Machine learning-based prediction of in-hospital death for patients with takotsubo syndrome: The InterTAK-ML model

dc.contributor.authorDe Filippo Ovidio
dc.contributor.authorCammann Victoria L.
dc.contributor.authorPancotti Corrado
dc.contributor.authorDi Vece Davide
dc.contributor.authorSilverio Angelo
dc.contributor.authorSchweiger Victor
dc.contributor.authorNiederseer David
dc.contributor.authorSzawan Konrad A.
dc.contributor.authorWürdinger Michael
dc.contributor.authorKoleva Iva
dc.contributor.authorDusi Veronica
dc.contributor.authorBellino Michele
dc.contributor.authorVecchione Carmine
dc.contributor.authorParodi Guido
dc.contributor.authorBossone Eduardo
dc.contributor.authorGili Sebastiano
dc.contributor.authorNeuhaus Michael
dc.contributor.authorFranke Jennifer
dc.contributor.authorMeder Benjamin
dc.contributor.authorJaguszewski Miłosz
dc.contributor.authorNoutsias Michel
dc.contributor.authorKnorr Maike
dc.contributor.authorJansen Thomas
dc.contributor.authorDichtl Wolfgang
dc.contributor.authorvon Lewinski Dirk
dc.contributor.authorBurgdorf Christof
dc.contributor.authorKherad Behrouz
dc.contributor.authorTschöpe Carsten
dc.contributor.authorSarcon Annahita
dc.contributor.authorShinbane Jerold
dc.contributor.authorRajan Lawrence
dc.contributor.authorMichels Guido
dc.contributor.authorPfister Roman
dc.contributor.authorCuneo Alessandro
dc.contributor.authorJacobshagen Claudius
dc.contributor.authorKarakas Mahir
dc.contributor.authorKoenig Wolfgang
dc.contributor.authorPott Alexander
dc.contributor.authorMeyer Philippe
dc.contributor.authorRoffi Marco
dc.contributor.authorBanning Adrian
dc.contributor.authorWolfrum Mathias
dc.contributor.authorCuculi Florim
dc.contributor.authorKobza Richard
dc.contributor.authorFischer Thomas A.
dc.contributor.authorVasankari Tuija
dc.contributor.authorAiraksinen K.E. Juhani
dc.contributor.authorNapp L. Christian
dc.contributor.authorDworakowski Rafal
dc.contributor.authorMacCarthy Philip
dc.contributor.authorKaiser Christoph
dc.contributor.authorOsswald Stefan
dc.contributor.authorGaliuto Leonarda
dc.contributor.authorChan Christina
dc.contributor.authorBridgman Paul
dc.contributor.authorBeug Daniel
dc.contributor.authorDelmas Clément
dc.contributor.authorLairez Olivier
dc.contributor.authorGilyarova Ekaterina
dc.contributor.authorShilova Alexandra
dc.contributor.authorGilyarov Mikhail
dc.contributor.authorEl-Battrawy Ibrahim
dc.contributor.authorAkin Ibrahim
dc.contributor.authorPoledniková Karolina
dc.contributor.authorToušek Petr
dc.contributor.authorWinchester David E.
dc.contributor.authorMassoomi Michael
dc.contributor.authorGaluszka Jan
dc.contributor.authorUkena Christian
dc.contributor.authorPoglajen Gregor
dc.contributor.authorCarrilho-Ferreira Pedro
dc.contributor.authorHauck Christian
dc.contributor.authorPaolini Carla
dc.contributor.authorBilato Claudio
dc.contributor.authorKobayashi Yoshio
dc.contributor.authorKato Ken
dc.contributor.authorIshibashi Iwao
dc.contributor.authorHimi Toshiharu
dc.contributor.authorDin Jehangir
dc.contributor.authorAl-Shammari Ali
dc.contributor.authorPrasad Abhiram
dc.contributor.authorRihal Charanjit S.
dc.contributor.authorLiu Kan
dc.contributor.authorSchulze P. Christian
dc.contributor.authorBianco Matteo
dc.contributor.authorJörg Lucas
dc.contributor.authorRickli Hans
dc.contributor.authorPestana Gonçalo
dc.contributor.authorNguyen Thanh H.
dc.contributor.authorBöhm Michael
dc.contributor.authorMaier Lars S.
dc.contributor.authorPinto Fausto J.
dc.contributor.authorWidimský Petr
dc.contributor.authorFelix Stephan B.
dc.contributor.authorBraun-Dullaeus Ruediger C.
dc.contributor.authorRottbauer Wolfgang
dc.contributor.authorHasenfuß Gerd
dc.contributor.authorPieske Burkert M.
dc.contributor.authorSchunkert Heribert
dc.contributor.authorBudnik Monika
dc.contributor.authorOpolski Grzegorz
dc.contributor.authorThiele Holger
dc.contributor.authorBauersachs Johann
dc.contributor.authorHorowitz John D.
dc.contributor.authorDi Mario Carlo
dc.contributor.authorBruno Francesco
dc.contributor.authorKong William
dc.contributor.authorDalakoti Mayank
dc.contributor.authorImori Yoichi
dc.contributor.authorMünzel Thomas
dc.contributor.authorCrea Filippo
dc.contributor.authorLüscher Thomas F.
dc.contributor.authorBax Jeroen J.
dc.contributor.authorRuschitzka Frank
dc.contributor.authorDe Ferrari Gaetano Maria
dc.contributor.authorFariselli Piero
dc.contributor.authorGhadri Jelena R.
dc.contributor.authorCitro Rodolfo
dc.contributor.authorD'Ascenzo Fabrizio
dc.contributor.authorTemplin Christian
dc.contributor.organizationfi=sisätautioppi|en=Internal Medicine|
dc.contributor.organizationfi=tyks, vsshp|en=tyks, varha|
dc.contributor.organization-code1.2.246.10.2458963.20.40502528769
dc.converis.publication-id181102331
dc.converis.urlhttps://research.utu.fi/converis/portal/Publication/181102331
dc.date.accessioned2025-08-27T23:43:02Z
dc.date.available2025-08-27T23:43:02Z
dc.description.abstract<p>Aims</p><p>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.<br></p><p>Methods and results</p><p>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.<br></p><p>Conclusion</p><p>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.</p>
dc.identifier.eissn1879-0844
dc.identifier.jour-issn1388-9842
dc.identifier.olddbid204482
dc.identifier.oldhandle10024/187509
dc.identifier.urihttps://www.utupub.fi/handle/11111/52895
dc.identifier.urlhttps://doi.org/10.1002/ejhf.2983
dc.identifier.urnURN:NBN:fi-fe2025082790455
dc.language.isoen
dc.okm.affiliatedauthorVasankari, Tuija
dc.okm.affiliatedauthorAiraksinen, Juhani
dc.okm.affiliatedauthorDataimport, tyks, vsshp
dc.okm.discipline3121 Internal medicineen_GB
dc.okm.discipline3121 Sisätauditfi_FI
dc.okm.internationalcopublicationinternational co-publication
dc.okm.internationalityInternational publication
dc.okm.typeA1 ScientificArticle
dc.publisherWiley
dc.publisher.countryUnited Kingdomen_GB
dc.publisher.countryBritanniafi_FI
dc.publisher.country-codeGB
dc.relation.doi10.1002/ejhf.2983
dc.relation.ispartofjournalEuropean Journal of Heart Failure
dc.source.identifierhttps://www.utupub.fi/handle/10024/187509
dc.titleMachine learning-based prediction of in-hospital death for patients with takotsubo syndrome: The InterTAK-ML model
dc.year.issued2023

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