Post Hoc Sample Size Estimation for Deep Learning Architectures for ECG-Classification.

Bickmann L; Plagwitz L; Varghese J

Forschungsartikel (Zeitschrift) | Peer reviewed

Zusammenfassung

Deep Learning architectures for time series require a large number of training samples, however traditional sample size estimation for sufficient model performance is not applicable for machine learning, especially in the field of electrocardiograms (ECGs). This paper outlines a sample size estimation strategy for binary classification problems on ECGs using different deep learning architectures and the large publicly available PTB-XL dataset, which includes 21801 ECG samples. This work evaluates binary classification tasks for Myocardial Infarction (MI), Conduction Disturbance (CD), ST/T Change (STTC), and Sex. All estimations are benchmarked across different architectures, including XResNet, Inception-, XceptionTime and a fully convolutional network (FCN). The results indicate trends for required sample sizes for given tasks and architectures, which can be used as orientation for future ECG studies or feasibility aspects.

Details zur Publikation

FachzeitschriftStudies in Health Technology and Informatics (Stud Health Technol Inform)
Jahrgang / Bandnr. / Volume302
Seitenbereich182-186
StatusVeröffentlicht
Veröffentlichungsjahr2023 (18.05.2023)
Sprache, in der die Publikation verfasst istEnglisch
DOI10.3233/SHTI230099
Link zum Volltexthttps://www.researchgate.net/publication/370894711_Post_Hoc_Sample_Size_Estimation_for_Deep_Learning_Architectures_for_ECG-Classification
StichwörterNeural Networks, Computer; Deep Learning; Sample Size; Machine Learning; Electrocardiography

Autor*innen der Universität Münster

Plagwitz, Lucas
Institut für Medizinische Informatik
Varghese, Julian
Institut für Medizinische Informatik