Please use this identifier to cite or link to this item:
http://dx.doi.org/10.25673/117261
Title: | Machine learning-based prediction of in‐hospital death for patients with takotsubo syndrome : the InterTAK-ML model |
Author(s): | De Filippo, Ovidio Cammann, Victoria Lucia Pancotti, Corrado Di Vece, Davide Silverio, Angelo Schweiger, Victor Niederseer, David Szawan, Konrad Andreas Würdinger, Michael Koleva, Iva Dusi, Veronica Bellino, Michele Vecchione, Carmine Parodi, Guido Bossone, Eduardo Gili, Sebastiano Neuhaus, Michael Franke, Jennifer Meder, Benjamin Jaguszewski, Milosz Noutsias, Michel Knorr, Maike Christina Jansen, Thomas Dichtl, Wolfgang Lewinski, Dirk Burgdorf, Christof Kherad, Behrouz Tschöpe, Carsten Sarcon, Annahita Shinbane, Jerold Rajan, Lawrence Michels, Guido Pfister, Roman Cuneo, Alessandro Jacobshagen, Claudius Karakas, Mahir Koenig, Wolfgang Pott, Alexander Meyer, Philippe Roffi, Marco Banning, Adrian Wolfrum, Mathias Cuculi, Florim Kobza, Richard Fischer, Thomas A. Vasankari, Tuija Airaksinen, K. E. Juhani Napp, Christian Dworakowski, Rafal MacCarthy, Philip Kaiser, Christoph A. Osswald, Stefan Galiuto, Leonarda Chan, Christina Bridgman, Paul Beug, Daniel Delmas, Clément Lairez, Olivier Gilyarova, Ekaterina Shilova, Alexandra Gilyarov, Mikhail El-Battrawy, Ibrahim Akın, Ibrahim Poledniková, Karolina Toušek, Petr Winchester, David E. Massoomi, Michael Galuszka, Jan Ukena, Christian Poglajen, Gregor Carrilho-Ferreira, Pedro Hauck, Christian Paolini, Carla Bilato, Claudio Kobayashi, Yoshio Kato, Ken Ishibashi, Iwao Himi, Toshiharu Din, Jehangir Al-Shammari, Ali Prasad, Abhiram Rihal, Charanjit S. Liu, Kan Schulze, Paul Christian Bianco, Matteo Jörg, Lucas Rickli, Hans Pestana, Gonçalo Nguyen, Thanh H. Böhm, Michael Maier, Lars Siegfried Pinto, Fausto J. Widimský, Petr Felix, Stephan Braun-Dullaeus, Ruediger C. Rottbauer, Wolfgang Hasenfuß, Gerd Pieske, Burkert M. Schunkert, Heribert Budnik, Monika Opolski, Grzegorz Thiele, Holger Bauersachs, Johann Horowitz, John D. Di Mario, Carlo Bruno, Francesco Kong, William Dalakoti, Mayank Imori, Yoichi Münzel, Thomas Crea, Filippo Lüscher, Thomas F. Bax, Jeroen J. Ruschitzka, Frank De Ferrari, Gaetano Maria Fariselli, Piero Templin-Ghadri, Jelena-Rima Citro, Rodolfo D'Ascenzo, Fabrizio Templin, Christian |
Issue Date: | 2023 |
Type: | Article |
Language: | English |
Abstract: | Aims: Takotsubo syndrome (TTS) is associated with a substantial rate of adverse events. We sought to design a machine learning (ML)-based model to predict the risk of in-hospital death and to perform a clustering of TTS patients to identify different risk profiles. Methods and results: A ridge logistic regression-based ML model for predicting in-hospital death was developed on 3482 TTS patients from the International Takotsubo (InterTAK) Registry, randomly split in a train and an internal validation cohort (75% and 25% of the sample size, respectively) and evaluated in an external validation cohort (1037 patients). Thirty-one clinically relevant variables were included in the prediction model. Model performance represented the primary endpoint and was assessed according to area under the curve (AUC), sensitivity and specificity. As secondary endpoint, a K-medoids clustering algorithm was designed to stratify patients into phenotypic groups based on the 10 most relevant features emerging from the main model. The overall incidence of in-hospital death was 5.2%. The InterTAK-ML model showed an AUC of 0.89 (0.85–0.92), a sensitivity of 0.85 (0.78–0.95) and a specificity of 0.76 (0.74–0.79) in the internal validation cohort and an AUC of 0.82 (0.73–0.91), a sensitivity of 0.74 (0.61–0.87) and a specificity of 0.79 (0.77–0.81) in the external cohort for in-hospital death prediction. By exploiting the 10 variables showing the highest feature importance, TTS patients were clustered into six groups associated with different risks of in-hospital death (28.8% vs. 15.5% vs. 5.4% vs. 1.0.8% vs. 0.5%) which were consistent also in the external cohort. Conclusion: A ML-based approach for the identification of TTS patients at risk of adverse short-term prognosis is feasible and effective. The InterTAK-ML model showed unprecedented discriminative capability for the prediction of in-hospital death. |
URI: | https://opendata.uni-halle.de//handle/1981185920/119220 http://dx.doi.org/10.25673/117261 |
Open Access: | Open access publication |
License: | (CC BY-NC 4.0) Creative Commons Attribution NonCommercial 4.0 |
Journal Title: | European journal of heart failure |
Publisher: | Wiley |
Publisher Place: | Oxford |
Volume: | 25 |
Issue: | 12 |
Original Publication: | 10.1002/ejhf.2983 |
Page Start: | 2299 |
Page End: | 2311 |
Appears in Collections: | Open Access Publikationen der MLU |
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ejhf-2983.pdf | 1.12 MB | Adobe PDF | View/Open |