Literature DB >> 32574151

Automatic Construction of a Depression-Domain Lexicon Based on Microblogs: Text Mining Study.

Genghao Li1, Bing Li1, Langlin Huang1, Sibing Hou2.   

Abstract

BACKGROUND: According to a World Health Organization report in 2017, there was almost one patient with depression among every 20 people in China. However, the diagnosis of depression is usually difficult in terms of clinical detection owing to slow observation, high cost, and patient resistance. Meanwhile, with the rapid emergence of social networking sites, people tend to share their daily life and disclose inner feelings online frequently, making it possible to effectively identify mental conditions using the rich text information. There are many achievements regarding an English web-based corpus, but for research in China so far, the extraction of language features from web-related depression signals is still in a relatively primary stage.
OBJECTIVE: The purpose of this study was to propose an effective approach for constructing a depression-domain lexicon. This lexicon will contain language features that could help identify social media users who potentially have depression. Our study also compared the performance of detection with and without our lexicon.
METHODS: We autoconstructed a depression-domain lexicon using Word2Vec, a semantic relationship graph, and the label propagation algorithm. These two methods combined performed well in a specific corpus during construction. The lexicon was obtained based on 111,052 Weibo microblogs from 1868 users who were depressed or nondepressed. During depression detection, we considered six features, and we used five classification methods to test the detection performance.
RESULTS: The experiment results showed that in terms of the F1 value, our autoconstruction method performed 1% to 6% better than baseline approaches and was more effective and steadier. When applied to detection models like logistic regression and support vector machine, our lexicon helped the models outperform by 2% to 9% and was able to improve the final accuracy of potential depression detection.
CONCLUSIONS: Our depression-domain lexicon was proven to be a meaningful input for classification algorithms, providing linguistic insights on the depressive status of test subjects. We believe that this lexicon will enhance early depression detection in people on social media. Future work will need to be carried out on a larger corpus and with more complex methods. ©Genghao Li, Bing Li, Langlin Huang, Sibing Hou. Originally published in JMIR Medical Informatics (http://medinform.jmir.org), 23.06.2020.

Entities:  

Keywords:  automatic construction; depression detection; depression diagnosis; depression lexicon; domain-specific lexicon; label propagation; social media

Year:  2020        PMID: 32574151     DOI: 10.2196/17650

Source DB:  PubMed          Journal:  JMIR Med Inform


  3 in total

1.  Health Communication through Positive and Solidarity Messages Amid the COVID-19 Pandemic: Automated Content Analysis of Facebook Uses.

Authors:  Angela Chang; Xuechang Xian; Matthew Tingchi Liu; Xinshu Zhao
Journal:  Int J Environ Res Public Health       Date:  2022-05-19       Impact factor: 4.614

2.  Developmental Trend of Subjective Well-Being of Weibo Users During COVID-19: Online Text Analysis Based on Machine Learning Method.

Authors:  Yingying Han; Wenhao Pan; Jinjin Li; Ting Zhang; Qiang Zhang; Emily Zhang
Journal:  Front Psychol       Date:  2022-01-06

3.  Psychological Analysis for Depression Detection from Social Networking Sites.

Authors:  Sonam Gupta; Lipika Goel; Arjun Singh; Ajay Prasad; Mohammad Aman Ullah
Journal:  Comput Intell Neurosci       Date:  2022-04-06
  3 in total

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