of sensitivities and specificities?Assessing clinical reasoning skills in scenarios of uncertainty: convergent validity for a Script Concordance Test in an emergency medicine clerkship and residency.Therapeutic reasoning: from hiatus to hypothetical model.Breast cancer risk prediction using a clinical risk model and polygenic risk score.Gut instinct: a diagnostic tool?Temporal artery biopsy in giant cell arteritis--reply.Information theoretic quantification of diagnostic uncertaintyReal-life epidemiology of food allergy testing in Finnish children.Why clinicians are natural bayesians: bayesian confusion.Why clinicians are natural bayesians: is there a bayesian doctor in the house?Why clinicians are natural bayesians: clinicians have to be bayesians.Efficacy, tolerability and risk factors for virological failure of darunavir-based therapy for treatment-experienced HIV-infected patients: the Swiss HIV Cohort Study.Chest wall syndrome in primary care patients with chest pain: presentation, associated features and diagnosis.Estimation of post-test probabilities by residents: Bayesian reasoning versus heuristics?
P2860
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P2860
description
2005 nî lūn-bûn
@nan
2005 թուականի Մայիսին հրատարակուած գիտական յօդուած
@hyw
2005 թվականի մայիսին 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
Why clinicians are natural bayesians
@ast
Why clinicians are natural bayesians
@en
type
label
Why clinicians are natural bayesians
@ast
Why clinicians are natural bayesians
@en
prefLabel
Why clinicians are natural bayesians
@ast
Why clinicians are natural bayesians
@en
P2860
P1433
P1476
Why clinicians are natural bayesians
@en
P2093
Christopher H Schmid
Lora Sabin
P2860
P304
P356
10.1136/BMJ.330.7499.1080
P407
P577
2005-05-01T00:00:00Z