Münster
University Muenster and University Hospital Muenster
Finding the most appropriate MRI sequence to predict IDH mutation status using radiomics-based machine learning
Determining the added value of contrast agents in the radiomics-based classification of astrocytomas using low-dose CT navigation data
Non-invasive classification of astrocytomas using radiomics-based machine learning
Predicting postoperative resection status for meningiomas using machine learning based on clinical features
Machine learning-based prediction of serostatus in autoimmune encephalitis using MRI images of the amygdala
Artificial intelligence-based differentiation of low-grade and high-grade CNS gliomas
Detection of antibodies in patients with autoimmune encephalitis using machine learning based on MRI images of the hippocampus
Finding the most appropriate MRI sequence to predict IDH mutation status using radiomics-based machine learning
Determining the added value of contrast agents in the radiomics-based classification of astrocytomas using low-dose CT navigation data
Non-invasive classification of astrocytomas using radiomics-based machine learning
Predicting postoperative resection status for meningiomas using machine learning based on clinical features
Machine learning-based prediction of serostatus in autoimmune encephalitis using MRI images of the amygdala
Artificial intelligence-based differentiation of low-grade and high-grade CNS gliomas
Detection of antibodies in patients with autoimmune encephalitis using machine learning based on MRI images of the hippocampus