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Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu

China’s migrant population has significantly contributed to its economic growth; however, the impact on the well-being of left-behind children (LBC) has become a serious public health problem. Text mining is an effective tool for identifying people’s mental state, and is therefore beneficial in expl...

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Autores principales: Lyu, Yuwen, Chow, Julian Chun-Chung, Hwang, Ji-Jen, Li, Zhi, Ren, Cheng, Xie, Jungui
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8871950/
https://www.ncbi.nlm.nih.gov/pubmed/35206315
http://dx.doi.org/10.3390/ijerph19042127
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author Lyu, Yuwen
Chow, Julian Chun-Chung
Hwang, Ji-Jen
Li, Zhi
Ren, Cheng
Xie, Jungui
author_facet Lyu, Yuwen
Chow, Julian Chun-Chung
Hwang, Ji-Jen
Li, Zhi
Ren, Cheng
Xie, Jungui
author_sort Lyu, Yuwen
collection PubMed
description China’s migrant population has significantly contributed to its economic growth; however, the impact on the well-being of left-behind children (LBC) has become a serious public health problem. Text mining is an effective tool for identifying people’s mental state, and is therefore beneficial in exploring the psychological mindset of LBC. Traditional data collection methods, which use questionnaires and standardized scales, are limited by their sample sizes. In this study, we created a computational application to quantitively collect personal narrative texts posted by LBC on Zhihu, which is a Chinese question-and-answer online community website; 1475 personal narrative texts posted by LBC were gathered. We used four types of words, i.e., first-person singular pronouns, negative words, past tense verbs, and death-related words, all of which have been associated with depression and suicidal ideations in the Chinese Linguistic Inquiry Word Count (CLIWC) dictionary. We conducted vocabulary statistics on the personal narrative texts of LBC, and bilateral t-tests, with a control group, to analyze the psychological well-being of LBC. The results showed that the proportion of words related to depression and suicidal ideations in the texts of LBC was significantly higher than in the control group. The differences, with respect to the four word types (i.e., first-person singular pronouns, negative words, past tense verbs, and death-related words), were 5.37, 2.99, 2.65, and 2.00 times, respectively, suggesting that LBC are at a higher risk of depression and suicide than their counterparts. By sorting the texts of LBC, this research also found that child neglect is a main contributing factor to psychological difficulties of LBC. Furthermore, mental health problems and the risk of suicide in vulnerable groups, such as LBC, is a global public health issue, as well as an important research topic in the era of digital public health. Through a linguistic analysis, the results of this study confirmed that the experiences of left-behind children negatively impact their mental health. The present findings suggest that it is vital for the public and nonprofit sectors to establish online suicide prevention and intervention systems to improve the well-being of LBC through digital technology.
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spelling pubmed-88719502022-02-25 Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu Lyu, Yuwen Chow, Julian Chun-Chung Hwang, Ji-Jen Li, Zhi Ren, Cheng Xie, Jungui Int J Environ Res Public Health Article China’s migrant population has significantly contributed to its economic growth; however, the impact on the well-being of left-behind children (LBC) has become a serious public health problem. Text mining is an effective tool for identifying people’s mental state, and is therefore beneficial in exploring the psychological mindset of LBC. Traditional data collection methods, which use questionnaires and standardized scales, are limited by their sample sizes. In this study, we created a computational application to quantitively collect personal narrative texts posted by LBC on Zhihu, which is a Chinese question-and-answer online community website; 1475 personal narrative texts posted by LBC were gathered. We used four types of words, i.e., first-person singular pronouns, negative words, past tense verbs, and death-related words, all of which have been associated with depression and suicidal ideations in the Chinese Linguistic Inquiry Word Count (CLIWC) dictionary. We conducted vocabulary statistics on the personal narrative texts of LBC, and bilateral t-tests, with a control group, to analyze the psychological well-being of LBC. The results showed that the proportion of words related to depression and suicidal ideations in the texts of LBC was significantly higher than in the control group. The differences, with respect to the four word types (i.e., first-person singular pronouns, negative words, past tense verbs, and death-related words), were 5.37, 2.99, 2.65, and 2.00 times, respectively, suggesting that LBC are at a higher risk of depression and suicide than their counterparts. By sorting the texts of LBC, this research also found that child neglect is a main contributing factor to psychological difficulties of LBC. Furthermore, mental health problems and the risk of suicide in vulnerable groups, such as LBC, is a global public health issue, as well as an important research topic in the era of digital public health. Through a linguistic analysis, the results of this study confirmed that the experiences of left-behind children negatively impact their mental health. The present findings suggest that it is vital for the public and nonprofit sectors to establish online suicide prevention and intervention systems to improve the well-being of LBC through digital technology. MDPI 2022-02-14 /pmc/articles/PMC8871950/ /pubmed/35206315 http://dx.doi.org/10.3390/ijerph19042127 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lyu, Yuwen
Chow, Julian Chun-Chung
Hwang, Ji-Jen
Li, Zhi
Ren, Cheng
Xie, Jungui
Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title_full Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title_fullStr Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title_full_unstemmed Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title_short Psychological Well-Being of Left-Behind Children in China: Text Mining of the Social Media Website Zhihu
title_sort psychological well-being of left-behind children in china: text mining of the social media website zhihu
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8871950/
https://www.ncbi.nlm.nih.gov/pubmed/35206315
http://dx.doi.org/10.3390/ijerph19042127
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