Machine learning identifies pathophysiologically and prognostically informative phenotypes among patients with mitral regurgitation undergoing transcatheter edge-to-edge repair

  • Teresa Trenkwalder
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Mark Lachmann
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Lukas Stolz
    Medizinische Klinik und Poliklinik I, Klinikum der Universität München, Ludwig Maximilians University of Munich , Marchioninistrasse 15, 81377 Munich , Germany
  • Vera Fortmeier
    Department of General and Interventional Cardiology, Heart and Diabetes Center Northrhine-Westfalia, Ruhr University Bochum , Georgstrasse 11, 32545 Bad Oeynhausen , Germany
  • Héctor Alfonso Alvarez Covarrubias
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Elena Rippen
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Friederike Schürmann
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Antonia Presch
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Moritz von Scheidt
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Celine Ruff
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Amelie Hesse
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Muhammed Gerçek
    Department of General and Interventional Cardiology, Heart and Diabetes Center Northrhine-Westfalia, Ruhr University Bochum , Georgstrasse 11, 32545 Bad Oeynhausen , Germany
  • N Patrick Mayr
    Institute of Anesthesiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Ilka Ott
    Department of Cardiology, Helios Klinikum Pforzheim , Kanzlerstrasse 2-6, 75175 Pforzheim , Germany
  • Tibor Schuster
    Department of Family Medicine, McGill University , 5858 Chemin de la Côte-des-Neiges, Montréal, QC , Canada
  • Gerhard Harmsen
    Department of Physics, University of Johannesburg , Auckland Park, 5 Kingsway Avenue, Rossmore, 2092 Johannesburg , South Africa
  • Shinsuke Yuasa
    Department of Cardiology, Keio University School of Medicine , 35-Shinanomachi, Shinjuku-ku, 160-8582 Tokyo , Japan
  • Sebastian Kufner
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Petra Hoppmann
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Christian Kupatt
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Heribert Schunkert
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Adnan Kastrati
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Karl-Ludwig Laugwitz
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Volker Rudolph
    Department of General and Interventional Cardiology, Heart and Diabetes Center Northrhine-Westfalia, Ruhr University Bochum , Georgstrasse 11, 32545 Bad Oeynhausen , Germany
  • Michael Joner
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany
  • Jörg Hausleiter
    DZHK (German Center for Cardiovascular Research), Partner Site Munich Heart Alliance , Pettenkoferstrasse 8a & 9, 80336 Munich , Germany
  • Erion Xhepa
    Department of Cardiology, German Heart Center Munich, Technical University of Munich , Lazarettstrasse 36, 80636 Munich , Germany

抄録

<jats:title>Abstract</jats:title> <jats:sec> <jats:title>Aims</jats:title> <jats:p>Patients with mitral regurgitation (MR) present with considerable heterogeneity in cardiac damage depending on underlying aetiology, disease progression, and comorbidities. This study aims to capture their cardiopulmonary complexity by employing a machine-learning (ML)-based phenotyping approach.</jats:p> </jats:sec> <jats:sec> <jats:title>Methods and results</jats:title> <jats:p>Data were obtained from 1426 patients undergoing mitral valve transcatheter edge-to-edge repair (MV TEER) for MR. The ML model was developed using 609 patients (derivation cohort) and validated on 817 patients from two external institutions. Phenotyping was based on echocardiographic data, and ML-derived phenotypes were correlated with 5-year outcomes. Unsupervised agglomerative clustering revealed four phenotypes among the derivation cohort: Cluster 1 showed preserved left ventricular ejection fraction (LVEF; 56.5 ± 7.79%) and regular left ventricular end-systolic diameter (LVESD; 35.2 ± 7.52 mm); 5-year survival in Cluster 1, hereinafter serving as a reference, was 60.9%. Cluster 2 presented with preserved LVEF (55.7 ± 7.82%) but showed the largest mitral valve effective regurgitant orifice area (0.623 ± 0.360 cm2) and highest systolic pulmonary artery pressures (68.4 ± 16.2 mmHg); 5-year survival ranged at 43.7% (P-value: 0.032). Cluster 3 was characterized by impaired LVEF (31.0 ± 10.4%) and enlarged LVESD (53.2 ± 10.9 mm); 5-year survival was reduced to 38.3% (P-value: &lt;0.001). The poorest 5-year survival (23.8%; P-value: &lt;0.001) was observed in Cluster 4 with biatrial dilatation (left atrial volume: 312 ± 113 mL; right atrial area: 46.0 ± 8.83 cm2) although LVEF was only slightly reduced (51.5 ± 11.0%). Importantly, the prognostic significance of ML-derived phenotypes was externally confirmed.</jats:p> </jats:sec> <jats:sec> <jats:title>Conclusion</jats:title> <jats:p>ML-enabled phenotyping captures the complexity of extra-mitral valve cardiac damage, which does not necessarily occur in a sequential fashion. This novel phenotyping approach can refine risk stratification in patients undergoing MV TEER in the future.</jats:p> </jats:sec>

収録刊行物

参考文献 (31)*注記

もっと見る

関連プロジェクト

もっと見る

詳細情報 詳細情報について

問題の指摘

ページトップへ