Background: Prediction rules for intracranial traumatic findings in patients with minor head injury are designed to reduce the use of computed tomography (CT) without missing patients at risk for complications. This study investigates whether alternative modelling techniques might improve the applicability and simplicity of such prediction rules. Methods: We included 3181 patients with minor head injury who had received CT scans between February 2002 and August 2004. Of these patients 243 (7.6%) had intracranial traumatic findings and 17 (0.5%) underwent neurosurgical intervention. We analyzed sensitivity, specificity and area under the ROC curve (AUC-value) to compare the performance of various modelling techniques by 10 x 10 cross-validat...
Abstract The study aims to measure the effectiveness of an AI-based traumatic intracranial hemorrhag...
Objectives: To build models based on conventional logistic regression (LR) and machine learning (ML)...
Introduction: Information and communication technologies (ICTs) have changed the trend into new inte...
Abstract Background Prediction rules for intracranial traumatic findings in patients with minor head...
BACKGROUND: Prediction rules for patients with minor head injury suggest that the use of computed to...
BACKGROUND AND OBJECTIVE: The Marshall computed tomographic (CT) classification identifies six group...
Abstract Background Traumatic brain injuries (TBI) are associated with high risk of morbidity and mo...
Background: Head injury is an extremely common clinical presentation to hospital emergency departmen...
Numerous studies addressing different methods of head injury prognostication have been published. Un...
Objective To develop and validate practical prognostic models for death at 14 days and for death or ...
Background: Information collected at baseline can be useful in predicting patient outcome after head...
(1) Background: Radiomics analysis of spontaneous intracerebral hemorrhages on computed tomography (...
This study aims to explore the value of a machine learning (ML) model based on radiomics features an...
With this study we aimed to design validated outcome prediction models in moderate and severe trauma...
Abstract Background Traumatic Brain Injury (TBI) is a...
Abstract The study aims to measure the effectiveness of an AI-based traumatic intracranial hemorrhag...
Objectives: To build models based on conventional logistic regression (LR) and machine learning (ML)...
Introduction: Information and communication technologies (ICTs) have changed the trend into new inte...
Abstract Background Prediction rules for intracranial traumatic findings in patients with minor head...
BACKGROUND: Prediction rules for patients with minor head injury suggest that the use of computed to...
BACKGROUND AND OBJECTIVE: The Marshall computed tomographic (CT) classification identifies six group...
Abstract Background Traumatic brain injuries (TBI) are associated with high risk of morbidity and mo...
Background: Head injury is an extremely common clinical presentation to hospital emergency departmen...
Numerous studies addressing different methods of head injury prognostication have been published. Un...
Objective To develop and validate practical prognostic models for death at 14 days and for death or ...
Background: Information collected at baseline can be useful in predicting patient outcome after head...
(1) Background: Radiomics analysis of spontaneous intracerebral hemorrhages on computed tomography (...
This study aims to explore the value of a machine learning (ML) model based on radiomics features an...
With this study we aimed to design validated outcome prediction models in moderate and severe trauma...
Abstract Background Traumatic Brain Injury (TBI) is a...
Abstract The study aims to measure the effectiveness of an AI-based traumatic intracranial hemorrhag...
Objectives: To build models based on conventional logistic regression (LR) and machine learning (ML)...
Introduction: Information and communication technologies (ICTs) have changed the trend into new inte...