Literature DB >> 33777664

Ethical Issues in Democratizing Digital Phenotypes and Machine Learning in the Next Generation of Digital Health Technologies.

Maurice D Mulvenna1, Raymond Bond1, Jack Delaney2, Fatema Mustansir Dawoodbhoy2, Jennifer Boger3, Courtney Potts1, Robin Turkington1.   

Abstract

Digital phenotyping is the term given to the capturing and use of user log data from health and wellbeing technologies used in apps and cloud-based services. This paper explores ethical issues in making use of digital phenotype data in the arena of digital health interventions. Products and services based on digital wellbeing technologies typically include mobile device apps as well as browser-based apps to a lesser extent, and can include telephony-based services, text-based chatbots, and voice-activated chatbots. Many of these digital products and services are simultaneously available across many channels in order to maximize availability for users. Digital wellbeing technologies offer useful methods for real-time data capture of the interactions of users with the products and services. It is possible to design what data are recorded, how and where it may be stored, and, crucially, how it can be analyzed to reveal individual or collective usage patterns. The paper also examines digital phenotyping workflows, before enumerating the ethical concerns pertaining to different types of digital phenotype data, highlighting ethical considerations for collection, storage, and use of the data. A case study of a digital health app is used to illustrate the ethical issues. The case study explores the issues from a perspective of data prospecting and subsequent machine learning. The ethical use of machine learning and artificial intelligence on digital phenotype data and the broader issues in democratizing machine learning and artificial intelligence for digital phenotype data are then explored in detail.
© The Author(s) 2021.

Entities:  

Keywords:  Digital health; Digital phenotyping; Ecological momentary assessment; Ethics; Event log analysis; Experience sampling method; Unsupervised machine learning

Year:  2021        PMID: 33777664      PMCID: PMC7981596          DOI: 10.1007/s13347-021-00445-8

Source DB:  PubMed          Journal:  Philos Technol        ISSN: 2210-5433


  18 in total

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8.  Characterizing the clinical relevance of digital phenotyping data quality with applications to a cohort with schizophrenia.

Authors:  John Torous; Patrick Staples; Ian Barnett; Luis R Sandoval; Matcheri Keshavan; Jukka-Pekka Onnela
Journal:  NPJ Digit Med       Date:  2018-04-06

9.  Data mining for health: staking out the ethical territory of digital phenotyping.

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