RT Journal Article SR Electronic T1 HFOApp: A MATLAB Graphical User Interface for High-Frequency Oscillation Marking JF eneuro JO eNeuro FD Society for Neuroscience SP ENEURO.0509-20.2021 DO 10.1523/ENEURO.0509-20.2021 VO 8 IS 5 A1 Guangyu Zhou A1 Torben Noto A1 Arjun Sharma A1 Qiaohan Yang A1 Karina A. González Otárula A1 Matthew Tate A1 Jessica W. Templer A1 Gregory Lane A1 Christina Zelano YR 2021 UL http://www.eneuro.org/content/8/5/ENEURO.0509-20.2021.abstract AB Epilepsy affects 3.4 million people in the United States, and, despite the availability of numerous antiepileptic drugs, 36% of patients have uncontrollable seizures, which severely impact quality of life. High-frequency oscillations (HFOs) are a potential biomarker of epileptogenic tissue that could be useful in surgical planning. As a result, research into the efficacy of HFOs as a clinical tool has increased over the last 2 decades. However, detection and identification of these transient rhythms in intracranial electroencephalographic recordings remain time-consuming and challenging. Although automated detection algorithms have been developed, their results are widely inconsistent, reducing reliability. Thus, manual marking of HFOs remains the gold standard, and manual review of automated results is required. However, manual marking and review are time consuming and can still produce variable results because of their subjective nature and the limitations in functionality of existing open-source software. Our goal was to develop a new software with broad application that improves on existing open-source HFO detection applications in usability, speed, and accuracy. Here, we present HFOApp: a free, open-source, easy-to-use MATLAB-based graphical user interface for HFO marking. This toolbox offers a high degree of intuitive and ergonomic usability and integrates interactive automation-assist options with manual marking, significantly reducing the time needed for review and manual marking of recordings, while increasing inter-rater reliability. The toolbox also features simultaneous multichannel detection and marking. HFOApp was designed as an easy-to-use toolbox for clinicians and researchers to quickly and accurately mark, quantify, and characterize HFOs within electrophysiological datasets.