benshi.ai, Passeig de Gracia, 74, Barcelona 08008, Spain.
Maternity Foundation, Forbindelsesvej 3, 2. floor, Copenhagen 2100, Denmark.
Artif Intell Med. 2023 Apr;138:102511. doi: 10.1016/j.artmed.2023.102511. Epub 2023 Feb 24.
Every day, 800 women and 6700 newborns die from complications related to pregnancy or childbirth. A well-trained midwife can prevent most of these maternal and newborn deaths. Data science models together with logs generated by users of online learning applications for midwives can help improve their learning competencies. In this work, we evaluate various forecasting methods to determine the future interest of users for the different types of content available in the Safe Delivery App, a digital training tool for skilled birth attendants, broken down by profession and region. This first attempt at health content demand forecasting for midwifery learning shows that DeepAR can accurately anticipate content demand in operational settings, and could therefore be used to offer users personalized content and to provide an adaptive learning journey.
每天,有 800 名妇女和 6700 名新生儿死于与妊娠或分娩相关的并发症。一名训练有素的助产士可以预防大多数这些产妇和新生儿的死亡。数据科学模型以及在线学习应用程序的用户生成的日志可以帮助提高他们的学习能力。在这项工作中,我们评估了各种预测方法,以确定 SafeDelivery App 中不同类型内容的未来用户兴趣,SafeDelivery App 是一种针对熟练助产士的数字培训工具,按专业和地区进行了划分。这是首次尝试对助产士学习的健康内容需求进行预测,结果表明 DeepAR 可以在运营环境中准确预测内容需求,因此可以用于向用户提供个性化内容并提供适应性学习体验。