Intravenous thrombolysis is the most commonly used drug therapy for patients with acute ischemic stroke, which is often accompanied by complications of intracerebral hemorrhage transformation (HT). This study proposed to build a reliable model for pretreatment prediction of HT. Specifically, 5400 radiomics features were extracted from 20 regions of interest (ROIs) of multiparametric MRI images of 71 patients. Furthermore, a minimal set of all-relevant features were selected by LASSO from all ROIs and used to build a radiomics model through the random forest (RF). To explore the significance of normal ROIs, we built a model only based on abnormal ROIs. In addition, a model combining clinical factors and radiomics features was further built. ...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
(1) Background: Radiomics analysis of spontaneous intracerebral hemorrhages on computed tomography (...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision-making after ac...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision–making after ac...
ObjectiveTo develop and validate a model based on the radiomics features of the infarct areas on non...
Abstract Background Haemorrhage transformation (HT) is a serious complication of intravenous thrombo...
Hemorrhagic complication (HC) is the most severe complication of intravenous thrombolysis (IVT) in p...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
Hemorrhagic transformation (HT) is one of the leading causes of a poor prognostic marker after acute...
Background and purposeHemorrhagic transformation (HT) after cerebral infarction is a complex and mul...
Permeability images derived from magnetic resonance (MR) perfusion images are sensitive to blood–bra...
This study aims to explore the value of a machine learning (ML) model based on radiomics features an...
Acute ischemic stroke is a major cause of death and disability in modern western society. Possible b...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
(1) Background: Radiomics analysis of spontaneous intracerebral hemorrhages on computed tomography (...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision-making after ac...
Estimation of hemorrhagic transformation (HT) risk is crucial for treatment decision–making after ac...
ObjectiveTo develop and validate a model based on the radiomics features of the infarct areas on non...
Abstract Background Haemorrhage transformation (HT) is a serious complication of intravenous thrombo...
Hemorrhagic complication (HC) is the most severe complication of intravenous thrombolysis (IVT) in p...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
Hemorrhagic transformation (HT) is one of the leading causes of a poor prognostic marker after acute...
Background and purposeHemorrhagic transformation (HT) after cerebral infarction is a complex and mul...
Permeability images derived from magnetic resonance (MR) perfusion images are sensitive to blood–bra...
This study aims to explore the value of a machine learning (ML) model based on radiomics features an...
Acute ischemic stroke is a major cause of death and disability in modern western society. Possible b...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
Background and purposePatients with ischemic stroke frequently develop hemorrhagic transformation (H...
(1) Background: Radiomics analysis of spontaneous intracerebral hemorrhages on computed tomography (...
BackgroundThis study aimed to compare the performance of different machine learning models in predic...