Classification and prediction of suicide attempts in high-risk groups is important for preventing suicide. The purpose of this study was to investigate whether the information from multiple clinical scales has classification power for identifying actual suicide attempts. Patients with depression and anxiety disorders (N = 573) were included, and each participant completed 31 self-report psychiatric scales and questionnaires about their history of suicide attempts. We then trained an artificial neural network classifier with 41 variables (31 psychiatric scales and 10 sociodemographic elements) and ranked the contribution of each variable for the classification of suicide attempts. To evaluate the clinical applicability of our model, we measu...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
Knowledge-aware Assessment of Severity of Suicide Risk for Early Intervention Mental health illness...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Predicting future suicide attempts is a challenging area for psychiatrists. Even well-established in...
Suicide is the tenth leading cause of death in the United States (US). An early-warning system (EWS)...
Objective: A growing body of evidence has put forward clinical risk factors associated with patients...
Suicide is listed in the top ten causes of death in Taiwan. Previous studies have pointed out that p...
OBJECTIVE: This study explores the prediction of near-term suicidal behavior using machine learning ...
Background: The predictive accuracy of suicidal behaviour has not improved over the last decades. We...
Introduction Every year ~800,000 people die by suicide worldwide. The pathway to suicide is mediated...
Identifying predictors of suicide attempts is critical in intervention and prevention efforts, yet f...
Mental health illness such as depression is a significant risk factor for suicide ideation, behavior...
Background: To date, our ability to accurately identify patients at high risk from suicidal behaviou...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
Knowledge-aware Assessment of Severity of Suicide Risk for Early Intervention Mental health illness...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Predicting future suicide attempts is a challenging area for psychiatrists. Even well-established in...
Suicide is the tenth leading cause of death in the United States (US). An early-warning system (EWS)...
Objective: A growing body of evidence has put forward clinical risk factors associated with patients...
Suicide is listed in the top ten causes of death in Taiwan. Previous studies have pointed out that p...
OBJECTIVE: This study explores the prediction of near-term suicidal behavior using machine learning ...
Background: The predictive accuracy of suicidal behaviour has not improved over the last decades. We...
Introduction Every year ~800,000 people die by suicide worldwide. The pathway to suicide is mediated...
Identifying predictors of suicide attempts is critical in intervention and prevention efforts, yet f...
Mental health illness such as depression is a significant risk factor for suicide ideation, behavior...
Background: To date, our ability to accurately identify patients at high risk from suicidal behaviou...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
Knowledge-aware Assessment of Severity of Suicide Risk for Early Intervention Mental health illness...