Department of Medical Sciences, Uppsala University, Uppsala, Sweden
Centre for Women's Mental Health during the Reproductive Lifespan (Womher), Uppsala University, Uppsala, Sweden.
BMJ Open. 2022 Apr 27;12(4):e059033. doi: 10.1136/bmjopen-2021-059033.
Perinatal complications, such as perinatal depression and preterm birth, are major causes of morbidity and mortality for the mother and the child. Prediction of high risk can allow for early delivery of existing interventions for prevention. This ongoing study aims to use digital phenotyping data from the Mom2B smartphone application to develop models to predict women at high risk for mental and somatic complications.
All Swedish-speaking women over 18 years, who are either pregnant or within 3 months postpartum are eligible to participate by downloading the Mom2B smartphone app. We aim to recruit at least 5000 participants with completed outcome measures. Throughout the pregnancy and within the first year postpartum, both active and passive data are collected via the app in an effort to establish a participant's digital phenotype. Active data collection consists of surveys related to participant background information, mental and physical health, lifestyle, and social circumstances, as well as voice recordings. Participants' general smartphone activity, geographical movement patterns, social media activity and cognitive patterns can be estimated through passive data collection from smartphone sensors and activity logs. The outcomes will be measured using surveys, such as the Edinburgh Postnatal Depression Scale, and through linkage to national registers, from where information on registered clinical diagnoses and received care, including prescribed medication, can be obtained. Advanced machine learning and deep learning techniques will be applied to these multimodal data in order to develop accurate algorithms for the prediction of perinatal depression and preterm birth. In this way, earlier intervention may be possible.
Ethical approval has been obtained from the Swedish Ethical Review Authority (dnr: 2019/01170, with amendments), and the project fully fulfils the General Data Protection Regulation (GDPR) requirements. All participants provide consent to participate and can withdraw their participation at any time. Results from this project will be disseminated in international peer-reviewed journals and presented in relevant conferences.
围产期并发症,如围产期抑郁和早产,是母婴发病率和死亡率的主要原因。预测高危因素可以为现有干预措施的预防提供早期分娩。本正在进行的研究旨在使用 Mom2B 智能手机应用程序的数字表型数据来开发模型,以预测患有精神和躯体并发症风险高的女性。
所有年满 18 岁的瑞典语使用者,无论是否怀孕或产后 3 个月内,都可以通过下载 Mom2B 智能手机应用程序参与。我们的目标是招募至少 5000 名完成结果测量的参与者。在整个怀孕期间和产后第一年,通过应用程序主动和被动收集数据,以建立参与者的数字表型。主动数据收集包括与参与者背景信息、身心健康、生活方式和社会环境相关的调查,以及语音记录。通过从智能手机传感器和活动日志中被动收集数据,可以估计参与者的一般智能手机活动、地理移动模式、社交媒体活动和认知模式。使用调查(如爱丁堡产后抑郁量表)来衡量结果,并通过与国家登记处的链接,从那里可以获得注册临床诊断和接受的护理信息,包括处方药物。将应用高级机器学习和深度学习技术来处理这些多模态数据,以开发用于预测围产期抑郁和早产的准确算法。通过这种方式,可以更早地进行干预。
已获得瑞典伦理审查局的伦理批准(dnr:2019/01170,有修订),该项目完全符合《通用数据保护条例》(GDPR)的要求。所有参与者都同意参与,并可以随时撤回参与。本项目的结果将在国际同行评议期刊上发表,并在相关会议上展示。