Predicting adolescent depression and anxiety from multi-wave longitudinal data using machine learning

被引:11
|
作者
Hawes, Mariah T. [1 ]
Schwartz, H. Andrew [2 ]
Son, Youngseo [2 ]
Klein, Daniel N. [1 ]
机构
[1] SUNY Stony Brook, Dept Psychol, Stony Brook, NY 11794 USA
[2] SUNY Stony Brook, Dept Comp Sci, Stony Brook, NY 11794 USA
关键词
adolescence; anxiety; depression; longitudinal; machine learning; risk assessment; AGE-OF-ONSET; MAJOR DEPRESSION; PSYCHOSOCIAL OUTCOMES; CLINICAL-PSYCHOLOGY; MENTAL-HEALTH; ALGORITHM; DISORDERS; VALIDATION; RISK; SEVERITY;
D O I
10.1017/S0033291722003452
中图分类号
B849 [应用心理学];
学科分类号
040203 ;
摘要
Background This study leveraged machine learning to evaluate the contribution of information from multiple developmental stages to prospective prediction of depression and anxiety in mid-adolescence. Methods A community sample (N = 374; 53.5% male) of children and their families completed tri-annual assessments across ages 3-15. The feature set included several important risk factors spanning psychopathology, temperament/personality, family environment, life stress, interpersonal relationships, neurocognitive, hormonal, and neural functioning, and parental psychopathology and personality. We used canonical correlation analysis (CCA) to reduce the large feature set to a lower dimensional space while preserving the longitudinal structure of the data. Ablation analysis was conducted to evaluate the relative contributions to prediction of information gathered at different developmental periods and relative to previous disorder status (i.e. age 12 depression or anxiety) and demographics (sex, race, ethnicity). Results CCA components from individual waves predicted age 15 disorder status better than chance across ages 3, 6, 9, and 12 for anxiety and 9 and 12 for depression. Only the components from age 12 for depression, and ages 9 and 12 for anxiety, improved prediction over prior disorder status and demographics. Conclusions These findings suggest that screening for risk of adolescent depression can be successful as early as age 9, while screening for risk of adolescent anxiety can be successful as early as age 3. Assessing additional risk factors at age 12 for depression, and going back to age 9 for anxiety, can improve screening for risk at age 15 beyond knowing standard demographics and disorder history.
引用
收藏
页码:6205 / 6211
页数:7
相关论文
共 50 条
  • [41] Predicting Prenatal Depression and Assessing Model Bias Using Machine Learning Models
    Huang, Yongchao
    Alvernaz, Suzanne
    Kim, Sage J.
    Maki, Pauline
    Dai, Yang
    Bernabe, Beatriz Penalver
    BIOLOGICAL PSYCHIATRY: GLOBAL OPEN SCIENCE, 2024, 4 (06):
  • [42] Predicting anxiety from wholebrain activity patterns to emotional faces in young adults: a machine learning approach
    Portugal, Liana C. L.
    Schrouff, Jessica
    Stiffler, Ricki
    Bertocci, Michele
    Bebko, Genna
    Chase, Henry
    Lockovitch, Jeanette
    Aslam, Harts
    Graur, Simona
    Greenberg, Tsafrir
    Pereira, Mirtes
    Oliveira, Leticia
    Phillips, Mary
    Mourao-Miranda, Janaina
    NEUROIMAGE-CLINICAL, 2019, 23
  • [43] Predicting the language of depression from multivariate twitter data using a feature-rich hybrid deep learning model
    Kour, Harnain
    Gupta, Manoj Kumar
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2022, 34 (24):
  • [44] Resilience as a moderator of the relationship between stress and different symptom dimensions of depression in adolescents with a history of childhood maltreatment: A multi-wave longitudinal study
    Wang, Junyi
    Wang, Tingting
    Cheng, Yuqin
    CHILD ABUSE & NEGLECT, 2024, 154
  • [45] Symptoms of anxiety/depression during the COVID-19 pandemic and associated lockdown in the community: longitudinal data from the TEMPO cohort in France
    Andersen, Astrid Juhl
    Mary-Krause, Murielle
    Bustamante, Joel Jose Herranz
    Heron, Megane
    El Aarbaoui, Tarik
    Melchior, Maria
    BMC PSYCHIATRY, 2021, 21 (01)
  • [46] Neuroticism vulnerability factors of anxiety symptoms in adolescents and early adults: an analysis using the bi-factor model and multi-wave longitudinal model
    He, Yini
    Li, Ang
    Li, Kaixin
    Xiao, Jing
    PEERJ, 2021, 9
  • [47] Predicting suicide attempts in adolescents with longitudinal clinical data and machine learning
    Walsh, Colin G.
    Ribeiro, Jessica D.
    Franklin, Joseph C.
    JOURNAL OF CHILD PSYCHOLOGY AND PSYCHIATRY, 2018, 59 (12) : 1261 - 1270
  • [48] Using machine learning with intensive longitudinal data to predict depression and suicidal ideation among medical interns over time
    Horwitz, Adam G.
    Kentopp, Shane D.
    Cleary, Jennifer
    Ross, Katherine
    Wu, Zhenke
    Sen, Srijan
    Czyz, Ewa K.
    PSYCHOLOGICAL MEDICINE, 2023, 53 (12) : 5778 - 5785
  • [49] Predicting osteoarthritis in adults using statistical data mining and machine learning
    Bertoncelli, Carlo M.
    Altamura, Paola
    Bagui, Sikha
    Bagui, Subhash
    Vieira, Edgar Ramos
    Costantini, Stefania
    Monticone, Marco
    Solla, Federico
    Bertoncelli, Domenico
    THERAPEUTIC ADVANCES IN MUSCULOSKELETAL DISEASE, 2022, 14
  • [50] Predictive modeling of depression and anxiety using electronic health records and a novel machine learning approach with artificial intelligence
    Nemesure, Matthew D.
    Heinz, Michael V.
    Huang, Raphael
    Jacobson, Nicholas C.
    SCIENTIFIC REPORTS, 2021, 11 (01)