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AR2, a novel automatic muscle artifact reduction software method for ictal EEG interpretation: Validation and comparison of performance with commercially available software

Authors :
Scott Mintzer
Dale Wyeth
Lara M. Schrader
Michael G Ho
Stephanie Moy
Marjan Asadollahi
John M. Stern
Adam L. Numis
Jason T. Lerner
Perdro Churchman
Iren Orosz
Jerome Engel
Michael R. Sperling
Andres Fernandez
Timothy Ambrose
Maromi Nei
Ali A. Asadi-Pooya
Rajsekar R. Rajaraman
Dawn Eliashiv
Shennan A. Weiss
Lekha M. Rao
Marc R. Nuwer
Michael Gibbs
Christine Bower-Baca
Joanna Suski
Edward F. Chang
Christopher Skidmore
Annapoorna Bhat
Sitaram Vangala
Gary W. Mathern
Christopher K Cheng
Inna Keselman
Source :
F1000Research, Weiss, SA; Asadi-Pooya, AA; Vangala, S; Moy, S; Wyeth, DH; Orosz, I; et al.(2017). AR2, a novel automatic muscle artifact reduction software method for ictal EEG interpretation: Validation and comparison of performance with commercially available software.. F1000Research, 6, 30. doi: 10.12688/f1000research.10569.2. UCLA: Retrieved from: http://www.escholarship.org/uc/item/7kd0053d
Publication Year :
2017
Publisher :
eScholarship, University of California, 2017.

Abstract

Objective: To develop a novel software method (AR2) for reducing muscle contamination of ictal scalp electroencephalogram (EEG), and validate this method on the basis of its performance in comparison to a commercially available software method (AR1) to accurately depict seizure-onset location. Methods: A blinded investigation used 23 EEG recordings of seizures from 8 patients. Each recording was uninterpretable with digital filtering because of muscle artifact and processed using AR1 and AR2 and reviewed by 26 EEG specialists. EEG readers assessed seizure-onset time, lateralization, and region, and specified confidence for each determination. The two methods were validated on the basis of the number of readers able to render assignments, confidence, the intra-class correlation (ICC), and agreement with other clinical findings. Results: Among the 23 seizures, two-thirds of the readers were able to delineate seizure-onset time in 10 of 23 using AR1, and 15 of 23 using AR2 (p Conclusions: EEG artifact reduction methods for localizing seizure-onset does not result in high rates of interpretability, reader confidence, and inter-reader agreement. However, the assignments by groups of readers are often congruent with other clinical data. Utilization of the AR2 software method may improve the validity of ictal EEG artifact reduction.

Details

Database :
OpenAIRE
Journal :
F1000Research, Weiss, SA; Asadi-Pooya, AA; Vangala, S; Moy, S; Wyeth, DH; Orosz, I; et al.(2017). AR2, a novel automatic muscle artifact reduction software method for ictal EEG interpretation: Validation and comparison of performance with commercially available software.. F1000Research, 6, 30. doi: 10.12688/f1000research.10569.2. UCLA: Retrieved from: http://www.escholarship.org/uc/item/7kd0053d
Accession number :
edsair.doi.dedup.....bd4b320d2bb2ac1027135c943a40357d
Full Text :
https://doi.org/10.12688/f1000research.10569.2.