Linguistic style as a digital marker for depression severity: An ambulatory assessment pilot study in patients with depressive disorder undergoing sleep deprivation therapy

Author:

Hartnagel Lisa‐Marie1ORCID,Ebner‐Priemer Ulrich W.12,Foo Jerome C.3456,Streit Fabian237,Witt Stephanie H.3,Frank Josef3,Limberger Matthias F.1,Horn Andrea B.8,Gilles Maria2,Rietschel Marcella3,Sirignano Lea3

Affiliation:

1. Mental mHealth Lab, Institute of Sports and Sports Science Karlsruhe Institute of Technology Karlsruhe Germany

2. Department of Psychiatry and Psychotherapy, Central Institute of Mental Health, Medical Faculty Mannheim University of Heidelberg Mannheim Germany

3. Department of Genetic Epidemiology in Psychiatry, Central Institute of Mental Health, Medical Faculty Mannheim University of Heidelberg Mannheim Germany

4. Institute for Psychopharmacology, Central Institute of Mental Health, Medical Faculty Mannheim University of Heidelberg Mannheim Germany

5. Neuroscience and Mental Health Institute University of Alberta Edmonton Alberta Canada

6. Department of Psychiatry, College of Health Sciences University of Alberta Edmonton Alberta Canada

7. Hector Institute for Artificial Intelligence in Psychiatry, Central Institute of Mental Health, Medical Faculty Mannheim University of Heidelberg Mannheim Germany

8. University Research Priority Program (URPP) Dynamics of Healthy Aging, Healthy Longevity Center University of Zürich Zürich Switzerland

Abstract

AbstractBackgroundDigital phenotyping and monitoring tools are the most promising approaches to automatically detect upcoming depressive episodes. Especially, linguistic style has been seen as a potential behavioral marker of depression, as cross‐sectional studies showed, for example, less frequent use of positive emotion words, intensified use of negative emotion words, and more self‐references in patients with depression compared to healthy controls. However, longitudinal studies are sparse and therefore it remains unclear whether within‐person fluctuations in depression severity are associated with individuals' linguistic style.MethodsTo capture affective states and concomitant speech samples longitudinally, we used an ambulatory assessment approach sampling multiple times a day via smartphones in patients diagnosed with depressive disorder undergoing sleep deprivation therapy. This intervention promises a rapid change of affective symptoms within a short period of time, assuring sufficient variability in depressive symptoms. We extracted word categories from the transcribed speech samples using the Linguistic Inquiry and Word Count.ResultsOur analyses revealed that more pleasant affective momentary states (lower reported depression severity, lower negative affective state, higher positive affective state, (positive) valence, energetic arousal and calmness) are mirrored in the use of less negative emotion words and more positive emotion words.ConclusionWe conclude that a patient's linguistic style, especially the use of positive and negative emotion words, is associated with self‐reported affective states and thus is a promising feature for speech‐based automated monitoring and prediction of upcoming episodes, ultimately leading to better patient care.

Funder

Deutsche Forschungsgemeinschaft

Publisher

Wiley

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