Predicting a patient's hospital length of stay (LoS) can help manage staffing. In this paper, we explore LoS prediction for a large group of patients admitted non-electively. We use information available at admission, including demographics, acute and long-term diagnoses and physiological tests results. Data were extracted from the electronic health records (EHR), so that the LoS prediction would not require additional data entry. Although the data can be accessed, the system does not present a unified view of the data for one patient: to resolve this we designed a process of cleaning and combining data for each patient. The data was used to fit semi-parametric, parametric and competing outcomes survival models. All models performed similar...
2018-04-16To investigate whether predicting factors can be identified that significantly affect hosp...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...
The primary objective of hospital managers is to establish appropriate healthcare planning and organ...
The primary objective of hospital managers is to establish appropriate healthcare planning and organ...
Abstract Background Prediction of length of stay (LOS) at admission time can provide physicians and ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
2018-04-16To investigate whether predicting factors can be identified that significantly affect hosp...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...
The primary objective of hospital managers is to establish appropriate healthcare planning and organ...
The primary objective of hospital managers is to establish appropriate healthcare planning and organ...
Abstract Background Prediction of length of stay (LOS) at admission time can provide physicians and ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
International audienceObjective: This study aimed to assess the performance improvement for machine ...
Objective: To develop a predictive model for real-time predictions of length of stay, mortality, and...
2018-04-16To investigate whether predicting factors can be identified that significantly affect hosp...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...
Hospital length of stay of patients is a crucial factor for the effective planning and management of...