A mobile digital device proficiency performance test for cognitive clinical research
Mobile device proficiency is increasingly important for everyday living, including to deliver healthcare services. Human-device interactions represent a potential in cognitive neurology and aging research. Although traditional pen-and-paper evaluations serve as valuable tools within public health st...
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Zusammenfassung: | Mobile device proficiency is increasingly important for everyday living,
including to deliver healthcare services. Human-device interactions represent a
potential in cognitive neurology and aging research. Although traditional
pen-and-paper evaluations serve as valuable tools within public health
strategies for population-scale cognitive assessments, digital devices could
amplify cognitive assessment. However, even person-centered studies often fail
to incorporate measures of mobile device proficiency and research with digital
mobile technology frequently neglects these evaluations. Besides that,
cognitive screening, a fundamental part of brain health evaluation and a widely
accepted strategy to identify high-risk individuals vulnerable to cognitive
impairment and dementia, has research using digital devices for older adults in
need for standardization. To address this shortfall, the DigiTAU collaborative
and interdisciplinary project is creating refined methodological parameters for
the investigation of digital biomarkers. With careful consideration of
cognitive design elements, here we describe the open-source and
performance-based Mobile Device Abilities Test (MDAT), a simple, low-cost, and
reproductible open-sourced test framework. This result was achieved with a
cross-sectional study population sample of 101 low and middle-income subjects
aged 20 to 79 years old. Partial least squares structural equation modeling
(PLS-SEM) was used to assess the measurement of the construct. It was possible
to achieve a reliable method with internal consistency, good content validity
related to digital competences, and that does not have much interference with
auto-perceived global functional disability, health self-perception, and motor
dexterity. Limitations for this method are discussed and paths to improve and
establish better standards are highlighted. |
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DOI: | 10.48550/arxiv.2310.01774 |