article integral
Article pour les cliniciens
Diagnostic management of acute pulmonary embolism: a prediction model based on a patient data meta-analysis.
PMID: 37452732
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Médecine d'urgenceRelevance - 6/7
Intérêt médiatique - 6/7 -
Médecin hospitalier/HospitalisteRelevance - 6/7
Intérêt médiatique - 6/7 -
Médecine interne (voir sous-spécialités ci-dessous)Relevance - 6/7
Intérêt médiatique - 6/7 -
Médecine familiale (MF)/Médecine générale (MG)Relevance - 6/7
Intérêt médiatique - 5/7 -
Médecine interne générale - Soins primairesRelevance - 6/7
Intérêt médiatique - 5/7 -
- Hémostase et thromboseRelevance - 6/7
Intérêt médiatique - 4/7
Résumé (en anglais)
AIMS: Risk stratification is used for decisions regarding need for imaging in patients with clinically suspected acute pulmonary embolism (PE). The aim was to develop a clinical prediction model that provides an individualized, accurate probability estimate for the presence of acute PE in patients with suspected disease based on readily available clinical items and D-dimer concentrations.
METHODS AND RESULTS: An individual patient data meta-analysis was performed based on sixteen cross-sectional or prospective studies with data from 28 305 adult patients with clinically suspected PE from various clinical settings, including primary care, emergency care, hospitalized and nursing home patients. A multilevel logistic regression model was built and validated including ten a priori defined objective candidate predictors to predict objectively confirmed PE at baseline or venous thromboembolism (VTE) during follow-up of 30 to 90 days. Multiple imputation was used for missing data. Backward elimination was performed with a P-value <0.10. Discrimination (c-statistic with 95% confidence intervals [CI] and prediction intervals [PI]) and calibration (outcome:expected [O:E] ratio and calibration plot) were evaluated based on internal-external cross-validation. The accuracy of the model was subsequently compared with algorithms based on the Wells score and D-dimer testing. The final model included age (in years), sex, previous VTE, recent surgery or immobilization, haemoptysis, cancer, clinical signs of deep vein thrombosis, inpatient status, D-dimer (in µg/L), and an interaction term between age and D-dimer. The pooled c-statistic was 0.87 (95% CI, 0.85-0.89; 95% PI, 0.77-0.93) and overall calibration was very good (pooled O:E ratio, 0.99; 95% CI, 0.87-1.14; 95% PI, 0.55-1.79). The model slightly overestimated VTE probability in the lower range of estimated probabilities. Discrimination of the current model in the validation data sets was better than that of the Wells score combined with a D-dimer threshold based on age (c-statistic 0.73; 95% CI, 0.70-0.75) or structured clinical pretest probability (c-statistic 0.79; 95% CI, 0.76-0.81).
CONCLUSION: The present model provides an absolute, individualized probability of PE presence in a broad population of patients with suspected PE, with very good discrimination and calibration. Its clinical utility needs to be evaluated in a prospective management or impact study.
REGISTRATION: PROSPERO ID 89366.
Commentaires cliniques (en anglais)
Emergency Medicine
Important analysis but the new model shows limited clinical relevance, except for risk stratification in high-risk populations.
Emergency Medicine
It would be interesting to see how this model compares with unstructured clinical assessment (clinical gestalt).
Family Medicine (FM)/General Practice (GP)
It does not matter whether clinicians know this study or not because as the authors state in their abstract conclusion, "[The model's] clinical utility needs to be evaluated in a prospective management or impact study." That is, it has not been tested prospectively.
General Internal Medicine-Primary Care(US)
Accurate calculation of diagnostic probability is needed for pulmonary embolism. This study promises that accuracy, but it has two deficiencies: 1. the need for a prospective study to confirm the algorithm; and 2. the requirement for an app to enter and calculate the probability. The latter deficiency can be easily overcome once the prospective study is completed.
Hemostasis and Thrombosis
The results of this article emphasize the relevant known risks (used in the model) in considering PE (pretest probability), but the model needs to be prospectively assessed before it is used.


