Title :
Data fusion in autonomic nervous system event detection
Author :
Hernández, A.I. ; Carrault, G. ; Mora, F. ; Passariello, G. ; Hernández, M.I.
Author_Institution :
Grupo de Bioingenieria y Biofisica Aplicada, Simon Bolivar Univ., Caracas, Venezuela
Abstract :
Data fusion is an evolving discipline which provides a way to integrate data from multiple sensors and sources, deriving new comprehensive information. Due to the multisensor nature of many clinical procedures, data handling and interpretation may be improved by the proper definition and application of these techniques. This work presents a data fusion approach to multisensor autonomic nervous system (ANS) evaluation, and an example of the application of these techniques to multisensor autonomic event detection. The example involves two levels of data fusion, combining information related to the chronotropic, inotropic and dromotropic effects of the ANS on the heart. The latter being calculated from the esophageal electrocardiogram, which is not to often used as a signal source.
Keywords :
electrocardiography; medical signal processing; neurophysiology; sensor fusion; signal detection; autonomic nervous system event detection; chronotropic effects; clinical procedures; data fusion approach; data handling; data interpretation; dromotropic effects; esophageal electrocardiogram; inotropic effects; multisensor autonomic nervous system evaluation; Autonomic nervous system; Biosensors; Cardiology; Data handling; Event detection; Heart; Performance analysis; Sensor fusion; Terminology; Universal Serial Bus;
Conference_Titel :
Computers in Cardiology, 1996
Conference_Location :
Indianapolis, IN, USA
Print_ISBN :
0-7803-3710-7
DOI :
10.1109/CIC.1996.542553