Aledavood Talayeh, Triana Hoyos Ana Maria, Alakörkkö Tuomas, Kaski Kimmo, Saramäki Jari, Isometsä Erkki, Darst Richard K
Department of Computer Science, Aalto University, Espoo, Finland.
Department of Psychiatry, University of Helsinki and Helsinki University Hospital, Helsinki, Finland.
JMIR Res Protoc. 2017 Jun 9;6(6):e110. doi: 10.2196/resprot.6919.
Mental and behavioral disorders are the main cause of disability worldwide. However, their diagnosis is challenging due to a lack of reliable biomarkers; current detection is based on structured clinical interviews which can be biased by the patient's recall ability, affective state, changing in temporal frames, etc. While digital platforms have been introduced as a possible solution to this complex problem, there is little evidence on the extent of usability and usefulness of these platforms. Therefore, more studies where digital data is collected in larger scales are needed to collect scientific evidence on the capacities of these platforms. Most of the existing platforms for digital psychiatry studies are designed as monolithic systems for a certain type of study; publications from these studies focus on their results, rather than the design features of the data collection platform. Inevitably, more tools and platforms will emerge in the near future to fulfill the need for digital data collection for psychiatry. Currently little knowledge is available from existing digital platforms for future data collection platforms to build upon.
The objective of this work was to identify the most important features for designing a digital platform for data collection for mental health studies, and to demonstrate a prototype platform that we built based on these design features.
We worked closely in a multidisciplinary collaboration with psychiatrists, software developers, and data scientists and identified the key features which could guarantee short-term and long-term stability and usefulness of the platform from the designing stage to data collection and analysis of collected data.
The key design features that we identified were flexibility of access control, flexibility of data sources, and first-order privacy protection. We also designed the prototype platform Non-Intrusive Individual Monitoring Architecture (Niima), where we implemented these key design features. We described why each of these features are important for digital data collection for psychiatry, gave examples of projects where Niima was used or is going to be used in the future, and demonstrated how incorporating these design principles opens new possibilities for studies.
The new methods of digital psychiatry are still immature and need further research. The design features we suggested are a first step to design platforms which can adapt to the upcoming requirements of digital psychiatry.
精神和行为障碍是全球致残的主要原因。然而,由于缺乏可靠的生物标志物,其诊断具有挑战性;目前的检测基于结构化临床访谈,这可能会受到患者回忆能力、情感状态、时间框架变化等因素的影响。虽然数字平台已被引入作为解决这一复杂问题的可能方案,但关于这些平台的可用性和有用性程度的证据很少。因此,需要更多大规模收集数字数据的研究,以收集有关这些平台能力的科学证据。现有的大多数数字精神病学研究平台都是针对某类研究设计的整体系统;这些研究的出版物侧重于结果,而非数据收集平台的设计特点。不可避免地,在不久的将来会出现更多工具和平台来满足精神病学数字数据收集的需求。目前,现有数字平台可供未来数据收集平台借鉴的知识很少。
本研究的目的是确定设计用于精神卫生研究数据收集的数字平台的最重要特征,并展示我们基于这些设计特征构建的原型平台。
我们与精神科医生、软件开发人员和数据科学家进行了密切的多学科合作,确定了从设计阶段到数据收集以及对收集的数据进行分析,能够保证平台短期和长期稳定性及有用性的关键特征。
我们确定的关键设计特征包括访问控制的灵活性、数据源的灵活性和一级隐私保护。我们还设计了原型平台非侵入性个体监测架构(Niima),并在其中实现了这些关键设计特征。我们阐述了这些特征中每一个对于精神病学数字数据收集为何重要,给出了Niima已被使用或未来将被使用的项目示例,并展示了纳入这些设计原则如何为研究开辟新的可能性。
数字精神病学的新方法仍不成熟,需要进一步研究。我们建议的设计特征是设计能够适应数字精神病学未来需求的平台的第一步。