Detecting your depression with your smartphone? – An ethical analysis of epistemic injustice in passive self-tracking apps

Smartphone apps might offer a low-threshold approach to the detection of mental health conditions, such as depression. Based on the gathering of ‘passive data,’ some apps generate a user’s ‘digital phenotype,’ compare it to those of users with clinically confirmed depression and issue a warning if a...

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Veröffentlicht in:Ethics and information technology 2024-06, Vol.26 (2), p.28, Article 28
Hauptverfasser: Faissner, Mirjam, Kuhn, Eva, Müller, Regina, Laacke, Sebastian
Format: Artikel
Sprache:eng
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Zusammenfassung:Smartphone apps might offer a low-threshold approach to the detection of mental health conditions, such as depression. Based on the gathering of ‘passive data,’ some apps generate a user’s ‘digital phenotype,’ compare it to those of users with clinically confirmed depression and issue a warning if a depressive episode is likely. These apps can, thus, serve as epistemic tools for affected users. From an ethical perspective, it is crucial to consider epistemic injustice to promote socially responsible innovations within digital mental healthcare. In cases of epistemic injustice, people are wronged specifically as epistemic agents, i.e., agents of the production and distribution of knowledge. We suggest that epistemic agency relies on different resource- and uptake-related preconditions which can be impacted by the functionality of passive self-tracking apps. We consider how this can lead to different forms of epistemic injustice (testimonial, hermeneutical, and contributory injustice) and analyze the influence of the apps’ use on epistemic practices on an individual level, in mental healthcare settings, and on the structural level.
ISSN:1388-1957
1572-8439
DOI:10.1007/s10676-024-09765-7