Literature DB >> 33397423

Predicting risk of early discontinuation of exclusive breastfeeding at a Brazilian referral hospital for high-risk neonates and infants: a decision-tree analysis.

Maíra Domingues Bernardes Silva1, Raquel de Vasconcellos Carvalhaes de Oliveira2, Davi da Silveira Barroso Alves3, Enirtes Caetano Prates Melo4.   

Abstract

BACKGROUND: Determinants at several levels may affect breastfeeding practices. Besides the known historical, socio-economic, cultural, and individual factors, other components also pose major challenges to breastfeeding. Predicting existing patterns and identifying modifiable components are important for achieving optimal results as early as possible, especially in the most vulnerable population. The goal of this study was building a tree-based analysis to determine the variables that can predict the pattern of breastfeeding at hospital discharge and at 3 and 6 months of age in a referral center for high-risk infants.
METHODS: This prospective, longitudinal study included 1003 infants and was conducted at a high-risk public hospital in the following three phases: hospital admission, first visit after discharge, and monthly telephone interview until the sixth month of the infant's life. Independent variables were sorted into four groups: factors related to the newborn infant, mother, health service, and breastfeeding. The outcome was breastfeeding as per the categories established by the World Health Organization (WHO). For this study, we performed an exploratory analysis at hospital discharge and at 3 and at 6 months of age in two stages, as follows: (i) determining the frequencies of baseline characteristics stratified by breastfeeding indicators in the three mentioned periods and (ii) decision-tree analysis.
RESULTS: The prevalence of exclusive breastfeeding (EBF) was 65.2% at hospital discharge, 51% at 3 months, and 20.6% at 6 months. At hospital discharge and the sixth month, the length of hospital stay was the most important predictor of feeding practices, also relevant at the third month. Besides the mother's and child's characteristics (multiple births, maternal age, and parity), the social context, work, feeding practice during hospitalization, and hospital practices and policies on breastfeeding influenced the breastfeeding rates.
CONCLUSIONS: The combination algorithm of decision trees (a machine learning technique) provides a better understanding of the risk predictors of breastfeeding cessation in a setting with a large variability in expositions. Decision trees may provide a basis for recommendations aimed at this high-risk population, within the Brazilian context, in light of the hospital stay at a neonatal unit and period of continuous feeding practice.

Entities:  

Year:  2021        PMID: 33397423     DOI: 10.1186/s13006-020-00349-x

Source DB:  PubMed          Journal:  Int Breastfeed J        ISSN: 1746-4358            Impact factor:   3.461


  25 in total

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3.  Long hospitalization is the most important risk factor for early weaning from breast milk in premature babies.

Authors:  Lieselotte Kirchner; Valerie Jeitler; Thomas Waldhör; Arnold Pollak; Martin Wald
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4.  Breastfeeding promotion in neonatal intensive care unit: impact of a new program toward a BFHI for high-risk infants.

Authors:  Immacolata Dall'Oglio; Guglielmo Salvatori; Enea Bonci; Barbara Nantini; G D'Agostino; A Dotta
Journal:  Acta Paediatr       Date:  2007-11       Impact factor: 2.299

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Journal:  Health Econ Rev       Date:  2016-12-01

7.  Impact of early human milk on sepsis and health-care costs in very low birth weight infants.

Authors:  A L Patel; T J Johnson; J L Engstrom; L F Fogg; B J Jegier; H R Bigger; P P Meier
Journal:  J Perinatol       Date:  2013-01-31       Impact factor: 2.521

Review 8.  Born too soon: the global epidemiology of 15 million preterm births.

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Journal:  Reprod Health       Date:  2013-11-15       Impact factor: 3.223

9.  Breastfeeding patterns in cohort infants at a high-risk fetal, neonatal and child referral center in Brazil: a correspondence analysis.

Authors:  Maíra Domingues Bernardes Silva; Raquel de Vasconcellos Carvalhaes de Oliveira; José Ueleres Braga; João Aprígio Guerra de Almeida; Enirtes Caetano Prates Melo
Journal:  BMC Pediatr       Date:  2020-08-07       Impact factor: 2.125

10.  Prevalence of exclusive breastfeeding practice in the first six months of life and its determinants in Iran: a systematic review and meta-analysis.

Authors:  Meysam Behzadifar; Mandana Saki; Masoud Behzadifar; Mahnaz Mardani; Fatemeh Yari; Farzad Ebrahimzadeh; Hadis Majidi Mehr; Shadi Abdi Bastami; Nicola Luigi Bragazzi
Journal:  BMC Pediatr       Date:  2019-10-27       Impact factor: 2.125

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Journal:  BMC Med       Date:  2022-09-12       Impact factor: 11.150

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