ABSTRACT IMPACT: A machine learning approach using electronic health records can combine descriptive, population-level factors of pressure injury outcomes. OBJECTIVES/GOALS: Pressure injuries cause 60,000 deaths and cost $26 billion annually in the US, but prevention is laborious. We used clinical data to develop a machine learning algorithm for predicting pressure injury risk and prescribe the timing of intervention to help clinicians balance competing priorities. METHODS/STUDY POPULATION: We obtained 94,745 electronic health records with 7,000 predictors to calibrate a predictive algorithm of pressure injury risk. Machine learning was used to mine features predicting changes in pressure injury risk; random forests outperformed neural netw...
peer reviewed[en] PURPOSE: Injuries are common in sports and can have significant physical, psycholo...
Abstract Background We develop predictive models enabling clinicians to better understand and explor...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
Abstract Background Hospital-acquired pressure injuri...
Background Hospital-acquired pressure injuries are a serious problem among critical care patients. S...
Background: The Braden Scale is commonly used to determine Hospital-Acquired Pressure Injuries (HAPI...
Background Pressure injuries are an important problem in hospital care. Detecting the population at ...
Pressure ulcers are associated with significant morbidity, resulting in a decreased quality of life ...
To effectively manage patients of different vulnerabilities to falls and pressure injury entails und...
BackgroundDespite decades of research, pressure injuries continue to be a source of significant pain...
ObjectiveMachine learning techniques have demonstrated superior discrimination compared to conventio...
BackgroundCurrent approaches to predict cardiovascular risk fail to identify many people who would b...
Intensive care for patients with traumatic brain injury (TBI) aims to optimize intracranial pressure...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
BACKGROUND:Pythia is an automated, clinically curated surgical data pipeline and repository housing ...
peer reviewed[en] PURPOSE: Injuries are common in sports and can have significant physical, psycholo...
Abstract Background We develop predictive models enabling clinicians to better understand and explor...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
Abstract Background Hospital-acquired pressure injuri...
Background Hospital-acquired pressure injuries are a serious problem among critical care patients. S...
Background: The Braden Scale is commonly used to determine Hospital-Acquired Pressure Injuries (HAPI...
Background Pressure injuries are an important problem in hospital care. Detecting the population at ...
Pressure ulcers are associated with significant morbidity, resulting in a decreased quality of life ...
To effectively manage patients of different vulnerabilities to falls and pressure injury entails und...
BackgroundDespite decades of research, pressure injuries continue to be a source of significant pain...
ObjectiveMachine learning techniques have demonstrated superior discrimination compared to conventio...
BackgroundCurrent approaches to predict cardiovascular risk fail to identify many people who would b...
Intensive care for patients with traumatic brain injury (TBI) aims to optimize intracranial pressure...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
BACKGROUND:Pythia is an automated, clinically curated surgical data pipeline and repository housing ...
peer reviewed[en] PURPOSE: Injuries are common in sports and can have significant physical, psycholo...
Abstract Background We develop predictive models enabling clinicians to better understand and explor...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...