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. 2020 Nov 9;44(12):205.
doi: 10.1007/s10916-020-01669-5.

Suicide Risk Assessment Using Machine Learning and Social Networks: a Scoping Review

Affiliations

Suicide Risk Assessment Using Machine Learning and Social Networks: a Scoping Review

Gema Castillo-Sánchez et al. J Med Syst. .

Abstract

According to the World Health Organization (WHO) report in 2016, around 800,000 of individuals have committed suicide. Moreover, suicide is the second cause of unnatural death in people between 15 and 29 years. This paper reviews state of the art on the literature concerning the use of machine learning methods for suicide detection on social networks. Consequently, the objectives, data collection techniques, development process and the validation metrics used for suicide detection on social networks are analyzed. The authors conducted a scoping review using the methodology proposed by Arksey and O'Malley et al. and the PRISMA protocol was adopted to select the relevant studies. This scoping review aims to identify the machine learning techniques used to predict suicide risk based on information posted on social networks. The databases used are PubMed, Science Direct, IEEE Xplore and Web of Science. In total, 50% of the included studies (8/16) report explicitly the use of data mining techniques for feature extraction, feature detection or entity identification. The most commonly reported method was the Linguistic Inquiry and Word Count (4/8, 50%), followed by Latent Dirichlet Analysis, Latent Semantic Analysis, and Word2vec (2/8, 25%). Non-negative Matrix Factorization and Principal Component Analysis were used only in one of the included studies (12.5%). In total, 3 out of 8 research papers (37.5%) combined more than one of those techniques. Supported Vector Machine was implemented in 10 out of the 16 included studies (62.5%). Finally, 75% of the analyzed studies implement machine learning-based models using Python.

Keywords: Algorithm; Data mining; Machine learning; Natural processing language; Sentiment analysis; Social networks; Suicide.

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Conflict of interest statement

The authors declare that they have no conflict of interest.

Figures

Fig. 1
Fig. 1
Flow diagram of the scoping review process
Fig. 2
Fig. 2
The distribution of the included studies according to the year of publication

References

    1. World Health Organization: WHO | Suicide data, http://www.who.int/mental_health/prevention/suicide/suicideprevent/en/, last accessed 2020/07/22.
    1. Franco-Martín, M.A., Muñoz-Sánchez, J.L., Sainz-de-Abajo, B., Castillo-Sánchez, G., Hamrioui, S., and de la Torre-Díez, I., A systematic literature review of technologies for suicidal behavior prevention. J. Med. Syst. 2018. 10.1007/s10916-018-0926-5. - PubMed
    1. Instituto Nacional de Estadistica: España en cifras 2017, 2017.
    1. Turecki, G., Brent, D.A., Gunnell, D., O’Connor, R.C., Oquendo, M.A., Pirkis, J., and Stanley, B.H., Suicide and suicide risk. Nat. Rev. Dis. Primers. 5, 1–22 2019. - PubMed
    1. Cheng, A.T.A., Chen, T.H.H., Chen, C.C., and Jenkins, R.: Psychosocial and psychiatric risk factors for suicide: Case-control psychological autopsy study. Br. J. Psychiatry 177, 360–365 (2000). 10.1192/bjp.177.4.360. - PubMed

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