AUTHOR=Wiens Matthew O. , Trawin Jessica , Pillay Yashodani , Nguyen Vuong , Komugisha Clare , Kenya-Mugisha Nathan , Namala Angella , Bebell Lisa M. , Ansermino J. Mark , Kissoon Niranjan , Payne Beth A. , Vidler Marianne , Christoffersen-Deb Astrid , Lavoie Pascal M. , Ngonzi Joseph TITLE=Prognostic algorithms for post-discharge readmission and mortality among mother-infant dyads: an observational study protocol JOURNAL=Frontiers in Epidemiology VOLUME=3 YEAR=2023 URL=https://www.frontiersin.org/journals/epidemiology/articles/10.3389/fepid.2023.1233323 DOI=10.3389/fepid.2023.1233323 ISSN=2674-1199 ABSTRACT=Introduction

In low-income country settings, the first six weeks after birth remain a critical period of vulnerability for both mother and newborn. Despite recommendations for routine follow-up after delivery and facility discharge, few mothers and newborns receive guideline recommended care during this period. Prediction modelling of post-delivery outcomes has the potential to improve outcomes for both mother and newborn by identifying high-risk dyads, improving risk communication, and informing a patient-centered approach to postnatal care interventions. This study aims to derive post-discharge risk prediction algorithms that identify mother-newborn dyads who are at risk of re-admission or death in the first six weeks after delivery at a health facility.

Methods

This prospective observational study will enroll 7,000 mother-newborn dyads from two regional referral hospitals in southwestern and eastern Uganda. Women and adolescent girls aged 12 and above delivering singletons and twins at the study hospitals will be eligible to participate. Candidate predictor variables will be collected prospectively by research nurses. Outcomes will be captured six weeks following delivery through a follow-up phone call, or an in-person visit if not reachable by phone. Two separate sets of prediction models will be built, one set of models for newborn outcomes and one set for maternal outcomes. Derivation of models will be based on optimization of the area under the receiver operator curve (AUROC) and specificity using an elastic net regression modelling approach. Internal validation will be conducted using 10-fold cross-validation. Our focus will be on the development of parsimonious models (5–10 predictor variables) with high sensitivity (>80%). AUROC, sensitivity, and specificity will be reported for each model, along with positive and negative predictive values.

Discussion

The current recommendations for routine postnatal care are largely absent of benefit to most mothers and newborns due to poor adherence. Data-driven improvements to postnatal care can facilitate a more patient-centered approach to such care. Increasing digitization of facility care across low-income settings can further facilitate the integration of prediction algorithms as decision support tools for routine care, leading to improved quality and efficiency. Such strategies are urgently required to improve newborn and maternal postnatal outcomes.

Clinical trial registration

https://clinicaltrials.gov/, identifier (NCT05730387).