4.5 Article

Prediction of Loneliness in Older Adults Using Natural Language Processing: Exploring Sex Differences in Speech

Journal

AMERICAN JOURNAL OF GERIATRIC PSYCHIATRY
Volume 29, Issue 8, Pages 853-866

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.jagp.2020.09.009

Keywords

Artificial Intelligence; social isolation; gender

Funding

  1. IBM Research AI through the AI Horizons Network
  2. National Institute of Mental Health [NIMH T32 Geriatric Mental Health Program] [MH019934]
  3. NIMH [K23MH119375-01]
  4. Brain and Behavior Research Foundation
  5. VA San Diego Healthcare System
  6. Stein Institute for Research on Aging at the University of California San Diego

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This study explores the use of artificial intelligence technology to evaluate linguistic features of transcribed speech data related to loneliness among older adults. Findings indicate that lonely individuals demonstrate longer responses with greater expression of sadness, while women are more likely to admit feeling lonely in interviews. Machine learning models can accurately predict loneliness, with a 94% precision for qualitative assessments.
Objective: The growing pandemic of loneliness has great relevance to aging populations, though assessments are limited by self-report approaches. This paper explores the use of artificial intelligence (AI) technology to evaluate interviews on loneliness, notably, employing natural language processing (NLP) to quantify sentiment and features that indicate loneliness in transcribed speech text of older adults. Design: Participants completed semi-structured qualitative interviews regarding the experience of loneliness and a quantitative self-report scale (University of California Los Angeles or UCLA Loneliness scale) to assess loneliness. Lonely and non-lonely participants (based on qualitative and quantitative assessments) were compared. Setting: Independent living sector of a senior housing community in San Diego County. Participants: Eighty English-speaking older adults with age range 66-94 (mean 83 years). Measurements: Interviews were audiotaped and manually transcribed. Transcripts were examined using NLP approaches to quantify sentiment and expressed emotions. Results: Lonely individuals (by qualitative assessments) had longer responses with greater expression of sadness to direct questions about loneliness. Women were more likely to endorse feeling lonely during the qualitative interview. Men used more fearful and joyful words in their responses. Using linguistic features, machine learning models could predict qualitative loneliness with 94% precision (sensitivity = 0.90, specificity = 1.00) and quantitative loneliness with 76% precision (sensitivity = 0.57, specificity = 0.89). Conclusions: AI (e.g., NLP and machine learning approaches) can provide unique insights into how linguistic features of transcribed speech data may reflect loneliness. Eventually linguistic features could be used to assess loneliness of individuals, despite limitations of commercially developed natural language understanding programs.

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