Artículos de revistas
Use of metabolomics for the identification and validation of clinical biomarkers for preterm birth: Preterm SAMBA
Fecha
2016-08-08Registro en:
BMC Pregnancy and Childbirth, v. 16, n. 1, 2016.
1471-2393
10.1186/s12884-016-1006-9
2-s2.0-84981273829
2-s2.0-84981273829.pdf
2-s2.0-84981273829.pdf
Autor
Universidade Estadual de Campinas (UNICAMP)
Liggins Institute
Irish Centre for Fetal and Neonatal Translational Research (INFANT)
Faculty of Medical and Health Sciences
School of Biological Sciences
LNBio
Universidade Estadual Paulista (Unesp)
Federal University of Rio Grande do Sul
Universidade Federal de Pernambuco (UFPE)
Federal University of Ceará
King's College London and King's Health Partners
University of Manchester
University of Leeds
University of Adelaide
Institución
Resumen
Background: Spontaneous preterm birth is a complex syndrome with multiple pathways interactions determining its occurrence, including genetic, immunological, physiologic, biochemical and environmental factors. Despite great worldwide efforts in preterm birth prevention, there are no recent effective therapeutic strategies able to decrease spontaneous preterm birth rates or their consequent neonatal morbidity/mortality. The Preterm SAMBA study will associate metabolomics technologies to identify clinical and metabolite predictors for preterm birth. These innovative and unbiased techniques might be a strategic key to advance spontaneous preterm birth prediction. Methods/design: Preterm SAMBA study consists of a discovery phase to identify biophysical and untargeted metabolomics from blood and hair samples associated with preterm birth, plus a validation phase to evaluate the performance of the predictive modelling. The first phase, a case-control study, will randomly select 100 women who had a spontaneous preterm birth (before 37 weeks) and 100 women who had term birth in the Cork Ireland and Auckland New Zealand cohorts within the SCOPE study, an international consortium aimed to identify potential metabolomic predictors using biophysical data and blood samples collected at 20 weeks of gestation. The validation phase will recruit 1150 Brazilian pregnant women from five participant centres and will collect blood and hair samples at 20 weeks of gestation to evaluate the performance of the algorithm model (sensitivity, specificity, predictive values and likelihood ratios) in predicting spontaneous preterm birth (before 34 weeks, with a secondary analysis of delivery before 37 weeks). Discussion: The Preterm SAMBA study intends to step forward on preterm birth prediction using metabolomics techniques, and accurate protocols for sample collection among multi-ethnic populations. The use of metabolomics in medical science research is innovative and promises to provide solutions for disorders with multiple complex underlying determinants such as spontaneous preterm birth.