Item does not contain fulltextA mental healthcare system in which the scarce resources are equitably and efficiently allocated, benefits from a predictive model about expected service use. The skewness in service use is a challenge for such models. In this study, we applied a machine learning approach to forecast expected service use, as a starting point for agreements between financiers and suppliers of mental healthcare. This study used administrative data from a large mental healthcare organization in the Netherlands. A training set was selected using records from 2017 (N = 10,911), and a test set was selected using records from 2018 (N = 10,201). A baseline model and three random forest models were created from different types of input ...
Background Coercion in psychiatry is a controversial issue. Identifying its predictors and their int...
Background The Netherlands is currently investigating the feasibility of moving from fee-for-service...
Presented at Intelligent Systems Conference, London, 2016.SummaryThe paper avails of machine learnin...
A mental healthcare system in which the scarce resources are equitably and efficiently allocated, be...
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...
BACKGROUND: Predicting which treatment will work for which patient in mental health care remains a c...
Background: It remains a challenge to predict which treatment will work for which patient in mental ...
Healthcare organizations are forced to cope with a growing demand for healthcare and an increase in ...
Aim – To develop predictive models to allocate patients into frequent and low service users groups w...
AIM: To develop predictive models to allocate patients into frequent and low service users groups wi...
The timely identification of patients who are at risk of a mental health crisis can lead to improved...
Mental health problems are an independent predictor of increased healthcare utilization. We created ...
Background: The density of information in digital health records offers new potential opportunities...
Background Coercion in psychiatry is a controversial issue. Identifying its predictors and their int...
Background The Netherlands is currently investigating the feasibility of moving from fee-for-service...
Presented at Intelligent Systems Conference, London, 2016.SummaryThe paper avails of machine learnin...
A mental healthcare system in which the scarce resources are equitably and efficiently allocated, be...
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...
BACKGROUND: Predicting which treatment will work for which patient in mental health care remains a c...
Background: It remains a challenge to predict which treatment will work for which patient in mental ...
Healthcare organizations are forced to cope with a growing demand for healthcare and an increase in ...
Aim – To develop predictive models to allocate patients into frequent and low service users groups w...
AIM: To develop predictive models to allocate patients into frequent and low service users groups wi...
The timely identification of patients who are at risk of a mental health crisis can lead to improved...
Mental health problems are an independent predictor of increased healthcare utilization. We created ...
Background: The density of information in digital health records offers new potential opportunities...
Background Coercion in psychiatry is a controversial issue. Identifying its predictors and their int...
Background The Netherlands is currently investigating the feasibility of moving from fee-for-service...
Presented at Intelligent Systems Conference, London, 2016.SummaryThe paper avails of machine learnin...