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Quantifying ultrasonic mouse vocalizations using acoustic analysis in a supervised statistical machine learning framework

机译:在有监督的统计机器学习框架中使用声学分析量化超声鼠标的发声

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摘要

Examination of rodent vocalizations in experimental conditions can yield valuable insights into how disease manifests and progresses over time. It can also be used as an index of social interest, motivation, emotional development or motor function depending on the animal model under investigation. Most mouse communication is produced in ultrasonic frequencies beyond human hearing. These ultrasonic vocalizations (USV) are typically described and evaluated using expert defined classification of the spectrographic appearance or simplistic acoustic metrics resulting in nine call types. In this study, we aimed to replicate the standard expert-defined call types of communicative vocal behavior in mice by using acoustic analysis to characterize USVs and a principled supervised learning setup. We used four feature selection algorithms to select parsimonious subsets with maximum predictive accuracy, which are then presented into support vector machines (SVM) and random forests (RF). We assessed the resulting models using 10-fold cross-validation with 100 repetitions for statistical confidence and found that a parsimonious subset of 8 acoustic measures presented to RF led to 85% correct out-of-sample classification, replicating the experts’ labels. Acoustic measures can be used by labs to describe USVs and compare data between groups, and provide insight into vocal-behavioral patterns of mice by automating the process on matching the experts’ call types.
机译:在实验条件下检查啮齿动物的发声可以得出有价值的见解,以了解疾病随着时间的推移如何表现和发展。根据所研究的动物模型,它也可以用作社会兴趣,动机,情绪发展或运动功能的指标。大多数鼠标通讯都是以超出人类听觉的超声波频率产生的。通常使用专家定义的光谱外观分类或简单的声学指标(产生9种呼叫类型)来描述和评估这些超声发声(USV)。在这项研究中,我们旨在通过使用声学分析来表征USV和原则上有监督的学习设置,来在小鼠中复制标准的专家定义的通话方式,以表达小鼠的语音行为。我们使用四种特征选择算法来选择具有最高预测精度的简约子集,然后将其呈现到支持向量机(SVM)和随机森林(RF)中。我们使用10次交叉验证和100次重复进行了评估,从而得出了结果模型,从而获得了统计置信度,结果发现,向RF展示的8种声学测量的简约子集导致了85%的正确样本外分类,从而复制了专家的标签。实验室可以使用声学测量方法来描述USV,并比较各组之间的数据,并通过自动匹配专家呼叫类型的过程来了解小鼠的发声行为模式。

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