Hospitals are increasingly compared based on clinical outcomes adjusted for severity of illness. Multiple methods exist to adjust for differences between patients. The challenge for consumers of this information, both the public and healthcare providers, is interpreting differences in risk adjustment models particularly when models differ in their use of administrative and physiologic data. We set to examine how administrative and physiologic models compare to each when applied to critically ill patients.We prospectively abstracted variables for a physiologic and administrative model of mortality from two intensive care units in the United States. Predicted mortality was compared through the Pearsons Product coefficient and Bland-Altman ana...
OBJECTIVE: To determine whether assessments of illness severity, defined as risk for in-hospital dea...
Objective measures of clinical performance are needed before economics or Benchmarking can successfu...
OBJECTIVE: To see whether predictions of patients, likelihood of dying in-hospital differed among se...
Background: Hospitals are increasingly compared based on clinical outcomes adjusted for severity of ...
Hospital mortality statistics derived from administrative data may not adjust adequately for patient...
To study the development of mortality in intensive care over time or compare different departments, ...
OBJECTIVES: To compare ICU performance using standardized mortality ratios generated by the Acute Ph...
OBJECTIVE: We aimed to determine whether a sepsis risk-adjustment model that uses only administrativ...
OBJECTIVE: To examine the accuracy of the original Mortality Probability Admission Model III, ICU Ou...
Mortality prediction models generally require clinical data or are derived from information coded at...
OBJECTIVES: This research examined whether judgments about a hospital\u27s risk-adjusted mortality p...
BACKGROUND: Mortality prediction models generally require clinical data or are derived from informat...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Abstract Background Given the increased attention to sepsis at the population level there is a need ...
Intensive care unit (ICU) prognostic models can be used to predict mortality outcomes for criticall...
OBJECTIVE: To determine whether assessments of illness severity, defined as risk for in-hospital dea...
Objective measures of clinical performance are needed before economics or Benchmarking can successfu...
OBJECTIVE: To see whether predictions of patients, likelihood of dying in-hospital differed among se...
Background: Hospitals are increasingly compared based on clinical outcomes adjusted for severity of ...
Hospital mortality statistics derived from administrative data may not adjust adequately for patient...
To study the development of mortality in intensive care over time or compare different departments, ...
OBJECTIVES: To compare ICU performance using standardized mortality ratios generated by the Acute Ph...
OBJECTIVE: We aimed to determine whether a sepsis risk-adjustment model that uses only administrativ...
OBJECTIVE: To examine the accuracy of the original Mortality Probability Admission Model III, ICU Ou...
Mortality prediction models generally require clinical data or are derived from information coded at...
OBJECTIVES: This research examined whether judgments about a hospital\u27s risk-adjusted mortality p...
BACKGROUND: Mortality prediction models generally require clinical data or are derived from informat...
Accurate mortality prediction in intensive care units (ICUs) allows for the risk adjustment of study...
Abstract Background Given the increased attention to sepsis at the population level there is a need ...
Intensive care unit (ICU) prognostic models can be used to predict mortality outcomes for criticall...
OBJECTIVE: To determine whether assessments of illness severity, defined as risk for in-hospital dea...
Objective measures of clinical performance are needed before economics or Benchmarking can successfu...
OBJECTIVE: To see whether predictions of patients, likelihood of dying in-hospital differed among se...