Posted Date : 03rd Jun, 2023
Publishing in UGC-approved journals offers several advantages, includi...
Posted Date : 03rd Jun, 2023
UGC-approved journals refer to the scholarly journals that have been a...
Posted Date : 09th Sep, 2022
The University of Pune is going to update the ugc care listed journals...
Posted Date : 09th Sep, 2022
IJARESM Publication have various tie ups with many Conference/Seminar ...
Posted Date : 07th Mar, 2022
Call For Papers : LokSanwad Foundation Aurangabad, Maharashtra One Day...
An In-Depth Examination of Machine Learning and Deep Learning Algorithms for the Detection of Sleep Apnea from a Single-Lead ECG
Author Name : Gurla Lakshmi Lavanya, Y. Vijaya Lakshmi
ABSTRACT
Sleep apnea is portrayed by successive episodes in which the wind stream to the lungs is diminished or halted for over ten seconds. A crucial first step in selecting the most effective medications and treatment options is the accurate diagnosis of rest or sleep apnea episodes. Utilizing the 70-record PhysioNet ECG Sleep Apnea v1.0.0 dataset, this study explores deep learning and machine learning (ML) strategies. After pre-handling and sectioning the ECG information, techniques in view of deep learning and ML were utilized to analyze sleep apnea. To meet our requirement for biosignal processing, all networks were modified in the same way. Three arrangements of information were made: a test set for assessing model generalizability on untested information, an approval set for calibrating hyperparameters, and a training set for tweaking model boundaries. In a 5-fold cross-validation approach, this procedure was then repeated five times until all of the recordings in the test set were found. With a responsiveness of 84.26 percent, particularity of 92.27 percent, and exactness of 88.13 percent, separately, half breed deep models played out the best regarding discovery. With regards to distinguishing sleep apnea and other rest issues, this study reveals insight into the exhibition of different ML and deep learning calculations.
Keywords –Electrocardiogram (ECG), deep learning, detection, machine learning, and sleep apnea