ObjectiveThe rapid proliferation of machine learning research using electronic health records to classify healthcare outcomes offers an opportunity to address the pressing public health problem of adolescent suicidal behavior. We describe the development and evaluation of a machine learning algorithm using natural language processing of electronic health records to identify suicidal behavior among psychiatrically hospitalized adolescents.MethodsAdolescents hospitalized on a psychiatric inpatient unit in a community health system in the northeastern United States were surveyed for history of suicide attempt in the past 12 months. A total of 73 respondents had electronic health records available prior to the index psychiatric admission. Unstr...
<div><p>We developed linguistics-driven prediction models to estimate the risk of suicide. These mod...
Individuals with psychiatric disorders are vulnerable to adverse mental health outcomes following ph...
We developed linguistics-driven prediction models to estimate the risk of suicide. These models were...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
Research into suicide prevention has been hampered by methodological limitations such as low sample ...
Suicide is the second leading cause of death among 25–34 year olds and the third leading cause of de...
Objective: Early identification of individuals who are at risk for suicide is crucial in supporting ...
Electronic Health Records are a vital tool in combating the increasing suicide rate among young adul...
Objective: A growing body of evidence has put forward clinical risk factors associated with patients...
Suicide, an alarming public health, is one of the top 20 problems in the United States that leaves a...
Introduction: Suicidal thoughts and suicide attempts are one of the most prominent public health con...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Natural language processing (NLP) and machine learning were used to predict suicidal ideation and he...
The use of machine learning (ML) algorithms to study suicidality has recently been recommended. Our ...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
<div><p>We developed linguistics-driven prediction models to estimate the risk of suicide. These mod...
Individuals with psychiatric disorders are vulnerable to adverse mental health outcomes following ph...
We developed linguistics-driven prediction models to estimate the risk of suicide. These models were...
ObjectiveThe rapid proliferation of machine learning research using electronic health records to cla...
Research into suicide prevention has been hampered by methodological limitations such as low sample ...
Suicide is the second leading cause of death among 25–34 year olds and the third leading cause of de...
Objective: Early identification of individuals who are at risk for suicide is crucial in supporting ...
Electronic Health Records are a vital tool in combating the increasing suicide rate among young adul...
Objective: A growing body of evidence has put forward clinical risk factors associated with patients...
Suicide, an alarming public health, is one of the top 20 problems in the United States that leaves a...
Introduction: Suicidal thoughts and suicide attempts are one of the most prominent public health con...
BackgroundSuicide is a major public health concern globally. Accurately predicting suicidal behavior...
Natural language processing (NLP) and machine learning were used to predict suicidal ideation and he...
The use of machine learning (ML) algorithms to study suicidality has recently been recommended. Our ...
Background: Suicide is a major public health concern globally. Accurately predicting suicidal behavi...
<div><p>We developed linguistics-driven prediction models to estimate the risk of suicide. These mod...
Individuals with psychiatric disorders are vulnerable to adverse mental health outcomes following ph...
We developed linguistics-driven prediction models to estimate the risk of suicide. These models were...