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An automated, machine learning–based detection algorithm for spike‐wave discharges (SWDs) in a mouse model of absence epilepsy

机译:一种基于机器学习的自动化检测算法,用于失神癫痫小鼠模型中的尖峰波放电(SWD)

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Objective Manual detection of spike‐wave discharges (SWDs) from electroencephalography (EEG) records is time intensive, costly, and subject to inconsistencies/biases. In addition, manual scoring often omits information on SWD confidence/intensity, which may be important for the investigation of mechanistic‐based research questions. Our objective is to develop an automated method for the detection of SWDs in a mouse model of absence epilepsy that is focused on the characteristics of human scoring of preselected events to establish a confidence‐based, continuous‐valued scoring. Methods We develop a support vector machine (SVM)–based algorithm for the automated detection of SWDs in the γ2R43Q mouse model of absence epilepsy. The algorithm first identifies putative SWD events using frequency‐ and amplitude‐based peak detection. Four humans scored a set of 2500 putative events identified by the algorithm. Then, using predictors calculated from the wavelet transform of each event and the labels from human scoring, we trained an SVM to classify (SWDonSWD) and assign confidence scores to each event identified from 60, 24‐hour EEG records. We provide a detailed assessment of intra‐ and interrater scoring that demonstrates advantages of automated scoring. Results The algorithm scored SWDs along a continuum that is highly correlated with human confidence and that allows us to more effectively characterize ambiguous events. We demonstrate that events along our scoring continuum are temporally and proportionately correlated with abrupt changes in spectral power bands relevant to normal behavioral states including sleep. Significance Although there are automated and semi‐automated methods for the detection of SWDs in humans and rats, we contribute to the need for continued development of SWD detection in mice. Our results demonstrate the value of viewing detection of SWDs as a continuous classification problem to better understand “ground truth” in SWD detection (ie, the most reliable features agreed upon by humans that also correlate with objective physiologic measures).
机译:目的从脑电图(EEG)记录中手动检测尖峰波放电(SWD)是费时,费钱且容易出现不一致/偏见的。此外,手动评分通常会忽略有关社署置信度/强度的信息,这对于调查基于机理的研究问题可能很重要。我们的目标是开发一种在失神癫痫的小鼠模型中检测SWD的自动化方法,其重点在于对预先选定事件进行人类评分的特征,以建立基于置信度的连续值评分。方法我们开发了一种基于支持向量机(SVM)的算法,用于在失神癫痫的γ2R43Q小鼠模型中自动检测SWD。该算法首先使用基于频率和幅度的峰值检测来识别推定的SWD事件。该算法确定了四个人对2500个推定事件的评分。然后,使用从每个事件的小波变换计算出的预测变量和人类评分的标签,我们训练了一个SVM进行分类(SWD / nonSWD),并为从60个24小时EEG记录中识别出的每个事件分配置信度得分。我们提供了对内部和内部评分的详细评估,展示了自动评分的优势。结果该算法沿与人类信心高度相关的连续体对SWD进行评分,这使我们能够更有效地表征歧义事件。我们证明,沿着我们的评分连续体发生的事件在时间上和比例上与与包括睡眠在内的正常行为状态相关的频谱功率带的突然变化相关。重要性尽管存在自动和半自动的人类和大鼠SWD检测方法,但我们仍需要继续开发小鼠SWD检测方法。我们的结果表明,将SWD的检测作为连续分类问题的价值,可以更好地理解SWD检测中的“地面真相”(即,人类认可的最可靠的特征,也与客观的生理指标有关)。

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