| Literature DB >> 28727808 |
Sarah M Zala1, Doris Reitschmidt1, Anton Noll2, Peter Balazs2, Dustin J Penn1.
Abstract
House mice (Mus musculus) emit complex ultrasonic vocalizations (USVs) during social and sexual interactions, which have features similar to bird song (i.e., they are composed of several different types of syllables, uttered in succession over time to form a pattern of sequences). Manually processing complex vocalization data is time-consuming and potentially subjective, and therefore, we developed an algorithm that automatically detects mouse ultrasonic vocalizations (Automatic Mouse Ultrasound Detector or A-MUD). A-MUD is a script that runs on STx acoustic software (S_TOOLS-STx version 4.2.2), which is free for scientific use. This algorithm improved the efficiency of processing USV files, as it was 4-12 times faster than manual segmentation, depending upon the size of the file. We evaluated A-MUD error rates using manually segmented sound files as a 'gold standard' reference, and compared them to a commercially available program. A-MUD had lower error rates than the commercial software, as it detected significantly more correct positives, and fewer false positives and false negatives. The errors generated by A-MUD were mainly false negatives, rather than false positives. This study is the first to systematically compare error rates for automatic ultrasonic vocalization detection methods, and A-MUD and subsequent versions will be made available for the scientific community.Entities:
Mesh:
Year: 2017 PMID: 28727808 PMCID: PMC5519055 DOI: 10.1371/journal.pone.0181200
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
USV parameters and definitions in A-MUD.
| Parameter | Definition of the parameter (measurement unit) |
|---|---|
| start of the element (s) | |
| length of the element (s) | |
| mean frequency of the element (Hz) | |
| frequency bandwidth (fmax—fmin) (Hz) | |
| mean amplitude of the element (dB) | |
| start point of the element (ms) | |
| frequency at start point of the element (Hz) | |
| amplitude at start point of the element (dB) | |
| end point of the element (ms) | |
| frequency at endpoint of the element (Hz) | |
| amplitude at endpoint of the element (dB) | |
| time point of lowest frequency of the element (ms) | |
| lowest frequency of the element (Hz) | |
| amplitude at the point of lowest frequency (dB) | |
| time point of highest frequency of the element (ms) |
Spectrographic parameters detected by A-MUD.
Fig 1Evaluation of error rates among automatic USV detection methods (all recordings).
Boxplots showing the percentage of correct positives (a), false positives (b) and false negatives (c) comparing three automatic processing methods: A-MUD (grey) and a commercially available software using ‘whistle tracking’ (white) or ‘single threshold’ (stippled) settings. The graph shows median ± 95% CI, including the 25th and the 75th percentiles. ** = p ≤ 0.01.
Fig 2Evaluation of error rates among automatic USV detection methods (selected recordings).
Boxplots showing the percentage of correct positives (a), false positives (b) and false negatives (c) with three automatic processing methods: A-MUD (grey) and a commercially available software using ‘whistle tracking’ (white) or ‘single threshold’ (stippled) settings. The graph shows median ± 95% CI, including the 25th and the 75th percentiles. * = p ≤ 0.05. ° = outliers.