TY - JOUR
AU - Nopp,S.
AU - Spielvogel,C.
AU - Bikdeli,B.
AU - Alberich-Conesa,A.
AU - Hernández-Blasco,L.
AU - Peris,M.L.
AU - Otero,R.
AU - Jiménez,D.
AU - Monreal,M.
AU - Ay,C.
KW - Dyspnea
KW - Machine learning
KW - Prediction
KW - Pulmonary arterial hypertension
KW - Pulmonary embolism
KW - Venous thromboembolism
T1 - A machine learning approach to identify patients at risk for long-term consequences after pulmonary embolism
LA - eng
PY - 2025/09/24/
SP - 32744
T2 - Scientific reports
SN - 2045-2322
VL - 15
IS - 1
AB - Pulmonary embolism (PE) can result in long-term sequelae, such as post-PE syndrome, including persistent dyspnea and chronic thromboembolic pulmonary hypertension (CTEPH). Existing prediction tools for severe post-PE complications lack sensitivity and specificity. This study aimed to develop a machine learning model to identify patients at risk for long-term consequences after PE. Using data from the RIETE registry, the largest prospective international PE registry, we developed supervised machine learning models to identify patients at increased risk of CTEPH and post-PE syndrome. Our approach involved data preprocessing, model training via random forest algorithm, and validation through Monte-Carlo cross-validation. The performance of the CTEPH prediction model was benchmarked against an existing score. Of the 57,981 PE patients in the RIETE registry, 5,217 were eligible for inclusion. Median age was 68 years, with 50.6% men. Machine learning was based on 111 predictor variables, with 171 patients (3.3%) developing CTEPH. The CTEPH model demonstrated good performance with an AUC of 0.74 (95%CI: 0.73-0.75), significantly outperforming the existing CTEPH prediction score (0.57; 0.54-0.61). Additionally, 1,310 (25.1%) patients were defined as having post-PE syndrome six months after index PE. The post-PE syndrome model showed poorer performance with an AUC of 0.62 (0.61-0.62). Key predictor variables across both models included chest pain at presentation, PE location, troponin, side of clot, and dyspnea at presentation. Machine learning models show promise in predicting CTEPH but are less effective for post-PE syndrome. Future refinement, including integrating imaging data, is necessary to improve predictive performance and clinical utility.
DO - 10.1038/S41598-025-14893-1
UR - https://portalcientifico.uah.es/documentos/68ead1dc54340e2ef5709b84
DP - Dialnet - Portal de la Investigación
ER -