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Non-invasive detection of cardiac allograft rejection among heart transplant recipients using an electrocardiogram based deep learning model

Authors :
Demilade Adedinsewo
Heather D Hardway
Andrea Carolina Morales-Lara
Mikolaj A Wieczorek
Patrick W Johnson
Erika J Douglass
Bryan J Dangott
Raouf E Nakhleh
Tathagat Narula
Parag C Patel
Rohan M Goswami
Melissa A Lyle
Alexander J Heckman
Juan C Leoni-Moreno
D Eric Steidley
Reza Arsanjani
Brian Hardaway
Mohsin Abbas
Atta Behfar
Zachi I Attia
Francisco Lopez-Jimenez
Peter A Noseworthy
Paul Friedman
Rickey E Carter
Mohamad Yamani
Source :
European Heart Journal - Digital Health. 4:71-80
Publication Year :
2023
Publisher :
Oxford University Press (OUP), 2023.

Abstract

Aims Current non-invasive screening methods for cardiac allograft rejection have shown limited discrimination and are yet to be broadly integrated into heart transplant care. Given electrocardiogram (ECG) changes have been reported with severe cardiac allograft rejection, this study aimed to develop a deep-learning model, a form of artificial intelligence, to detect allograft rejection using the 12-lead ECG (AI-ECG). Methods and results Heart transplant recipients were identified across three Mayo Clinic sites between 1998 and 2021. Twelve-lead digital ECG data and endomyocardial biopsy results were extracted from medical records. Allograft rejection was defined as moderate or severe acute cellular rejection (ACR) based on International Society for Heart and Lung Transplantation guidelines. The extracted data (7590 unique ECG-biopsy pairs, belonging to 1427 patients) was partitioned into training (80%), validation (10%), and test sets (10%) such that each patient was included in only one partition. Model performance metrics were based on the test set (n = 140 patients; 758 ECG-biopsy pairs). The AI-ECG detected ACR with an area under the receiver operating curve (AUC) of 0.84 [95% confidence interval (CI): 0.78–0.90] and 95% (19/20; 95% CI: 75–100%) sensitivity. A prospective proof-of-concept screening study (n = 56; 97 ECG-biopsy pairs) showed the AI-ECG detected ACR with AUC = 0.78 (95% CI: 0.61–0.96) and 100% (2/2; 95% CI: 16–100%) sensitivity. Conclusion An AI-ECG model is effective for detection of moderate-to-severe ACR in heart transplant recipients. Our findings could improve transplant care by providing a rapid, non-invasive, and potentially remote screening option for cardiac allograft function.

Details

ISSN :
26343916
Volume :
4
Database :
OpenAIRE
Journal :
European Heart Journal - Digital Health
Accession number :
edsair.doi...........e67e555ae9c2b31ebff747f0714f4b4d
Full Text :
https://doi.org/10.1093/ehjdh/ztad001