AI Article Synopsis

  • A new software platform, InSTIL, aims to facilitate digital phenotyping research by collecting both passive and active data from participants' smartphones to analyze health outcomes, particularly for mental health.
  • The design emphasizes coordination due to high technical and resource costs while balancing data quality and user experience for those consenting to participate.
  • InSTIL features cross-platform support for iOS and Android and includes privacy measures that ensure anonymized data collection, with aspirations to create a large-scale digital phenotyping bank for improved prediction of mental health issues.

Article Abstract

In this viewpoint we describe the architecture of, and design rationale for, a new software platform designed to support the conduct of digital phenotyping research studies. These studies seek to collect passive and active sensor signals from participants' smartphones for the purposes of modelling and predicting health outcomes, with a specific focus on mental health. We also highlight features of the current research landscape that recommend the coordinated development of such platforms, including the significant technical and resource costs of development, and we identify specific considerations relevant to the design of platforms for digital phenotyping. In addition, we describe trade-offs relating to data quality and completeness versus the experience for patients and public users who consent to their devices being used to collect data. We summarize distinctive features of the resulting platform, InSTIL (Intelligent Sensing to Inform and Learn), which includes universal (ie, cross-platform) support for both iOS and Android devices and privacy-preserving mechanisms which, by default, collect only anonymized participant data. We conclude with a discussion of recommendations for future work arising from learning during the development of the platform. The development of the InSTIL platform is a key step towards our research vision of a population-scale, international, digital phenotyping bank. With suitable adoption, the platform will aggregate signals from large numbers of participants and large numbers of research studies to support modelling and machine learning analyses focused on the prediction of mental illness onset and disease trajectories.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6868504PMC
http://dx.doi.org/10.2196/16399DOI Listing

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