When patients leave the hospital for lower levels of care, they experience a risk of adverse events on a daily basis. The advent of value-based purchasing among other major initiatives has led to an increasing emphasis on reducing the occurrences of these post-discharge adverse events. This has spurred the development of new prediction technologies to identify which patients are at risk for an adverse event as well as actions to mitigate those risks. Those actions include pre-discharge and post-discharge interventions to reduce risk. However, traditional prediction models have been developed to support only post-discharge actions; predicting risk of adverse events at the time of discharge only. In this paper we develop an integrated framewo...
Existing studies of hospital readmissions typically focus on specific diagnoses, age groups, dischar...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Hospital readmissions are common, costly, and impose a difficult challenge for hospitals to address ...
Hospital readmissions are common, costly, and impose a difficult challenge for hospitals to address ...
Unplanned readmissions are a popular factor to determine the quality of healthcare services that can...
Abstract: This position paper investigates the problem of 30-day readmission risk prediction and man...
Inpatient discharge planning is a critical decision point in patient care, with implications for the...
Readmission is a major source of cost for healthcare systems. Hospital-specific readmission rates ar...
IMPORTANCE Because effective interventions to reduce hospital readmissions are often expensive to...
This thesis is concerned with developing a predictive risk model to identify patients that are at hi...
Abstract Background Recent US legislation imposes financial penalties on hospitals with excessive pa...
Abstract Background The identification of patients at high risk of unplanned readmission is an impor...
This study aims to identify predictors for patients likely to be readmitted to a hospital within 28 ...
Existing studies of hospital readmissions typically focus on specific diagnoses, age groups, dischar...
Existing studies of hospital readmissions typically focus on specific diagnoses, age groups, dischar...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Hospital readmissions are common, costly, and impose a difficult challenge for hospitals to address ...
Hospital readmissions are common, costly, and impose a difficult challenge for hospitals to address ...
Unplanned readmissions are a popular factor to determine the quality of healthcare services that can...
Abstract: This position paper investigates the problem of 30-day readmission risk prediction and man...
Inpatient discharge planning is a critical decision point in patient care, with implications for the...
Readmission is a major source of cost for healthcare systems. Hospital-specific readmission rates ar...
IMPORTANCE Because effective interventions to reduce hospital readmissions are often expensive to...
This thesis is concerned with developing a predictive risk model to identify patients that are at hi...
Abstract Background Recent US legislation imposes financial penalties on hospitals with excessive pa...
Abstract Background The identification of patients at high risk of unplanned readmission is an impor...
This study aims to identify predictors for patients likely to be readmitted to a hospital within 28 ...
Existing studies of hospital readmissions typically focus on specific diagnoses, age groups, dischar...
Existing studies of hospital readmissions typically focus on specific diagnoses, age groups, dischar...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...