“…Consequently, this results in different methods being used to process these signals. Overall ECG artifact identification and removal are made possible by various algorithms and are closely dependent on the aim [ 19 ]: a data-driven mechanism of empirical mode decomposition [ 20 , 21 ], deep-learning-based models [ 22 ], wavelet-based models [ 23 ], and sparsity-based, Bayesian-filter-based, and Hybrid models [ 24 ]. The majority of them focus on short-duration artifacts, which are often treated in the same way as ectopic beats [ 25 , 26 , 27 ].…”