Predictive Power for Thrombus Detection after Atrial Appendage Closure: Machine Learning vs. Classical Methods

J Pers Med. 2022 Aug 30;12(9):1413. doi: 10.3390/jpm12091413.

Abstract

Device-related thrombus (DRT) after left atrial appendage (LAA) closure is infrequent but correlates with an increased risk of thromboembolism. Therefore, the search for DRT predictors is a topic of interest. In the literature, multivariable methods have been used achieving non-consistent results, and to the best of our knowledge, machine learning techniques have not been used yet for thrombus detection after LAA occlusion. Our aim is to compare both methodologies with respect to predictive power and the search for predictors of DRT. To this end, a multicenter study including 1150 patients who underwent LAA closure was analyzed. Two lines of experiments were performed: with and without resampling. Multivariate and machine learning methodologies were applied to both lines. Predictive power and the extracted predictors for all experiments were gathered. ROC curves of 0.5446 and 0.7974 were obtained for multivariate analysis and machine learning without resampling, respectively. However, the resampling experiment showed no significant difference between them (0.52 vs. 0.53 ROC AUC). A difference between the predictors selected was observed, with the multivariable methodology being more stable. These results question the validity of predictors reported in previous studies and demonstrate their disparity. Furthermore, none of the techniques analyzed is superior to the other for these data.

Keywords: atrial fibrillation; device-related thrombosis; left atrial appendage closure; machine learning; multivariable analysis; predictors.

Grants and funding

This study has been funded by Instituto de Salud Carlos III (ISCIII) through the project “PI19/00658. Modelo predictivo de trombosis sobre dispositivo de cierre de orejuela mediante machine learning e inteligencia artificial—Estudio TROMIA” and co-funded by the European Union. It has also been funded by Consejería de Sanidad de Castilla y León through the project “GRS 3031/A/19. Desarrollo de Modelo predictivo de trombosis sobre dispositivo de cierre de orejuela mediante inteligencia artificial”.