Newborn Time - improved newborn care based on video and artificial intelligence - study protocol

Author:

Engan Kjersti,Meinich-Bache Øyvind,Brunner Sara,Myklebust Helge,Rong Chunming,García-Torres Jorge,Ersdal Hege L.,Johannessen Anders,Pike Hanne Markhus,Rettedal Siren

Abstract

Abstract Background Approximately 3-8% of all newborns do not breathe spontaneously at birth, and require time critical resuscitation. Resuscitation guidelines are mostly based on best practice, and more research on newborn resucitation is highly sought for. Methods The NewbornTime project will develop artificial intelligence (AI) based solutions for activity recognition during newborn resuscitations based on both visible light spectrum videos and infrared spectrum (thermal) videos. In addition, time-of-birth detection will be developed using thermal videos from the delivery rooms. Deep Neural Network models will be developed, focusing on methods for limited supervision and solutions adapting to on-site environments. A timeline description of the video analysis output enables objective analysis of resuscitation events. The project further aims to use machine learning to find patterns in large amount of such timeline data to better understand how newborn resuscitation treatment is given and how it can be improved. The automatic video analysis and timeline generation will be developed for on-site usage, allowing for data-driven simulation and clinical debrief for health-care providers, and paving the way for automated real-time feedback. This brings added value to the medical staff, mothers and newborns, and society at large. Discussion The project is a interdisciplinary collaboration, combining AI, image processing, blockchain and cloud technology, with medical expertise, which will lead to increased competences and capacities in these various fields. Trial registration ISRCTNregistry, number ISRCTN12236970

Funder

Norges Forskningsråd

Helse Vest

Publisher

Springer Science and Business Media LLC

Reference34 articles.

1. Wyckoff MH, Wyllie J, Aziz K, de Almeida MF, Fabres J, Fawke J, et al. Neonatal life support: 2020 international consensus on cardiopulmonary resuscitation and emergency cardiovascular care science with treatment recommendations. Circulation. 2020;142(16-suppl-1):S185–221.

2. Madar J, Roehr CC, Ainsworth S, Ersdal H, Morley C, Ruediger M, et al. European Resuscitation Council Guidelines 2021: Newborn resuscitation and support of transition of infants at birth. Resuscitation. 2021;161:291–326.

3. Bjorland PA, Øymar K, Ersdal HL, Rettedal SI. Incidence of newborn resuscitative interventions at birth and short-term outcomes: a regional population-based study. BMJ Paediatr Open. 2019;3(1). https://doi.org/10.1136/bmjpo-2019-000592.

4. World Health Organization (WHO). Children: improving survival and well-being. 2019. https://www.who.int/en/news-room/fact-sheets/detail/children-reducing-mortality. Accessed 2 Jan 2023.

5. Aslam HM, Saleem S, Afzal R, Iqbal U, Saleem SM, Shaikh MWA, et al. Risk factors of birth asphyxia. Ital J Pediatr. 2014;40(1):1–9.

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