BackgroundTrauma has long been considered unpredictable. Artificial neural networks (ANN) have recently shown the ability to predict admission volume, acuity, and operative needs at a single trauma center with very high reliability. This model has not been tested in a multicenter model with differing climate and geography. We hypothesize that an ANN can accurately predict trauma admission volume, penetrating trauma admissions, and mean Injury Severity Score (ISS) with a high degree of reliability across multiple trauma centers.MethodsThree years of admission data were collected from five geographically distinct US Level I trauma centers. Patients with incomplete data, pediatric patients, and primary thermal injuries were excluded. Daily num...
Background: The Braden Scale is commonly used to determine Hospital-Acquired Pressure Injuries (HAPI...
Background The use of machine learning techniques to predict diseases outcomes has grown significant...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...
Abstract. Complications during treatment of seriously injured trauma patients cause an increase in m...
Objective: To evaluate the efficacy of artificial neural networks in categorizing pediatric trauma p...
Background: In recent years, outcome prediction models using artificial neural network and multivari...
wpofhal @ usamail.usouthal.edu Critical care providers are faced with resource shortages and must fi...
Trauma audit is intended to develop effective care for injured patients through process and outcome ...
choose treatment at Scene or a “scoop and run ” approach. The latter requires clinically trained per...
Background Providing optimal care for trauma, the leading cause of death for young adults, remains a...
Trauma, a term used in medicine to describe a physical injury, is believed to be one of the major c...
Outcome-based therapy is becoming the standard for assessing patient care efficacy. This study exami...
Abstract Background Traumatic Brain Injury (TBI) is a...
Application of neural networks and sensitivity analysis to improved prediction of trauma surviva
Background The development of artificial intelligence (AI), machine learning (ML) and deep learning ...
Background: The Braden Scale is commonly used to determine Hospital-Acquired Pressure Injuries (HAPI...
Background The use of machine learning techniques to predict diseases outcomes has grown significant...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...
Abstract. Complications during treatment of seriously injured trauma patients cause an increase in m...
Objective: To evaluate the efficacy of artificial neural networks in categorizing pediatric trauma p...
Background: In recent years, outcome prediction models using artificial neural network and multivari...
wpofhal @ usamail.usouthal.edu Critical care providers are faced with resource shortages and must fi...
Trauma audit is intended to develop effective care for injured patients through process and outcome ...
choose treatment at Scene or a “scoop and run ” approach. The latter requires clinically trained per...
Background Providing optimal care for trauma, the leading cause of death for young adults, remains a...
Trauma, a term used in medicine to describe a physical injury, is believed to be one of the major c...
Outcome-based therapy is becoming the standard for assessing patient care efficacy. This study exami...
Abstract Background Traumatic Brain Injury (TBI) is a...
Application of neural networks and sensitivity analysis to improved prediction of trauma surviva
Background The development of artificial intelligence (AI), machine learning (ML) and deep learning ...
Background: The Braden Scale is commonly used to determine Hospital-Acquired Pressure Injuries (HAPI...
Background The use of machine learning techniques to predict diseases outcomes has grown significant...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...