Title of article :
Advanced Signal Processing for Cardiovascular and Neurological Diseases
Author/Authors :
Zheng, Dingchang Faculty of Medical Science - Anglia Ruskin University - Chelmsford CM1 1SQ, UK , Chen, Fei Department of Electrical and Electronic Engineering - Southern University of Science and Technology - Shenzhen, China , Li, Peng Harvard Medical School - Boston, USA , Peng, Sheng-Yu Department of Electrical Engineering - National Taiwan University of Science and Technology, Taiwan
Abstract :
Advanced signal processing and computing techniques have
been consistently playing a signifcant role in the feld of
biomedical engineering research. Tis special issue focused
on the use and elaboration of latest advanced techniques
for biomedical data analysis, including but not limited to
deep machine learning, compressed sensing, and nonlinear
dynamical approaches. Nine out of twenty-one submitted
manuscripts in response to this special issue were fnally
accepted for publication, ranging from (i) noise suppression
and removal in EEG and arterial photoplethysmography
(PPG) signals; (ii) nonlinear dynamical approaches and
multivariate and multiscale techniques for cardiovascular
and neurophysiological imaging and signal processing; (iii)
machine learning and deep neural network applications of
cognitive outcome prediction for Alzheimer’s diseases and
Parkinson’s diseases diagnosis; (iv) advanced signal processing to improve decision-making in brain-computer interface
(BCI); and (v) acquisition and analysis of respiratory signals
and rates using smartphones.
Keywords :
Cardiovascular , EEG , PPG
Journal title :
Computational and Mathematical Methods in Medicine