Caldas, Weslley L.Weslley L.Caldasdo Vale Madeiro, Joao PauloJoao Paulodo Vale MadeiroPedrosa, Roberto CouryRoberto CouryPedrosaGomes, Joao Paulo PordeusJoao Paulo PordeusGomesDu, WencaiWencaiDuLobo Marques, Joao AlexandreJoao AlexandreLobo MarquesLee, Roger2024-04-022024-04-022023978-3-031-12126-5978-3-031-12127-2https://dspace.usj.edu.mo/handle/123456789/5653Continuous cardiac monitoring has been increasingly adopted to prevent heart diseases, especially the case of Chagas disease, a chronic condition that can degrade the heart condition, leading to sudden cardiac death. Unfortunately, a common challenge for these systems is the low-quality and high level of noise in ECG signal collection. Also, generic techniques to assess the ECG quality can discard useful information in these so-called chagasic ECG signals. To mitigate this issue, this work proposes a 1D CNN network to assess the quality of the ECG signal for chagasic patients and compare it to the state of art techniques. Segments of 10 s were extracted from 200 1-lead ECG Holter signals. Different feature extractions were considered such as morphological fiducial points, interval duration, and statistical features, aiming to classify 400 segments into four signal quality types: Acceptable ECG, Non-ECG, Wandering Baseline (WB), and AC Interference (ACI) segments. The proposed CNN architecture achieves a 0.90±0.02 accuracy in the multi-classification experiment and also 0.94±0.01 when considering only acceptable ECG against the other three classes. Also, we presented a complementary experiment showing that, after removing noisy segments, we improved morphological recognition (based on QRS wave) by 33% of the entire ECG data. The proposed noise detector may be applied as a useful tool for pre-processing chagasic ECG signals.enNoise Detection and Classification in Chagasic ECG Signals Based on One-Dimensional Convolutional Neural NetworksBook Section