Brunner Sara, Johannessen Anders, García-Torres Jorge, Catak Ferhat Özgur, Meinich-Bache Øyvind, Rettedal Siren, Engan Kjersti
Laerdal Medical AS, Stavanger, Norway.
Department of Electrical Engineering and Computer Science, University of Stavanger, Stavanger, Norway.
PLOS Digit Health. 2025 Sep 8;4(9):e0000730. doi: 10.1371/journal.pdig.0000730. eCollection 2025 Sep.
Accurate observations at birth and during newborn resuscitation are fundamental for quality improvement initiatives and research. However, manual data collection methods often lack consistency and objectivity, are not scalable, and may raise privacy concerns. The NewbornTime project aims to develop an AI system that generates accurate timelines from birth and newborn resuscitation events by automated video recording and processing, providing a source of objective and consistent data. This work aims to describe the implementation of the data collection system that is necessary to support the project's purpose. Videos were recorded using thermal sensors in labor rooms and thermal and visible light cameras in resuscitation rooms. Consent from mothers was obtained before birth, and healthcare providers were given the option to delete videos by opting out on a case-by-case basis. The video collection process was designed to minimize interference with ongoing treatment and not impose unnecessary burden on healthcare providers. At Stavanger University Hospital, 1012 thermal videos of birth and 274 visible light videos of newborn stabilization and resuscitation have been collected during the data collection period from November 2021 to June 2025. The utilization of automated data collection and AI video processing around birth may allow for consistent and enhanced documentation, quality improvement initiatives, and research opportunities on sequence, timing and duration of treatment activities during acute events, with less effort needed for capturing data and improved privacy for participants.
出生时及新生儿复苏期间的准确观察对于质量改进计划和研究至关重要。然而,手动数据收集方法往往缺乏一致性和客观性,不可扩展,还可能引发隐私问题。新生儿时间项目旨在开发一个人工智能系统,通过自动视频录制和处理,从出生和新生儿复苏事件中生成准确的时间线,提供客观且一致的数据来源。这项工作旨在描述支持该项目目标所需的数据收集系统的实施情况。在产房使用热传感器进行视频录制,在复苏室使用热成像和可见光摄像机进行录制。在出生前获得母亲的同意,医疗保健提供者可以选择逐案删除视频。视频收集过程旨在尽量减少对正在进行的治疗的干扰,不给医疗保健提供者带来不必要的负担。在斯塔万格大学医院,在2021年11月至2025年6月的数据收集期间,已经收集了1012份出生时的热成像视频以及274份新生儿稳定和复苏的可见光视频。围绕出生情况利用自动数据收集和人工智能视频处理,可能会实现一致且强化的记录、质量改进计划,以及针对急性事件中治疗活动的顺序、时间和持续时间的研究机会,同时减少数据采集所需的工作量,并提高参与者的隐私保护。