Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies
  1. Home
  2. Machine Learning-based Early Warning Model For Adolescent Mental Health Risk Using The P Factor.
  1. Home
  2. Machine Learning-based Early Warning Model For Adolescent Mental Health Risk Using The P Factor.

Related Concept Videos

Factors Affecting Illness01:18

Factors Affecting Illness

When a person's physical, emotional, intellectual, social development or spiritual functioning is compromised, this deviation from a healthy normal state is called illness. Illness creates stress that in turn harms individuals. Irritation, anger, denial, hopelessness, and fear are behavioral and emotional changes an individual experiences in the phases of illness. A variety of factors influence a person's health and well-being.
For instance, risk factors are connected to illness, disability,...

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

CEMs-SELEX: DNAzyme-powered de novo biomarker discovery and noninvasive cancer diagnosis.

Science advances·2026
Same author

Impaired pulmonary function associated with subclinical myocardial injury in primary Sjögren's syndrome: a preliminary cardiac magnetic resonance study.

Clinical rheumatology·2026
Same author

Identifying a cancer therapeutic target: Cell-SELEX identifies a membrane protein for aptamer-mediated growth suppression.

Proceedings of the National Academy of Sciences of the United States of America·2026
Same author

Advances in NP shapes and their applications in cancer therapy.

RSC advances·2026
Same author

Palladium-catalyzed difluoromethylcarbonylation of aryl iodides.

Organic & biomolecular chemistry·2026
Same author

RBM15/IGF2BP3 promotes immune escape in bladder cancer by enhancing m6A modification of PFKFB4.

International journal of biological macromolecules·2026
Same journal

Individualized EEG functional connectivity predicts clinical symptoms in ADHD, dyslexia, and their comorbidity.

Journal of child psychology and psychiatry, and allied disciplines·2026
Same journal

Mechanism-based subtypes of problematic use of the internet and corresponding neurobehavioral characteristics among children and adolescents.

Journal of child psychology and psychiatry, and allied disciplines·2026
Same journal

Personally meaningful life events from adolescence to young adulthood: a longitudinal natural language processing analysis.

Journal of child psychology and psychiatry, and allied disciplines·2026
Same journal

A double-blind randomized controlled trial of personalized upper-alpha neurofeedback in children with ADHD.

Journal of child psychology and psychiatry, and allied disciplines·2026
Same journal

Self-administered single-session interventions for mental health in young people: A systematic review and meta-analysis.

Journal of child psychology and psychiatry, and allied disciplines·2026
Same journal

Managing the consequences of rising mental-health awareness-a commentary on Marcotulli et al. (2025).

Journal of child psychology and psychiatry, and allied disciplines·2026
See all related articles

Related Experiment Video

Implementation of a Real-Time Psychosis Risk Detection and Alerting System Based on Electronic Health Records using CogStack
07:31

Implementation of a Real-Time Psychosis Risk Detection and Alerting System Based on Electronic Health Records using CogStack

Published on: May 15, 2020

Machine learning-based early warning model for adolescent mental health risk using the p factor.

Yunjing Li1, Wenxuan Bian1, Xiaohong Wen1

  • 1School of Psychology, Shanghai Normal University, Shanghai, China.

Journal of Child Psychology and Psychiatry, and Allied Disciplines
|June 18, 2026

View abstract on PubMed

Summary
This summary is machine-generated.

Machine learning effectively identifies at-risk adolescents using a general psychopathology factor (p factor). Poor sleep quality is the strongest predictor, highlighting a key target for early mental health intervention.

Keywords:
Adolescentsmachine learningmental healthp factor

Related Experiment Videos

Implementation of a Real-Time Psychosis Risk Detection and Alerting System Based on Electronic Health Records using CogStack
07:31

Implementation of a Real-Time Psychosis Risk Detection and Alerting System Based on Electronic Health Records using CogStack

Published on: May 15, 2020

Area of Science:

  • Psychiatry
  • Machine Learning
  • Adolescent Health

Background:

  • Accurate identification of high-risk adolescents is crucial for timely mental health interventions.
  • The general factor of psychopathology (p factor) offers a transdiagnostic approach for risk assessment.
  • Ecological systems theory provides a framework for multidimensional risk assessment in adolescents.

Purpose of the Study:

  • To develop and validate a machine learning model for identifying adolescents at high mental health risk.
  • To utilize the transdiagnostic p factor as an outcome for risk prediction.
  • To identify key predictors of mental health risk in adolescents.

Main Methods:

  • Trained and validated machine learning models on data from 5,283 Chinese adolescents, with external validation on 968 participants.
  • Constructed a multidimensional early warning framework with 59 indicators across individual, school, family, and societal domains.
  • Employed Shapley Additive exPlanations (SHAP) to rank predictor importance and identify an optimal feature subset for the XGBoost model.

Main Results:

  • The XGBoost model achieved high performance, with macro F1 scores of 0.73 (internal) and 0.80 (external validation).
  • The final predictive model incorporated 23 key predictors.
  • Sleep quality was identified as the most influential predictor, followed by repetitive negative thinking, interpersonal stress, impulsivity, and emotional intensity.

Conclusions:

  • A p-factor-based machine learning model demonstrates significant potential for effectively identifying adolescents at mental health risk.
  • Sleep quality emerges as a critical, modifiable factor for early intervention and prevention strategies in adolescent mental health.
  • The study underscores the utility of transdiagnostic approaches and machine learning in advancing adolescent mental healthcare.