Ontology highlight
ABSTRACT:
SUBMITTER: Rothenberg WA
PROVIDER: S-EPMC10113992 | biostudies-literature | 2023 Aug
REPOSITORIES: biostudies-literature
Rothenberg W Andrew WA Bizzego Andrea A Esposito Gianluca G Lansford Jennifer E JE Al-Hassan Suha M SM Bacchini Dario D Bornstein Marc H MH Chang Lei L Deater-Deckard Kirby K Di Giunta Laura L Dodge Kenneth A KA Gurdal Sevtap S Liu Qin Q Long Qian Q Oburu Paul P Pastorelli Concetta C Skinner Ann T AT Sorbring Emma E Tapanya Sombat S Steinberg Laurence L Tirado Liliana Maria Uribe LMU Yotanyamaneewong Saengduean S Alampay Liane Peña LP
Journal of youth and adolescence 20230419 8
Adolescent mental health problems are rising rapidly around the world. To combat this rise, clinicians and policymakers need to know which risk factors matter most in predicting poor adolescent mental health. Theory-driven research has identified numerous risk factors that predict adolescent mental health problems but has difficulty distilling and replicating these findings. Data-driven machine learning methods can distill risk factors and replicate findings but have difficulty interpreting find ...[more]