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Automatic Depression Prediction Using Internet Traffic Characteristics on Smartphones.
Yue, Chaoqun; Ware, Shweta; Morillo, Reynaldo; Lu, Jin; Shang, Chao; Bi, Jinbo; Kamath, Jayesh; Russell, Alexander; Bamis, Athanasios; Wang, Bing.
Afiliação
  • Yue C; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Ware S; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Morillo R; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Lu J; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Shang C; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Bi J; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Kamath J; University of Connecticut Health Center, 263 Farmington Avenue, Farmington, CT 06030, USA.
  • Russell A; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
  • Bamis A; Seldera LLC, USA.
  • Wang B; Department of Computer Science & Engineering, University of Connecticut, 371 Fairfield Way, Unit 4155, Storrs, 06269, CT, USA.
Smart Health (Amst) ; 182020 Nov.
Article em En | MEDLINE | ID: mdl-33043105
ABSTRACT
Depression is a serious mental health problem. Recently, researchers have proposed novel approaches that use sensing data collected passively on smartphones for automatic depression screening. While these studies have explored several types of sensing data (e.g., location, activity, conversation), none of them has leveraged Internet traffic of smartphones, which can be collected with little energy consumption and the data is insensitive to phone hardware. In this paper, we explore using coarse-grained meta-data of Internet traffic on smartphones for depression screening. We develop techniques to identify Internet usage sessions (i.e., time periods when a user is online) and extract a novel set of features based on usage sessions from the Internet traffic meta-data. Our results demonstrate that Internet usage features can reflect the different behavioral characteristics between depressed and non-depressed participants, confirming findings in psychological sciences, which have relied on surveys or questionnaires instead of real Internet traffic as in our study. Furthermore, we develop machine learning based prediction models that use these features to predict depression. Our evaluation shows that Internet usage features can be used for effective depression prediction, leading to F 1 score as high as 0.80.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies / Risk_factors_studies Idioma: En Revista: Smart Health (Amst) Ano de publicação: 2020 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies / Risk_factors_studies Idioma: En Revista: Smart Health (Amst) Ano de publicação: 2020 Tipo de documento: Article País de afiliação: Estados Unidos
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