Adaptive common average reference for in vivo multichannel local field potentials

For in vivo neural recording, local field potential (LFP) is often corrupted by spatially correlated artifacts, especially in awake/behaving subjects. A method named adaptive common average reference (ACAR) based on the concept of adaptive noise canceling (ANC) that utilizes the correlative features...

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Published inBiomedical engineering letters Vol. 7; no. 1; pp. 7 - 15
Main Authors Xinyu, Liu, Hong, Wan, Shan, Li, Yan, Chen, Li, Shi
Format Journal Article
LanguageEnglish
Published Korea The Korean Society of Medical and Biological Engineering 01.02.2017
Springer Nature B.V
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ISSN2093-9868
2093-985X
2093-985X
DOI10.1007/s13534-016-0004-1

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Summary:For in vivo neural recording, local field potential (LFP) is often corrupted by spatially correlated artifacts, especially in awake/behaving subjects. A method named adaptive common average reference (ACAR) based on the concept of adaptive noise canceling (ANC) that utilizes the correlative features of common noise sources and implements with common average referencing (CAR), was proposed for removing the spatially correlated artifacts. Moreover, a correlation analysis was devised to automatically select appropriate channels before generating the CAR reference. The performance was evaluated in both synthesized data and real data from the hippocampus of pigeons, and the results were compared with the standard CAR and several previously proposed artifacts removal methods. Comparative testing results suggest that the ACAR performs better than the available algorithms, especially in a low SNR. In addition, feasibility of this method was provided theoretically. The proposed method would be an important pre-processing step for in vivo LFP processing.
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ISSN:2093-9868
2093-985X
2093-985X
DOI:10.1007/s13534-016-0004-1