Background: Whereas transcatheter aortic valve implantation (TAVI) has become the gold standard for aortic valve stenosis treatment in high-risk patients, it has recently been extended to include intermediate risk patients. However, the mortality rate at 5 years is still elevated. The aim of the present study was to develop a novel machine learning (ML) approach able to identify the best predictors of 5-year mortality after TAVI among several clinical and echocardiographic variables, which may improve the long-term prognosis. Methods: We retrospectively enrolled 471 patients undergoing TAVI. More than 80 pre-TAVI variables were collected and analyzed through different feature selection processes, which allowed for the identification of several variables with the highest predictive value of mortality. Different ML models were compared. Results: Multilayer perceptron resulted in the best performance in predicting mortality at 5 years after TAVI, with an area under the curve, positive predictive value, and sensitivity of 0.79, 0.73, and 0.71, respectively. Conclusions: We presented an ML approach for the assessment of risk factors for long-term mortality after TAVI to improve clinical prognosis. Fourteen potential predictors were identified with the organic mitral regurgitation (myxomatous or calcific degeneration of the leaflets and/or annulus) which showed the highest impact on 5 years mortality.

Predicting long-term mortality in TAVI patients using machine learning techniques / M. Penso, M. Pepi, L. Fusini, M. Muratori, C. Cefalu, V. Mantegazza, P. Gripari, S.G. Ali, F. Fabbiocchi, A.L. Bartorelli, E.G. Caiani, G. Tamborini. - In: JOURNAL OF CARDIOVASCULAR DEVELOPMENT AND DISEASE. - ISSN 2308-3425. - 8:4(2021), pp. 44.1-44.14. [10.3390/JCDD8040044]

Predicting long-term mortality in TAVI patients using machine learning techniques

L. Fusini;M. Muratori;V. Mantegazza;P. Gripari;
2021

Abstract

Background: Whereas transcatheter aortic valve implantation (TAVI) has become the gold standard for aortic valve stenosis treatment in high-risk patients, it has recently been extended to include intermediate risk patients. However, the mortality rate at 5 years is still elevated. The aim of the present study was to develop a novel machine learning (ML) approach able to identify the best predictors of 5-year mortality after TAVI among several clinical and echocardiographic variables, which may improve the long-term prognosis. Methods: We retrospectively enrolled 471 patients undergoing TAVI. More than 80 pre-TAVI variables were collected and analyzed through different feature selection processes, which allowed for the identification of several variables with the highest predictive value of mortality. Different ML models were compared. Results: Multilayer perceptron resulted in the best performance in predicting mortality at 5 years after TAVI, with an area under the curve, positive predictive value, and sensitivity of 0.79, 0.73, and 0.71, respectively. Conclusions: We presented an ML approach for the assessment of risk factors for long-term mortality after TAVI to improve clinical prognosis. Fourteen potential predictors were identified with the organic mitral regurgitation (myxomatous or calcific degeneration of the leaflets and/or annulus) which showed the highest impact on 5 years mortality.
No
English
Aortic valve disease; Machine learning; Mortality prediction; TAVI
Settore MED/11 - Malattie dell'Apparato Cardiovascolare
Articolo
Esperti anonimi
Pubblicazione scientifica
2021
MDPI AG
8
4
44
1
14
14
Pubblicato
Periodico con rilevanza internazionale
scopus
pubmed
crossref
wos
datacite
Aderisco
info:eu-repo/semantics/article
Predicting long-term mortality in TAVI patients using machine learning techniques / M. Penso, M. Pepi, L. Fusini, M. Muratori, C. Cefalu, V. Mantegazza, P. Gripari, S.G. Ali, F. Fabbiocchi, A.L. Bartorelli, E.G. Caiani, G. Tamborini. - In: JOURNAL OF CARDIOVASCULAR DEVELOPMENT AND DISEASE. - ISSN 2308-3425. - 8:4(2021), pp. 44.1-44.14. [10.3390/JCDD8040044]
open
Prodotti della ricerca::01 - Articolo su periodico
12
262
Article (author)
no
M. Penso, M. Pepi, L. Fusini, M. Muratori, C. Cefalu, V. Mantegazza, P. Gripari, S.G. Ali, F. Fabbiocchi, A.L. Bartorelli, E.G. Caiani, G. Tamborini
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/907275
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