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Machine learning, waveform preprocessing and feature extraction methods for classification of acoustic startle waveforms

机译:机器学习,波形预处理和声学震动波形分类的特征提取方法

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The acoustic startle response (ASR) is an involuntary muscle reflex that occurs in response to a transient loud sound and is a highly-utilized method of assessing hearing status in animal models. Currently, a high level of variability exists in the recording and interpretation of ASRs due to the lack of standardization for collecting and analyzing these measures. An ensembled machine learning model was trained to predict whether an ASR waveform is a startle or non-startle using highly-predictive features extracted from normalized ASR waveforms collected from young adult CBA/CaJ mice. Features were extracted from the normalized waveform as well as the power spectral density estimates and continuous wavelet transforms of the normalized waveform. Machine learning models utilizing methods from different families of algorithms were individually trained and then ensembled together, resulting in an extremely robust model.?ASR waveforms were normalized using the mean and standard deviation computed before the startle elicitor was presented?9 machine learning algorithms from 4 different families of algorithms were individually trained using features extracted from the normalized ASR waveforms?Trained machine learning models were ensembled to produce an extremely robust classifier.
机译:声学惊吓响应(ASR)是一种非自愿的肌肉反射,其响应于瞬态大声,是评估动物模型中听力状态的高度利用方法。目前,由于缺乏用于收集和分析这些措施的标准化,ASR的记录和解释存在高水平的可变性。培训集合的机器学习模型,以预测ASR波形是否是使用从从年轻成人CBA / CAJ小鼠收集的标准化ASR波形中提取的高度预测特征来预测ASR波形或非峰值。从归一化波形中提取特征,以及归一化波形的功率谱密度估计和连续小波变换。利用来自不同算法族的方法的机器学习模型被单独培训,然后集成在一起,导致一个极其强大的模型。使用诸如惊人Elicitor之前计算的平均值和标准偏差来标准化,从而呈现出极值和标准偏差?9机器学习算法4使用从归一化ASR波形提取的特征进行单独培训的不同算法?被培训的机器学习模型被整合以产生极其强大的分类器。

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