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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: May 11, 2024
Date Accepted: Dec 10, 2024

The final, peer-reviewed published version of this preprint can be found here:

The Impact of Linguistic Signals on Cognitive Change in Support Seekers in Online Mental Health Communities: Text Analysis and Empirical Study

Li M, Gu D, Li R, Gu Y, Liu H, Su K, Wang X, Zhang G

The Impact of Linguistic Signals on Cognitive Change in Support Seekers in Online Mental Health Communities: Text Analysis and Empirical Study

J Med Internet Res 2025;27:e60292

DOI: 10.2196/60292

PMID: 39808783

PMCID: 11775492

The Impact of Linguistic Signals on Cognitive Change of Support Seekers in Online Mental Health Communities: Text Analysis and Empirical Study

  • Min Li; 
  • Dongxiao Gu; 
  • Rui Li; 
  • Yadi Gu; 
  • Hu Liu; 
  • Kaixiang Su; 
  • Xiaoyu Wang; 
  • Gongrang Zhang

ABSTRACT

Background:

Interactions in online mental health communities can reduce psychological distress and significantly enhance members’ mental well-being. The overall quality of support is uneven due to differences in people’s capacities to help others, leading to some problems of support seekers being solved, while others are not.

Objective:

The purpose of this paper is to study which characteristics of the comments posted to offer support can help support seekers (that is, result in cognitive change).

Methods:

This study applied signaling theory to identify antecedents of this cognitive change, and used consulting strategies from the offline, face-to-face psychological counseling process, described in the literature, to construct six characteristics, namely intimacy, emotional polarity, the use of first-person words, the use of words indicating the future, specificity, and language style. We used text mining and natural language processing technology to identify the features in online text, and we used a multiple regression model for empirical analysis.

Results:

The findings show that support comments are more likely to alter support seekers’ cognitive processes if they have lower intimacy, higher positive emotional polarity, lower specificity, more first-person words, more future- and present-tense words, and less function words.

Conclusions:

This work built a model to analyze the factors that make an online mental health community support seeker better. This work has significance for online mental health community support providers. Additionally, it offers pointers for managing and designing online communities for mental health.


 Citation

Please cite as:

Li M, Gu D, Li R, Gu Y, Liu H, Su K, Wang X, Zhang G

The Impact of Linguistic Signals on Cognitive Change in Support Seekers in Online Mental Health Communities: Text Analysis and Empirical Study

J Med Internet Res 2025;27:e60292

DOI: 10.2196/60292

PMID: 39808783

PMCID: 11775492

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