AI Article Synopsis

  • The study analyzed mother-infant interactions during vaccinations at two and six months using hidden Markov modeling to track how mothers soothe their babies.
  • Findings indicated that at two months, interactions were best described by a 4-state model, while a 6-state model was more fitting at six months, showing a clear progression from crying to calm.
  • The results suggest that as infants grow, their interactions with their mothers become more organized and effective in soothing, highlighting the evolving dynamics of their relationship.

Article Abstract

The focus of the present longitudinal study, to examine mother-infant interaction during the administration of immunizations at two and six months of age, used hidden Markov modeling, a time series approach that produces latent states to describe how mothers and infants work together to bring the infant to a soothed state. Results revealed a 4-state model for the dyadic responses to a two-month inoculation whereas a 6-state model best described the dyadic process at six months. Two of the states at two months and three of the states at six months suggested a progression from high intensity crying to no crying with parents using vestibular and auditory soothing methods. The use of feeding and/or pacifying to soothe the infant characterized one two-month state and two six-month states. These data indicate that with maturation and experience, the mother-infant dyad is becoming more organized around the soothing interaction. Using hidden Markov modeling to describe individual differences, as well as normative processes, is also presented and discussed.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4896153PMC
http://dx.doi.org/10.1002/icd.1907DOI Listing

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