Software development process of Neotree - a data capture and decision support system to improve newborn healthcare in low-resource settings

Nushrat Khan(Great Ormond Street Hospital), Caroline Crehan(Great Ormond Street Hospital), Tim Hull‐Bailey(Maudsley Charity), Charles Normand(Independent Sector), Leyla Larsson(Biomedical Research and Training Institute), Deliwe Nkhoma(Kamuzu Central Hospital), Tarisai Chiyaka(Biomedical Research and Training Institute), Felicity Fitzgerald(Imperial College London), Erin Kesler(Children's Hospital of Philadelphia), Hannah Gannon(Great Ormond Street Hospital), Patty Kostkova(NHS Digital), Emma Wilson(Great Ormond Street Hospital), Matteo Giaccone(Independent Sector), Danie Krige(City of Cape Town), Morris Baradza(City of Cape Town), Daniel Silksmith(Independent Sector), Samuel R. Neal(Great Ormond Street Hospital), Simbarashe Chimhuya(University of Zimbabwe), Msandeni Chiume(Kamuzu Central Hospital), Yali Sassoon, Michelle Heys(Great Ormond Street Hospital)
Wellcome Open Research
December 19, 2022
Cited by 15Open Access
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Abstract

<ns3:p> The global priority of improving neonatal survival could be tackled through the universal implementation of cost-effective maternal and newborn health interventions. Despite 90% of neonatal deaths occurring in low-resource settings, very few evidence-based digital health interventions exist to assist healthcare professionals in clinical decision-making in these settings. To bridge this gap, Neotree was co-developed through an iterative, user-centered design approach in collaboration with healthcare professionals in the UK, Bangladesh, Malawi, and Zimbabwe. It addresses a broad range of neonatal clinical diagnoses and healthcare indicators as opposed to being limited to specific conditions and follows national and international guidelines for newborn care. This digital health intervention includes a mobile application (app) which is designed to be used by healthcare professionals at the bedside. The app enables real-time data capture and provides education in newborn care and clinical decision support <ns3:italic>via</ns3:italic> integrated clinical management algorithms. Comprehensive routine patient data are prospectively collected regarding each newborn, as well as maternal data and blood test results, which are used to inform clinical decision making at the bedside. Data dashboards provide healthcare professionals and hospital management a near real-time overview of patient statistics that can be used for healthcare quality improvement purposes. To enable this workflow, the Neotree web editor allows fine-grained customization of the mobile app. The data pipeline manages data flow from the app to secure databases and then to the dashboard. Implemented in three hospitals in two countries so far, Neotree has captured routine data and supported the care of over 21,000 babies and has been used by over 450 healthcare professionals. All code and documentation are open source, allowing adoption and adaptation by clinicians, researchers, and developers. </ns3:p>


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