Aim: Although unplanned admissions to the intensive care unit (ICU) are associated with poorer prognoses, there is no published prognostic tool available for predicting this risk in an individual patient. We developed a nomogram for calculating the individualised absolute risk of unplanned ICU admission during a hospital stay. Method: Hospital administrative data from a large district hospital of consecutive admissions from 1 January 2000 to 31 December 2006 of aged over 14 years was used. Patient data was extracted from 94,482 hospital admissions consisted of demographic and clinical variables, including diagnostic categories, types of admission and time and day of admission. Multivariate logistic regression coefficients were used to devel...
BackgroundReducing unplanned rehospitalizations is one of the priorities of health care policies in ...
Background Intensive care unit (ICU) survivors experience high levels of morbidity after hospital di...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Background and aims: Unplanned admission to an intensive care unit (ICU) is associated with high mor...
BACKGROUND: Readmission to intensive care during the same hospital stay has been associated with a g...
Background: Readmission to intensive care during the same hospital stay has been associated with a g...
Abstract Background Failure to promptly identify deterioration in hospitalised patients is associate...
Background. We describe a nomogram to explain an Acute Illness Severity model, derived from emergenc...
Introductionandnbsp;Traditional early warning scores (EWSs) use vital sign derangements to detect cl...
BackgroundOne-fifth of COVID-19 patients are seriously and critically ill cases and have a worse pro...
ObjectiveTo develop and validate an interactive nomogram to predict healthcare-associated infections...
Background We have developed the Hospital Alerting Via Electronic Noticeboard (HAVEN) which aims to ...
BACKGROUND: Multiple predictive scores using Electronic Patient Record data have been developed for ...
BackgroundReducing unplanned rehospitalizations is one of the priorities of health care policies in ...
Objective: To predict the in-hospital incidence of acute respiratory distress syndrome (ARDS) in COV...
BackgroundReducing unplanned rehospitalizations is one of the priorities of health care policies in ...
Background Intensive care unit (ICU) survivors experience high levels of morbidity after hospital di...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...
Background and aims: Unplanned admission to an intensive care unit (ICU) is associated with high mor...
BACKGROUND: Readmission to intensive care during the same hospital stay has been associated with a g...
Background: Readmission to intensive care during the same hospital stay has been associated with a g...
Abstract Background Failure to promptly identify deterioration in hospitalised patients is associate...
Background. We describe a nomogram to explain an Acute Illness Severity model, derived from emergenc...
Introductionandnbsp;Traditional early warning scores (EWSs) use vital sign derangements to detect cl...
BackgroundOne-fifth of COVID-19 patients are seriously and critically ill cases and have a worse pro...
ObjectiveTo develop and validate an interactive nomogram to predict healthcare-associated infections...
Background We have developed the Hospital Alerting Via Electronic Noticeboard (HAVEN) which aims to ...
BACKGROUND: Multiple predictive scores using Electronic Patient Record data have been developed for ...
BackgroundReducing unplanned rehospitalizations is one of the priorities of health care policies in ...
Objective: To predict the in-hospital incidence of acute respiratory distress syndrome (ARDS) in COV...
BackgroundReducing unplanned rehospitalizations is one of the priorities of health care policies in ...
Background Intensive care unit (ICU) survivors experience high levels of morbidity after hospital di...
Objective: To develop a predictive model for identifying patients at high risk of all-cause unplanne...