Abstract
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.
Highlights
Rodent models of disease can replicate key histopathological, biochemical, and behavioral features of human disease
In agreement with some previous studies[15,16] focusing on multi-class classification problems with a relatively limited number of samples, we found that random forests (RF) generally outperformed support vector machines (SVM); we present results only for RF
We investigated the potential of using acoustic analysis to extract features which can be used to replicate the expert provided labels (9 call types) which represent vocal behavior
Summary
Rodent models of disease can replicate key histopathological, biochemical, and behavioral features of human disease. Ultrasonic vocalizations (USVs) produced by rodents are consistent and robust phenomena used as an index of social interest, motivation and emotional development[1]. The use of sophisticated acoustic analysis methods for identifying salient features of vocal behavior are well established in human research. The most commonly used methods to classify USVs are described by Holy and Guo[10], and Scattoni and Crawley et al.[11]. This visual approach was developed at the US National Institutes of Mental Health (NIMH) in the Behavioural Neuroscience Section led by Prof. Other methods for example, do not offer additional call types or descriptions but use a paired down or expanded version of the same scheme used in the current study (see list of studies in Supplementary Note III for details)
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