| Literature DB >> 31585457 |
Joanna J Parga1, Sharon Lewin2, Juanita Lewis2, Diana Montoya-Williams1, Abeer Alwan3, Brianna Shaul4, Carol Han3, Susan Y Bookheimer3, Sherry Eyer5, Mirella Dapretto3, Lonnie Zeltzer2, Lauren Dunlap3, Usha Nookala3, Daniel Sun3, Bianca H Dang3, Ariana E Anderson6.
Abstract
BACKGROUND: To characterize acoustic features of an infant's cry and use machine learning to provide an objective measurement of behavioral state in a cry-translator. To apply the cry-translation algorithm to colic hypothesizing that these cries sound painful.Entities:
Year: 2019 PMID: 31585457 PMCID: PMC7033040 DOI: 10.1038/s41390-019-0592-4
Source DB: PubMed Journal: Pediatr Res ISSN: 0031-3998 Impact factor: 3.756
Fig. 1Spectrograms from 5-s audio samples of each cry type showing the distribution of frequencies across time for four different infants. Acoustic features were used to train a machine learning algorithm to predict across three primary cry states: hungry, fussy, pain. This algorithm was tested on infant cries from colic to assess whether acoustic features of pain were present in cries from infants with parental-assessed colic
Predictive accuracy of the random forests classifier for identifying pain cries vs. hungry vs. fussy cries, assessed using the out-of-sample accuracy
| Calculated diagnostic accuracy parameters | |
|---|---|
| Sample size | 691 |
| Prevalence | 0.51 |
| Sensitivity | 0.91 |
| Specificity | 0.68 |
| PPV | 0.75 |
| NPV | 0.87 |
| LR + result | 2.81 |
| LR − result | 0.14 |
The primary algorithm was trained on these three cry states that were not developmentally dependent, to assess whether pain ratings differed in babies with colic and without colic. Roughly 51% of cries were painful, but the ChatterBaby algorithm performed significantly above chance and correctly flagged 91% of pain cries
Fig. 2The ChatterBaby algorithms were trained initially using three cry states: Fussy, Hungry, and Pain. The algorithms were validated both internally using the out-of-bag testing accuracy as well as externally; the algorithms were tested on a separate subset of baby cries from Colic (as defined by the parent). Colic cries had significantly higher acoustic measures of Acute Pain compared to Fussy and Hungry (p < 0.001)
Fig. 3For a single infant, we compared cry recordings during vaccinations for six different events ranging between 87 and 618 days of age. Each vaccination cry was analyzed using the ChatterBaby cry-translation algorithm. For all events, pain had the largest predicted probability and varied little across time in probability. This may suggest that, within a single infant, the vocal features of pain may be highly consistent, which enables parents to learn their child’s cry