Abstract

The objective of the current study was to build predictive models for suicidal ideation in a sample of children aged 9–10 using features previously implicated in risk among older adolescent and adult populations. This case-control analysis utilized baseline data from the Adolescent Brain and Cognitive Development (ABCD) Study, collected from 21 research sites across the United States (N = 11,369). Several regression and ensemble learning models were compared on their ability to classify individuals with suicidal ideation and/or attempt from healthy controls, as assessed by the Kiddie Schedule for Affective Disorders and Schizophrenia–Present and Lifetime Version. When comparing control participants (mean age: 9.92±0.62 years; 4944 girls [49%]) to participants with suicidal ideation (mean age: 9.89±0.63 years; 451 girls [40%]), both logistic regression with feature selection and elastic net without feature selection predicted suicidal ideation with an AUC of 0.70 (CI 95%: 0.70–0.71). The random forest with feature selection trained to predict suicidal ideation predicted a holdout set of children with a history of suicidal ideation and attempt (mean age: 9.96±0.62 years; 79 girls [41%]) from controls with an AUC of 0.77 (CI 95%: 0.76–0.77). Important features from these models included feelings of loneliness and worthlessness, impulsivity, prodromal psychosis symptoms, and behavioral problems. This investigation provided an unprecedented opportunity to identify suicide risk in youth. The use of machine learning to examine a large number of predictors spanning a variety of domains provides novel insight into transdiagnostic factors important for risk classification.

Highlights

  • Prevalence of youth suicide is a serious public health concern, prompting substantial research attention in recent years

  • Evidence suggests that suicidal thoughts and behaviors (STBs) begin to emerge much earlier in development [5], it remains unclear to what extent risk factors identified in adolescents and adults generalize to preadolescent children [6]

  • Model training after feature selection significantly improved the performance of logistic regression and ridge regression in classifying suicidal ideation (SI) from controls (p < 0.001), but did not improve the performance of lasso regression (p = 0.32), elastic net regression (p = 0.57), or random forest (p = 0.67)

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Summary

Introduction

Prevalence of youth suicide is a serious public health concern, prompting substantial research attention in recent years. As of 2017, suicide was the second leading cause of death for individuals between the ages of 10 and 24 [1], and the number of fatalities due to suicide in this youngest age bracket falls below that of several older groups, the prevalence of suicide deaths for 10–14 year-olds has nearly tripled since 2007 [2]. Such an alarming surge in preventable deaths, among youth, highlights the gravity of this issue, as well as the urgent need for better, more innovative risk screening and early intervention strategies. Many symptoms span across diagnostic categories; targeting prevention and intervention efforts at specific symptoms rather than disorders may prove more effective

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