Assessment of the CLOT (Children's Likelihood of Thrombosis) Real-Time Risk Prediction Model of Hospital-Associated Venous Thromboembolism in Children with Congenital Heart Disease

Elsevier

Available online 21 March 2024

American Heart JournalAuthor links open overlay panel, , , , , , AbstractBackground

Children with congenital heart disease (CHD) are at high risk for hospital-associated venous thromboembolism (HA-VTE). The Children's Likelihood of Thrombosis (CLOT) trial validated a real-time predictive model for HA-VTE using data extracted from the EHR for pediatric inpatients. We tested the hypothesis that addition of CHD specific data would improve model prediction in the CHD population.

Methods

Model performance in CHD patients from 2010-2022, was assessed using three iterations of the CLOT model: 1) the original CLOT model, 2) the original model refit using only data from the CHD cohort, and 3) the model updated with the addition of cardiopulmonary bypass time, STAT mortality category, height, and weight as covariates. The discrimination of the three models was quantified and compared using AUROC.

Results

Our CHD cohort included 1457 patient encounters (median 2.0 IQR [0.5-5.2] years-old). HA-VTE was present in 5% of our CHD cohort versus 1% in the general pediatric population. Several features from the original model were associated with thrombosis in the CHD cohort including younger age, thrombosis history, infectious disease consultation, and EHR coding of a central venous line. Lower height and weight were associated with thrombosis. HA-VTE rate was 12% (18/149) amongst those with STAT category 4-5 operation versus 4% (49/1256) with STAT category 1-3 operation (P<0.001). Longer cardiopulmonary bypass time (124 [92-205] vs. 94 [65–136] minutes, P< 0.001) was associated with thrombosis. The AUROC for the original (0.80 95% CI [0.75-0.85]), refit (0.85 [0.81-0.89]), and updated (0.86 [0.81-0.90]) models demonstrated excellent discriminatory ability within the CHD cohort.

Conclusion

The automated approach with EHR data extraction makes the applicability of such models appealing for ease of clinical use. The addition of cardiac specific features improved model discrimination; however, this benefit was marginal compared to refitting the original model to the CHD cohort. This suggests strong predictive generalized models, such as CLOT, can be optimized for cohort subsets without additional data extraction, thus reducing cost of model development and deployment.

Keywords

Congenital heart disease

Cardiovascular surgery

thrombosis

Electronic Health

Record Model

© 2024 The Author(s). Published by Elsevier Inc.

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