Mental health problems are an independent predictor of increased healthcare utilization. We created random forest classifiers for predicting two outcomes following a patient’s first behavioral health encounter: decreased utilization by any amount (AUROC 0.74) and ultra-high absolute utilization (AUROC 0.88). These models may be used for clinical decision support by referring providers, to automatically detect patients who may benefit from referral, for cost management, or for risk/protection factor analysis
Recent developments in mobile technology, sensor devices, and artificial intelligence have created n...
Introduction A growing variety of diverse data sources is emerging to better inform health care del...
Zoning classification is a rating mechanism, which uses a three-tier color coding to indicate percei...
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...
A mental healthcare system in which the scarce resources are equitably and efficiently allocated, be...
Background: The density of information in digital health records offers new potential opportunities...
Care management activities seek to reduce healthcare cost and improve patient outcomes. Identifying...
New computational methods have emerged through science and technology to support the diagnosis of me...
BACKGROUND: Predicting which treatment will work for which patient in mental health care remains a c...
Readmission is a major source of cost for healthcare systems. Hospital-specific readmission rates a...
Rationale, aims and objectives: Results from prediction studies are often of limited value because p...
Background: It remains a challenge to predict which treatment will work for which patient in mental ...
Rationale, aims and objectives: Results from prediction studies are often of limited value because p...
The electronic health record (EHR) documents the patient’s medical history, with information such as...
Recent developments in mobile technology, sensor devices, and artificial intelligence have created n...
Introduction A growing variety of diverse data sources is emerging to better inform health care del...
Zoning classification is a rating mechanism, which uses a three-tier color coding to indicate percei...
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...
A mental healthcare system in which the scarce resources are equitably and efficiently allocated, be...
Background: The density of information in digital health records offers new potential opportunities...
Care management activities seek to reduce healthcare cost and improve patient outcomes. Identifying...
New computational methods have emerged through science and technology to support the diagnosis of me...
BACKGROUND: Predicting which treatment will work for which patient in mental health care remains a c...
Readmission is a major source of cost for healthcare systems. Hospital-specific readmission rates a...
Rationale, aims and objectives: Results from prediction studies are often of limited value because p...
Background: It remains a challenge to predict which treatment will work for which patient in mental ...
Rationale, aims and objectives: Results from prediction studies are often of limited value because p...
The electronic health record (EHR) documents the patient’s medical history, with information such as...
Recent developments in mobile technology, sensor devices, and artificial intelligence have created n...
Introduction A growing variety of diverse data sources is emerging to better inform health care del...
Zoning classification is a rating mechanism, which uses a three-tier color coding to indicate percei...