cometrics: A New Software Tool for Behavior-analytic Clinicians and Machine Learning Researchers

被引:0
|
作者
Walker S. Arce
Seth G. Walker
Morgan L. Hurtz
James E. Gehringer
机构
[1] University of Nebraska Medical Center,Munroe
[2] University of Nebraska-Lincoln,Meyer Institute
来源
关键词
computerized data collection; Empatica E4; machine learning; observational data; video annotation;
D O I
暂无
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学科分类号
摘要
Cometrics is a Microsoft Windows compatible clinical tool for the collection and recording of frequency- and duration-based target behaviors, physiological signals, and video data. This software package is designed to record in-vivo observational and physiological data. In addition, we have included features that allow observers to capture video from real-time camera feeds and import saved video for retroactive data collection. By using Microsoft Excel-based spreadsheets, also called keystroke files, assessment and treatment sessions are exported into a single document using the click of a button. Integrated interobserver agreement metrics allow comparisons across primary and reliability observers, with the output exported into a spreadsheet for easy reference. All file system interactions are handled by the user interface, so files and folders are created and managed without manual intervention. This software is available free-of-charge through the Microsoft Store for Windows 10 and 11 and the source code is publicly available on GitHub.
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页码:1270 / 1279
页数:9
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