Objective: Our aim is to define the capabilities of radiomics in predicting pseudoprogression from pre-treatment MR images in patients diagnosed with high-grade gliomas using T1 non-contrast-enhanced and contrast-enhanced images.Material & methods: In this retrospective IRB-approved study, image segmentation of high-grade gliomas was semi-automatically performed using 3D Slicer. Non-contrast-enhanced T1-weighted images and contrast-enhanced T1-weighted images were used prior to surgical therapy or radio-chemotherapy. Imaging data was split into a training sample and an independent test sample at random. We extracted 107 radiomic features by use of PyRadiomics. Feature selection and model construction were performed using Generalized Boo...
Retrospective evaluation of data was approved by the local ethics committee and informed consent was...
ObjectiveThis study aimed to develop a radiomics model to predict early recurrence (<1 year) in g...
OBJECTIVE: To assess whether radiomics features derived from multiparametric MRI can predict the tum...
Objective: Our aim is to define the capabilities of radiomics in predicting pseudoprogression from p...
Our aim is to define the capabilities of radiomics and machine learning in predicting pseudoprogress...
Pseudoprogression (PsP) is a diagnostic clinical dilemma in cancer. In this study, we retrospectivel...
Pseudoprogression is regarded as a subacute form of treatment-related change with a reported inciden...
International audienceAbstract Background After radiochemotherapy, 30% of patients with early worsen...
Radiomics analysis has had remarkable progress along with advances in medical imaging, most notabili...
Management of gliomas following initial diagnosis requires thoughtful presurgical planning followed ...
BACKGROUNDAND PURPOSE: Dynamic contrast-enhanced T1-weighted perfusionMR imaging is much less suscep...
Abstract Gliomas can be classified into five molecular groups based on the status of IDH mutation, 1...
Abstract Quantitative MR imaging is becoming more feasible to be used in clinical work since new app...
Background: Brain metastases show different patterns of contrast enhancement, potentially reflecting...
Introduction: There is a cumulative risk of 20-40% of developing brain metastases (BM) in solid canc...
Retrospective evaluation of data was approved by the local ethics committee and informed consent was...
ObjectiveThis study aimed to develop a radiomics model to predict early recurrence (<1 year) in g...
OBJECTIVE: To assess whether radiomics features derived from multiparametric MRI can predict the tum...
Objective: Our aim is to define the capabilities of radiomics in predicting pseudoprogression from p...
Our aim is to define the capabilities of radiomics and machine learning in predicting pseudoprogress...
Pseudoprogression (PsP) is a diagnostic clinical dilemma in cancer. In this study, we retrospectivel...
Pseudoprogression is regarded as a subacute form of treatment-related change with a reported inciden...
International audienceAbstract Background After radiochemotherapy, 30% of patients with early worsen...
Radiomics analysis has had remarkable progress along with advances in medical imaging, most notabili...
Management of gliomas following initial diagnosis requires thoughtful presurgical planning followed ...
BACKGROUNDAND PURPOSE: Dynamic contrast-enhanced T1-weighted perfusionMR imaging is much less suscep...
Abstract Gliomas can be classified into five molecular groups based on the status of IDH mutation, 1...
Abstract Quantitative MR imaging is becoming more feasible to be used in clinical work since new app...
Background: Brain metastases show different patterns of contrast enhancement, potentially reflecting...
Introduction: There is a cumulative risk of 20-40% of developing brain metastases (BM) in solid canc...
Retrospective evaluation of data was approved by the local ethics committee and informed consent was...
ObjectiveThis study aimed to develop a radiomics model to predict early recurrence (<1 year) in g...
OBJECTIVE: To assess whether radiomics features derived from multiparametric MRI can predict the tum...