Print Email Facebook Twitter Interpretable Parametric Modelling of the Heart based on ECG Signals Title Interpretable Parametric Modelling of the Heart based on ECG Signals Author Wang, Chengyan (TU Delft Electrical Engineering, Mathematics and Computer Science; TU Delft Signal Processing Systems; TU Delft Microelectronics) Contributor Hendriks, R.C. (mentor) Varon, Carolina (mentor) Boutry, C.M. (graduation committee) Degree granting institution Delft University of Technology Corporate name Delft University of Technology Programme Electrical Engineering | Signals and Systems Date 2023-10-10 Abstract Atrial fibrillation (AF) is one of the most common heart diseases. Billions of people have suffered from it in the world. Although it can lead to terrible complications such as stroke and heart failure, the underlying mechanisms of it are still under-explored. Besides, there is no so-called optimal therapy for the patients. As the disease is progressive, it is important to detect it in an early stage. To develop methods for understanding and detecting AF, the interpretable parametric model can be an option. This model can provide physiological information at the signal level. In this case, the electrocardiogram, as the most commonly used invasive measurement of cardiac conditions, can be the data to model the heart structure and cardiac activities.This thesis proposes an interpretable parametric model based on P-waves extracted from the ECG signals. Specifically, the autoregressive (AR) model is implemented, which is also known as linear predicting coding (LPC). The goal is to model the atrium and understand the function of the atrium, which can reflect on the varying parameters in the SR and AF cases. In this context, The formant of P-waves is modeled and estimated, which is a representation of the atrium activities. In addition, the parameters of the model are mapped into 2-dimension by the zero-pole plots in order to interpret the differences between SR and AF situations. Based on the differences between parameters and formants, a parametric classifier of high interpretability is developed to detect AF. An alternating searching algorithm is proposed to determine the parameters of the classifier. Subject AFParametric ModelECGLPC To reference this document use: http://resolver.tudelft.nl/uuid:3940c438-d076-4f13-ae14-47de304157c2 Part of collection Student theses Document type master thesis Rights © 2023 Chengyan Wang Files PDF Msc_Thesis_Chengyan_Wang_ ... 534615.pdf 7.07 MB Close viewer /islandora/object/uuid:3940c438-d076-4f13-ae14-47de304157c2/datastream/OBJ/view