Post hoc sample size estimation for deep learning architectures for ECG-classification Passed
Tuesday May 23, 2023 15:45 - 16:00 G1
Lecturer: Lucas Bickmann
Track: MIE: Health information systems
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 presentation 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. The post-hoc sample size estimations are based on a benchmark across different architectures (XResNet, Inception-, XceptionTime, fully convolutional network), and different classification targets (Myocardial Infarction, Conduction Disturbance, ST/T Change, and Sex). 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.
Language
English
Seminar type
On site only
Objective of lecture
Orientation
Level of knowledge
Advanced
Target audience
Technicians/IT/Developers
Researchers
Students
Keyword
Innovation/research
Conference
MIE
Authors
Lucas Bickmann, Lucas Plagwitz, Julian Varghese
Lecturers
Lucas Bickmann Lecturer
Research Associate
University Hospital Münster
Research Associate at the Institute of Medical Informatics, University of Münster, Germany.