Suicide risk prediction models can identify individuals for targeted intervention. Discussions of transparency, explainability, and transportability in machine learning presume complex prediction models with many variables outperform simpler models. We compared random forest, artificial neural network, and ensemble models with 1500 temporally defined predictors to logistic regression models. Data from 25,800,888 mental health visits made by 3,081,420 individuals in 7 health systems were used to train and evaluate suicidal behavior prediction models. Model performance was compared across several measures. All models performed well (area under the receiver operating curve [AUC]: 0.794-0.858). Ensemble models performed best, but improvements o...
The importance of studying suicidal behavior cannot be overstated given the concerning prevalence. D...
OBJECTIVE: This study explores the prediction of near-term suicidal behavior using machine learning ...
The use of machine learning (ML) algorithms to study suicidality has recently been recommended. Our ...
Suicide risk prediction models can identify individuals for targeted intervention. Discussions of tr...
Background: The predictive accuracy of suicidal behaviour has not improved over the last decades. We...
Prediction models assist in stratifying and quantifying an individual's risk of developing a particu...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
Background: Machine learning (ML) is increasingly used to predict suicide deaths but their value for...
BACKGROUND: Few studies report on machine learning models for suicide risk prediction in adolescents...
Suicide is a devastating act in which a person takes their own life. Decades of research into suicid...
Statistical models, including those based on electronic health records, can accurately identify pati...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Background: To date, our ability to accurately identify patients at high risk from suicidal behaviou...
Around 800,000 people worldwide die from suicide every year and it’s the 10th leading cause of death...
OBJECTIVE: The authors aimed to use health records data to examine how the accuracy of statistical m...
The importance of studying suicidal behavior cannot be overstated given the concerning prevalence. D...
OBJECTIVE: This study explores the prediction of near-term suicidal behavior using machine learning ...
The use of machine learning (ML) algorithms to study suicidality has recently been recommended. Our ...
Suicide risk prediction models can identify individuals for targeted intervention. Discussions of tr...
Background: The predictive accuracy of suicidal behaviour has not improved over the last decades. We...
Prediction models assist in stratifying and quantifying an individual's risk of developing a particu...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
Background: Machine learning (ML) is increasingly used to predict suicide deaths but their value for...
BACKGROUND: Few studies report on machine learning models for suicide risk prediction in adolescents...
Suicide is a devastating act in which a person takes their own life. Decades of research into suicid...
Statistical models, including those based on electronic health records, can accurately identify pati...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Background: To date, our ability to accurately identify patients at high risk from suicidal behaviou...
Around 800,000 people worldwide die from suicide every year and it’s the 10th leading cause of death...
OBJECTIVE: The authors aimed to use health records data to examine how the accuracy of statistical m...
The importance of studying suicidal behavior cannot be overstated given the concerning prevalence. D...
OBJECTIVE: This study explores the prediction of near-term suicidal behavior using machine learning ...
The use of machine learning (ML) algorithms to study suicidality has recently been recommended. Our ...