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Can digital data diagnose mental health problems? A sociological exploration of ‘digital phenotyping’

Can digital data diagnose mental health problems? A sociological exploration of ‘digital phenotyping’
Can digital data diagnose mental health problems? A sociological exploration of ‘digital phenotyping’
This paper critically explores the research and development of ‘digital phenotyping’, which broadly refers to the idea that digital data can measure and predict people’s mental health as well as their potential risk for mental ill health. Despite increasing research and efforts to digitally track and predict ill mental health, there has been little sociological and critical engagement with this field. This paper aims to fill this gap by introducing digital phenotyping to the social sciences. We explore the origins of digital phenotyping, the concept of the digital phenotype and its potential for benefit, linking these to broader developments within the field of ‘mental health sensing’. We then critically discuss the technology, offering three critiques. First, that there may be assumptions of normality and bias present in the use of algorithms; second, we critique the idea that digital data can act as a proxy for social life; and third that the often biological language employed in this field risks reifying mental health problems. Our aim is not to discredit the scientific work in this area, but rather to call for scientists to remain reflexive in their work, and for more social science engagement in this area.
big data, diagnosis, digital data, digital phenotyping, mental health
0141-9889
1873-1887
Hoffman Birk, Rasmus
188fe68a-cdab-4c78-a8be-fc0404a72633
Samuel, Gabrielle
66af6213-08de-4c0e-92c1-12083ec456e3
Hoffman Birk, Rasmus
188fe68a-cdab-4c78-a8be-fc0404a72633
Samuel, Gabrielle
66af6213-08de-4c0e-92c1-12083ec456e3

Hoffman Birk, Rasmus and Samuel, Gabrielle (2020) Can digital data diagnose mental health problems? A sociological exploration of ‘digital phenotyping’. Sociology of Health & Illness, 42 (8), 1873-1887. (doi:10.1111/1467-9566.13175).

Record type: Article

Abstract

This paper critically explores the research and development of ‘digital phenotyping’, which broadly refers to the idea that digital data can measure and predict people’s mental health as well as their potential risk for mental ill health. Despite increasing research and efforts to digitally track and predict ill mental health, there has been little sociological and critical engagement with this field. This paper aims to fill this gap by introducing digital phenotyping to the social sciences. We explore the origins of digital phenotyping, the concept of the digital phenotype and its potential for benefit, linking these to broader developments within the field of ‘mental health sensing’. We then critically discuss the technology, offering three critiques. First, that there may be assumptions of normality and bias present in the use of algorithms; second, we critique the idea that digital data can act as a proxy for social life; and third that the often biological language employed in this field risks reifying mental health problems. Our aim is not to discredit the scientific work in this area, but rather to call for scientists to remain reflexive in their work, and for more social science engagement in this area.

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More information

Accepted/In Press date: 16 July 2020
e-pub ahead of print date: 11 September 2020
Published date: November 2020
Keywords: big data, diagnosis, digital data, digital phenotyping, mental health

Identifiers

Local EPrints ID: 451230
URI: http://eprints.soton.ac.uk/id/eprint/451230
ISSN: 0141-9889
PURE UUID: a6eaf13f-a2d9-43db-a4dc-df006354e995

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Date deposited: 14 Sep 2021 20:15
Last modified: 16 Mar 2024 10:28

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Author: Rasmus Hoffman Birk

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