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Journal Article

Citation

Li A, Jiao D, Zhu T. J. Med. Internet. Res. 2022; 24(4): e36489.

Copyright

(Copyright © 2022, Centre for Global eHealth Innovation)

DOI

10.2196/36489

PMID

35394437

Abstract

BACKGROUND: The new reality of cybersuicide raises challenges to ideologies about the traditional form of suicide that does not involve the internet (offline suicide), which may lead to changes in audience's attitudes. However, knowledge on whether stigmatizing attitudes differ between cybersuicides and offline suicides remains limited.

OBJECTIVE: This study aims to consider livestreamed suicide as a typical representative of cybersuicide and use social media data (Sina Weibo) to investigate the differences in stigmatizing attitudes across cybersuicides and offline suicides in terms of attitude types and linguistic characteristics.

METHODS: A total of 4393 cybersuicide-related and 2843 offline suicide-related Weibo posts were collected and analyzed. First, human coders were recruited and trained to perform a content analysis on the collected posts to determine whether each of them reflected stigma. Second, a text analysis tool was used to automatically extract a number of psycholinguistic features from each post. Subsequently, based on the selected features, a series of classification models were constructed for different purposes: differentiating the general stigma of cybersuicide from that of offline suicide and differentiating the negative stereotypes of cybersuicide from that of offline suicide.

RESULTS: In terms of attitude types, cybersuicide was observed to carry more stigma than offline suicide (χ(2)(1)=179.8; P<.001). Between cybersuicides and offline suicides, there were significant differences in the proportion of posts associated with five different negative stereotypes, including stupid and shallow (χ(2)(1)=28.9; P<.001), false representation (χ(2)(1)=144.4; P<.001), weak and pathetic (χ(2)(1)=20.4; P<.001), glorified and normalized (χ(2)(1)=177.6; P<.001), and immoral (χ(2)(1)=11.8; P=.001). Similar results were also found for different genders and regions. In terms of linguistic characteristics, the F-measure values of the classification models ranged from 0.81 to 0.85.

CONCLUSIONS: The way people perceive cybersuicide differs from how they perceive offline suicide. The results of this study have implications for reducing the stigma against suicide.


Language: en

Keywords

social media; stigma; cybersuicide; linguistic analysis; livestreamed suicide

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