SBBD

Paper Registration

1

Select Book

2

Select Paper

3

Fill in paper information

4

Congratulations

Fill in your paper information

English Information

(*) To change the order drag the item to the new position.

Authors
# Name
1 Pedro Henrique Rodrigues da Silva(pedro.silva.1429338@sga.pucminas.br)
2 Luis Zarate(zarate@pucminas.br)

(*) To change the order drag the item to the new position.

Reference
# Reference
1 Barros, M. B. d. A. and et al. (2021). Association between health behaviors and depression: findings from the 2019 brazilian national health survey. Revista Brasileira de Epidemiologia, 24 (suppl 2):e210010.
2 Batista, H. M. C. d., Paim, A. B., Siqueira, B. S., Ebecken, N. F. F., and Dias, A. C. (2021). Fatores que podem desencadear depressão: uma aplicação do aprendizado de máquina aos dados da pesquisa nacional de saúde no brasil. P2P E INOVAÇÃO, 7:164–185.
3 Beck, A. T., Rush, A. J., Shaw, B. F., and Emery, G. (1979). Cognitive therapy of depression. Guilford press.
4 Beck, A. T., Ward, C. H., Mendelson, M., Mock, J., and Erbaugh, J. (1961). An inventory for measuring depression. Archives of general psychiatry, 4(6):561–571.
5 Dondena, L. M., Ferretti, E., Maragoudakis, M., Sapino, M., and Errecalde, M. L. (2017). Predicting depression: a comparative study of machine learning approaches based on language usage. Cuadernos de Neuropsicologia, 11:42–54.
6 Fiske, A., Wetherell, J. L., and Gatz, M. (2009). Depression in older adults. Annual Review of Clinical Psychology, 5:363–389.
7 Kendler, K. S., Gatz, M., Gardner, C. O., and Pedersen, N. L. (2006). A swedish national twin study of lifetime major depression. American Journal of Psychiatry, 163(1):109–114.
8 Kessler, R. C., Davis, C. G., and Kendler, K. S. (1995). Childhood adversity and adult psychiatric disorder in the us national comorbidity survey. Psychological medicine, 25(1):51–67.
9 Kuehner, C. (2017). Gender differences in unipolar depression: an update of epidemiological findings and possible explanations. Acta Psychiatrica Scandinavica, 95(3):163–174.
10 Lai, H. M. X., Cleary, M., Sitharthan, T., and Hunt, G. E. (2015). Prevalence of comorbid substance use, anxiety and mood disorders in epidemiological surveys, 1990–2014: A systematic review and meta-analysis. Drug and alcohol dependence, 154:1–13.
11 Liu, Y., Pu, C., Xia, S., Deng, D., Wang, X., and Li, M. (2022). Machine learning approaches for diagnosing depression using eeg: A review. Transl Neurosci, 13(1):224–235.
12 Lorant, V., Deliège, D., Eaton, W., Robert, A., Philippot, P., and Ansseau, M. (2003). Socioeconomic inequalities in depression: a meta-analysis. American Journal of Epidemiology, 157(2):98–112.
13 Loyola-González, O. (2019). Black-box vs. white-box: Understanding their advantages and weaknesses from a practical point of view. IEEE Access, 7:154096–154113.
14 Luppino, F. S., deWit, L. M., Bouvy, P. F., Stijnen, T., Cuijpers, P., Penninx, B.W., and Zitman, F. G. (2010). Overweight, obesity, and depression: a systematic review and meta-analysis of longitudinal studies. Archives of general psychiatry, 67(3):220–229.
15 MS-BRASIL (2020). Ministério da saúde: A saúde mental no brasil: Indicadores de morbidade.
16 Skogen, J. C., Harvey, S. B., Henderson, M., Stordal, E., Mykletun, A., and Overland, S. (2014). Anxiety and depression among abstainers and low-level alcohol consumers: The nord-trondelag health study. Addiction, 109(2):269–277.
17 Smith, K. J., Victor, C., and Bartholomew, J. (2006). Factors associated with the self-reported health status of older people in the united kingdom. Ageing society, 26(4):607–627.
18 Stansfeld, S. and Candy, B. (2006). Psychosocial work environment and mental health—a meta-analytic review. Scandinavian journal of work, environment health, 32(6):443–462.
19 Virtanen, M., Stansfeld, S. A., Fuhrer, R., and Ferrie, J. E. (2018). Overtime work as a predictor of major depressive episode: a 5-year follow-up of the whitehall ii study. PLoS One, 13(8):e0202224.
20 Witten, I. H., Frank, E., and Hall, M. A. (2016). Data mining: practical machine learning tools and techniques. Morgan Kaufmann.
21 Zarate, L., Petrocchi, B., Dias Maia, C., Felix, C., and Gomes, M. P. (2023). Capto - a method for understanding problem domains for data science projects: Capto - um método para entendimento de domínio de problema para projetos em ciência de dados. Concilium, 23(15):922–941.