4.6 Article

Geolocation as a Digital Phenotyping Measure of Negative Symptoms and Functional Outcome

Journal

SCHIZOPHRENIA BULLETIN
Volume 46, Issue 6, Pages 1596-1607

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/schbul/sbaa121

Keywords

ambulatory; ecological momentary assessment; avolition; asociality; psychosis; mobile health (mHealth)

Categories

Funding

  1. National Institute of Mental Health [R21-MH112925]

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Objective: Negative symptoms and functional outcome have traditionally been assessed using clinical rating scales, which rely on retrospective self-reports and have several inherent limitations that impact validity. These issues may be addressed with more objective digital phenotyping measures. In the current study, we evaluated the psychometric properties of a novel passive digital phenotyping method: geolocation. Method: Participants included outpatients with schizophrenia or schizoaffective disorder (SZ: n = 44), outpatients with bipolar disorder (BD: n = 19), and demographically matched healthy controls (CN: n = 42) who completed 6 days of active digital phenotyping assessments (eg, surveys) while geolocation was recorded. Results: Results indicated that SZ patients show less activity than CN and BD, particularly, in their travel from home. Geolocation variables demonstrated convergent validity by small to medium correlations with negative symptoms and functional outcome measured via clinical rating scales, as well as active digital phenotyping behavioral indices of avolition, asociality, and anhedonia. Discriminant validity was supported by low correlations with positive symptoms, depression, and anxiety. Reliability was supported by good internal consistency and moderate stability across days. Conclusions: These findings provide preliminary support for the reliability and validity of geolocation as an objective measure of negative symptoms and functional outcome. Geolocation offers enhanced precision and the ability to take a big data approach that facilitates sophisticated computational models. Near-continuous recordings and large numbers of samples may make geolocation a novel outcome measure for clinical trials due to enhanced power to detect treatment effects.

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