The timely identification of patients who are at risk of a mental health crisis can lead to improved outcomes and to the mitigation of burdens and costs. However, the high prevalence of mental health problems means that the manual review of complex patient records to make proactive care decisions is not feasible in practice. Therefore, we developed a machine learning model that uses electronic health records to continuously monitor patients for risk of a mental health crisis over a period of 28 days. The model achieves an area under the receiver operating characteristic curve of 0.797 and an area under the precision-recall curve of 0.159, predicting crises with a sensitivity of 58% at a specificity of 85%. A follow-up 6-month prospective st...
Background: The density of information in digital health records offers new potential opportunities...
Life expectancy may be greatly improved by accurately diagnosing mental health issues at an early st...
As the world combats with the outrageous and perilous novel coronavirus, national lockdown has been ...
The timely identification of patients who are at risk of a mental health crisis can lead to improved...
Depression is a common mental health condition that often occurs in association with other chronic i...
Depression is a common mental health condition that often occurs in association with other chronic i...
The main goal of the study was to predict individual patients' future mental healthcare consumption,...
Objective: The main goal of the study was to predict individual patients' future mental healthcare c...
Mental disorders impact the lives of millions of people globally, not only impeding their day-to-day...
Importance: Diverse models have been developed to predict psychosis in patients with clinical high-r...
Abstract A significant minority of individuals develop trauma- and stressor-related disorders (TSRD)...
This study proposes a framework for mining temporal patterns from Electronic Medical Records. A new ...
During the COVID-19 pandemic, an increase in the incidence of psychiatric disorders in the general p...
Background: The density of information in digital health records offers new potential opportunities...
Life expectancy may be greatly improved by accurately diagnosing mental health issues at an early st...
As the world combats with the outrageous and perilous novel coronavirus, national lockdown has been ...
The timely identification of patients who are at risk of a mental health crisis can lead to improved...
Depression is a common mental health condition that often occurs in association with other chronic i...
Depression is a common mental health condition that often occurs in association with other chronic i...
The main goal of the study was to predict individual patients' future mental healthcare consumption,...
Objective: The main goal of the study was to predict individual patients' future mental healthcare c...
Mental disorders impact the lives of millions of people globally, not only impeding their day-to-day...
Importance: Diverse models have been developed to predict psychosis in patients with clinical high-r...
Abstract A significant minority of individuals develop trauma- and stressor-related disorders (TSRD)...
This study proposes a framework for mining temporal patterns from Electronic Medical Records. A new ...
During the COVID-19 pandemic, an increase in the incidence of psychiatric disorders in the general p...
Background: The density of information in digital health records offers new potential opportunities...
Life expectancy may be greatly improved by accurately diagnosing mental health issues at an early st...
As the world combats with the outrageous and perilous novel coronavirus, national lockdown has been ...