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Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”

BACKGROUND: People with suicidal ideation post suicide-related information on social media, and some may choose collective suicide. Sina Weibo is one of the most popular social media platforms in China, and “Zoufan” is one of the largest depression “Tree Holes.” To collect suicide warning informatio...

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Autores principales: Yang, Bing Xiang, Chen, Pan, Li, Xin Yi, Yang, Fang, Huang, Zhisheng, Fu, Guanghui, Luo, Dan, Wang, Xiao Qin, Li, Wentian, Wen, Li, Zhu, Junyong, Liu, Qian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8900140/
https://www.ncbi.nlm.nih.gov/pubmed/35264986
http://dx.doi.org/10.3389/fpsyt.2022.789504
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author Yang, Bing Xiang
Chen, Pan
Li, Xin Yi
Yang, Fang
Huang, Zhisheng
Fu, Guanghui
Luo, Dan
Wang, Xiao Qin
Li, Wentian
Wen, Li
Zhu, Junyong
Liu, Qian
author_facet Yang, Bing Xiang
Chen, Pan
Li, Xin Yi
Yang, Fang
Huang, Zhisheng
Fu, Guanghui
Luo, Dan
Wang, Xiao Qin
Li, Wentian
Wen, Li
Zhu, Junyong
Liu, Qian
author_sort Yang, Bing Xiang
collection PubMed
description BACKGROUND: People with suicidal ideation post suicide-related information on social media, and some may choose collective suicide. Sina Weibo is one of the most popular social media platforms in China, and “Zoufan” is one of the largest depression “Tree Holes.” To collect suicide warning information and prevent suicide behaviors, researchers conducted real-time network monitoring of messages in the “Zoufan” tree hole via artificial intelligence robots. OBJECTIVE: To explore characteristics of time, content and suicidal behaviors by analyzing high suicide risk comments in the “Zoufan” tree hole. METHODS: Knowledge graph technology was used to screen high suicide risk comments in the “Zoufan” tree hole. Users' level of activity was analyzed by calculating the number of messages per hour. Words in messages were segmented by a Jieba tool. Keywords and a keywords co-occurrence matrix were extracted using a TF-IDF algorithm. Gephi software was used to conduct keywords co-occurrence network analysis. RESULTS: Among 5,766 high suicide risk comments, 73.27% were level 7 (suicide method was determined but not the suicide date). Females and users from economically developed cities are more likely to express suicide ideation on social media. High suicide risk users were more active during nighttime, and they expressed strong negative emotions and willingness to end their life. Jumping off buildings, wrist slashing, burning charcoal, hanging and sleeping pills were the most frequently mentioned suicide methods. About 17.55% of comments included suicide invitations. Negative cognition and emotions are the most common suicide reason. CONCLUSION: Users sending high risk suicide messages on social media expressed strong suicidal ideation. Females and users from economically developed cities were more likely to leave high suicide risk comments on social media. Nighttime was the most active period for users. Characteristics of high suicide risk messages help to improve the automatic suicide monitoring system. More advanced technologies are needed to perform critical analysis to obtain accurate characteristics of the users and messages on social media. It is necessary to improve the 24-h crisis warning and intervention system for social media and create a good online social environment.
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spelling pubmed-89001402022-03-08 Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole” Yang, Bing Xiang Chen, Pan Li, Xin Yi Yang, Fang Huang, Zhisheng Fu, Guanghui Luo, Dan Wang, Xiao Qin Li, Wentian Wen, Li Zhu, Junyong Liu, Qian Front Psychiatry Psychiatry BACKGROUND: People with suicidal ideation post suicide-related information on social media, and some may choose collective suicide. Sina Weibo is one of the most popular social media platforms in China, and “Zoufan” is one of the largest depression “Tree Holes.” To collect suicide warning information and prevent suicide behaviors, researchers conducted real-time network monitoring of messages in the “Zoufan” tree hole via artificial intelligence robots. OBJECTIVE: To explore characteristics of time, content and suicidal behaviors by analyzing high suicide risk comments in the “Zoufan” tree hole. METHODS: Knowledge graph technology was used to screen high suicide risk comments in the “Zoufan” tree hole. Users' level of activity was analyzed by calculating the number of messages per hour. Words in messages were segmented by a Jieba tool. Keywords and a keywords co-occurrence matrix were extracted using a TF-IDF algorithm. Gephi software was used to conduct keywords co-occurrence network analysis. RESULTS: Among 5,766 high suicide risk comments, 73.27% were level 7 (suicide method was determined but not the suicide date). Females and users from economically developed cities are more likely to express suicide ideation on social media. High suicide risk users were more active during nighttime, and they expressed strong negative emotions and willingness to end their life. Jumping off buildings, wrist slashing, burning charcoal, hanging and sleeping pills were the most frequently mentioned suicide methods. About 17.55% of comments included suicide invitations. Negative cognition and emotions are the most common suicide reason. CONCLUSION: Users sending high risk suicide messages on social media expressed strong suicidal ideation. Females and users from economically developed cities were more likely to leave high suicide risk comments on social media. Nighttime was the most active period for users. Characteristics of high suicide risk messages help to improve the automatic suicide monitoring system. More advanced technologies are needed to perform critical analysis to obtain accurate characteristics of the users and messages on social media. It is necessary to improve the 24-h crisis warning and intervention system for social media and create a good online social environment. Frontiers Media S.A. 2022-02-18 /pmc/articles/PMC8900140/ /pubmed/35264986 http://dx.doi.org/10.3389/fpsyt.2022.789504 Text en Copyright © 2022 Yang, Chen, Li, Yang, Huang, Fu, Luo, Wang, Li, Wen, Zhu and Liu. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Psychiatry
Yang, Bing Xiang
Chen, Pan
Li, Xin Yi
Yang, Fang
Huang, Zhisheng
Fu, Guanghui
Luo, Dan
Wang, Xiao Qin
Li, Wentian
Wen, Li
Zhu, Junyong
Liu, Qian
Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title_full Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title_fullStr Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title_full_unstemmed Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title_short Characteristics of High Suicide Risk Messages From Users of a Social Network—Sina Weibo “Tree Hole”
title_sort characteristics of high suicide risk messages from users of a social network—sina weibo “tree hole”
topic Psychiatry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8900140/
https://www.ncbi.nlm.nih.gov/pubmed/35264986
http://dx.doi.org/10.3389/fpsyt.2022.789504
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