Prediction modelling of inpatient neonatal mortality in high-mortality settings

Author:

Aluvaala JalembaORCID,Collins GaryORCID,Maina Beth,Mutinda Catherine,Waiyego Mary,Berkley James AlexanderORCID,English MikeORCID

Abstract

ObjectivePrognostic models aid clinical decision making and evaluation of hospital performance. Existing neonatal prognostic models typically use physiological measures that are often not available, such as pulse oximetry values, in routine practice in low-resource settings. We aimed to develop and validate two novel models to predict all cause in-hospital mortality following neonatal unit admission in a low-resource, high-mortality setting.Study design and settingWe used basic, routine clinical data recorded by duty clinicians at the time of admission to derive (n=5427) and validate (n=1627) two novel models to predict in-hospital mortality. The Neonatal Essential Treatment Score (NETS) included treatments prescribed at the time of admission while the Score for Essential Neonatal Symptoms and Signs (SENSS) used basic clinical signs. Logistic regression was used, and performance was evaluated using discrimination and calibration.ResultsAt derivation, c-statistic (discrimination) for NETS was 0.92 (95% CI 0.90 to 0.93) and that for SENSS was 0.91 (95% CI 0.89 to 0.93). At external (temporal) validation, NETS had a c-statistic of 0.89 (95% CI 0.86 to 0.92) and SENSS 0.89 (95% CI 0.84 to 0.93). The calibration intercept for NETS was −0.72 (95% CI −0.96 to −0.49) and that for SENSS was −0.33 (95% CI −0.56 to −0.11).ConclusionUsing routine neonatal data in a low-resource setting, we found that it is possible to predict in-hospital mortality using either treatments or signs and symptoms. Further validation of these models may support their use in treatment decisions and for case-mix adjustment to help understand performance variation across hospitals.

Funder

Wellcome Trust

Health Systems Research Initiative

Publisher

BMJ

Subject

Pediatrics, Perinatology, and Child Health

Reference27 articles.

1. United Nations;General Assembly . Transforming our world: the 2030 agenda for sustainable development, 2015.

2. Can available interventions end preventable deaths in mothers, newborn babies, and stillbirths, and at what cost?;Bhutta;Lancet,2014

3. National, regional, and global levels and trends in neonatal mortality between 1990 and 2017, with scenario-based projections to 2030: a systematic analysis;Hug;Lancet Glob Health,2019

4. WHO . Systems thinking for health systems strengthening, 2009.

5. Assessing the ability of health information systems in hospitals to support evidence-informed decisions in Kenya;Kihuba;Glob Health Action,2014

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