Cargando…

Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement

OBJECTIVE: A novel artificial intelligence-based phenotyping approach to stratify patients with severe aortic stenosis (AS) prior to transcatheter aortic valve replacement (TAVR) has been proposed, based on echocardiographic and haemodynamic data. This study aimed to analyse the recovery of extra-ao...

Descripción completa

Detalles Bibliográficos
Autores principales: Lachmann, Mark, Rippen, Elena, Schuster, Tibor, Xhepa, Erion, von Scheidt, Moritz, Trenkwalder, Teresa, Pellegrini, Costanza, Rheude, Tobias, Hesse, Amelie, Stundl, Anja, Harmsen, Gerhard, Yuasa, Shinsuke, Schunkert, Heribert, Kastrati, Adnan, Laugwitz, Karl-Ludwig, Joner, Michael, Kupatt, Christian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9582320/
https://www.ncbi.nlm.nih.gov/pubmed/36261218
http://dx.doi.org/10.1136/openhrt-2022-002068
_version_ 1784812807291666432
author Lachmann, Mark
Rippen, Elena
Schuster, Tibor
Xhepa, Erion
von Scheidt, Moritz
Trenkwalder, Teresa
Pellegrini, Costanza
Rheude, Tobias
Hesse, Amelie
Stundl, Anja
Harmsen, Gerhard
Yuasa, Shinsuke
Schunkert, Heribert
Kastrati, Adnan
Laugwitz, Karl-Ludwig
Joner, Michael
Kupatt, Christian
author_facet Lachmann, Mark
Rippen, Elena
Schuster, Tibor
Xhepa, Erion
von Scheidt, Moritz
Trenkwalder, Teresa
Pellegrini, Costanza
Rheude, Tobias
Hesse, Amelie
Stundl, Anja
Harmsen, Gerhard
Yuasa, Shinsuke
Schunkert, Heribert
Kastrati, Adnan
Laugwitz, Karl-Ludwig
Joner, Michael
Kupatt, Christian
author_sort Lachmann, Mark
collection PubMed
description OBJECTIVE: A novel artificial intelligence-based phenotyping approach to stratify patients with severe aortic stenosis (AS) prior to transcatheter aortic valve replacement (TAVR) has been proposed, based on echocardiographic and haemodynamic data. This study aimed to analyse the recovery of extra-aortic valve cardiac damage in accordance with this novel stratification system following TAVR. METHODS: The proposed phenotyping approach was previously established employing data from 366 patients with severe AS from a bicentric registry. For this consecutive study, echocardiographic follow-up data, obtained on day 147±75.1 after TAVR, were available from 247 patients (67.5%). RESULTS: Correction of severe AS by TAVR significantly reduced the proportion of patients suffering from concurrent severe mitral regurgitation (from 9.29% to 3.64%, p value: 0.0015). Moreover, pulmonary artery pressures were ameliorated (estimated systolic pulmonary artery pressure: from 47.2±15.8 to 43.3±15.1 mm Hg, p value: 0.0079). However, right heart dysfunction as well as the proportion of patients with severe tricuspid regurgitation remained unchanged. Clusters with persistent right heart dysfunction ultimately displayed 2-year survival rates of 69.2% (95% CI 56.6% to 84.7%) and 74.6% (95% CI 65.9% to 84.4%), which were significantly lower compared with clusters with little or no persistent cardiopulmonary impairment (88.3% (95% CI 83.3% to 93.5%) and 85.5% (95% CI 77.1% to 94.8%)). CONCLUSIONS: This phenotyping approach preprocedurally identifies patients with severe AS, who will not recover from extra-aortic valve cardiac damage following TAVR and whose survival is therefore significantly reduced. Importantly, not the degree of pulmonary hypertension at initial presentation, but the irreversibility of right heart dysfunction determines prognosis.
format Online
Article
Text
id pubmed-9582320
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher BMJ Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-95823202022-10-21 Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement Lachmann, Mark Rippen, Elena Schuster, Tibor Xhepa, Erion von Scheidt, Moritz Trenkwalder, Teresa Pellegrini, Costanza Rheude, Tobias Hesse, Amelie Stundl, Anja Harmsen, Gerhard Yuasa, Shinsuke Schunkert, Heribert Kastrati, Adnan Laugwitz, Karl-Ludwig Joner, Michael Kupatt, Christian Open Heart Valvular Heart Disease OBJECTIVE: A novel artificial intelligence-based phenotyping approach to stratify patients with severe aortic stenosis (AS) prior to transcatheter aortic valve replacement (TAVR) has been proposed, based on echocardiographic and haemodynamic data. This study aimed to analyse the recovery of extra-aortic valve cardiac damage in accordance with this novel stratification system following TAVR. METHODS: The proposed phenotyping approach was previously established employing data from 366 patients with severe AS from a bicentric registry. For this consecutive study, echocardiographic follow-up data, obtained on day 147±75.1 after TAVR, were available from 247 patients (67.5%). RESULTS: Correction of severe AS by TAVR significantly reduced the proportion of patients suffering from concurrent severe mitral regurgitation (from 9.29% to 3.64%, p value: 0.0015). Moreover, pulmonary artery pressures were ameliorated (estimated systolic pulmonary artery pressure: from 47.2±15.8 to 43.3±15.1 mm Hg, p value: 0.0079). However, right heart dysfunction as well as the proportion of patients with severe tricuspid regurgitation remained unchanged. Clusters with persistent right heart dysfunction ultimately displayed 2-year survival rates of 69.2% (95% CI 56.6% to 84.7%) and 74.6% (95% CI 65.9% to 84.4%), which were significantly lower compared with clusters with little or no persistent cardiopulmonary impairment (88.3% (95% CI 83.3% to 93.5%) and 85.5% (95% CI 77.1% to 94.8%)). CONCLUSIONS: This phenotyping approach preprocedurally identifies patients with severe AS, who will not recover from extra-aortic valve cardiac damage following TAVR and whose survival is therefore significantly reduced. Importantly, not the degree of pulmonary hypertension at initial presentation, but the irreversibility of right heart dysfunction determines prognosis. BMJ Publishing Group 2022-10-19 /pmc/articles/PMC9582320/ /pubmed/36261218 http://dx.doi.org/10.1136/openhrt-2022-002068 Text en © Author(s) (or their employer(s)) 2022. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited, appropriate credit is given, any changes made indicated, and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) .
spellingShingle Valvular Heart Disease
Lachmann, Mark
Rippen, Elena
Schuster, Tibor
Xhepa, Erion
von Scheidt, Moritz
Trenkwalder, Teresa
Pellegrini, Costanza
Rheude, Tobias
Hesse, Amelie
Stundl, Anja
Harmsen, Gerhard
Yuasa, Shinsuke
Schunkert, Heribert
Kastrati, Adnan
Laugwitz, Karl-Ludwig
Joner, Michael
Kupatt, Christian
Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title_full Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title_fullStr Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title_full_unstemmed Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title_short Artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
title_sort artificial intelligence-enabled phenotyping of patients with severe aortic stenosis: on the recovery of extra-aortic valve cardiac damage after transcatheter aortic valve replacement
topic Valvular Heart Disease
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9582320/
https://www.ncbi.nlm.nih.gov/pubmed/36261218
http://dx.doi.org/10.1136/openhrt-2022-002068
work_keys_str_mv AT lachmannmark artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT rippenelena artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT schustertibor artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT xhepaerion artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT vonscheidtmoritz artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT trenkwalderteresa artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT pellegrinicostanza artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT rheudetobias artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT hesseamelie artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT stundlanja artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT harmsengerhard artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT yuasashinsuke artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT schunkertheribert artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT kastratiadnan artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT laugwitzkarlludwig artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT jonermichael artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement
AT kupattchristian artificialintelligenceenabledphenotypingofpatientswithsevereaorticstenosisontherecoveryofextraaorticvalvecardiacdamageaftertranscatheteraorticvalvereplacement