Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumour phenotype and predict clinical outcome. For the development of radiomics risk models, a variety of different algorithms is available and it is not clear which one gives optimal results. Therefore, we assessed the performance of 11 machine learning algorithms combined with 12 feature selection methods by the concordance index (C-Index), to predict loco-regional tumour control (LRC) and overall survival for patients with head and neck squamous cell carcinoma. The considered algorithms are able to deal with continuous time-To-event survival data. Feature selection and model building were performed on a multicentre cohort (213 patients) and val...
Head and neck cancer has great regional anatomical complexity, as it can develop in different struct...
International audienceHepatocellular carcinoma (HCC) is the sixth more frequent cancer worldwide. Th...
Background: Radiomics can provide in-depth characterization of cancers for treatment outcome predict...
Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumou...
Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumo...
Introduction: "Radiomics" extracts and mines a large number of medical imaging features in a non-inv...
One major objective in radiation oncology is the personalisation of cancer treatment. The implementa...
Radiomics extracts and mines large number of medical imaging features quantifying tumor phenotypic c...
International audienceAn increasing number of parameters can be considered when making decisions in ...
Abstract Background To investigate the effect of machine learning methods on predicting the Overall ...
{Radiomics leverages existing image datasets to provide non-visible data extraction via image post-p...
Aims: Despite the promising results achieved by radiomics prognostic models for various clinical app...
Objectives: In this study, we aimed to analyze preoperative MRI images of oropharyngeal cancer patie...
Head and neck cancer has great regional anatomical complexity, as it can develop in different struct...
International audienceHepatocellular carcinoma (HCC) is the sixth more frequent cancer worldwide. Th...
Background: Radiomics can provide in-depth characterization of cancers for treatment outcome predict...
Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumou...
Radiomics applies machine learning algorithms to quantitative imaging data to characterise the tumo...
Introduction: "Radiomics" extracts and mines a large number of medical imaging features in a non-inv...
One major objective in radiation oncology is the personalisation of cancer treatment. The implementa...
Radiomics extracts and mines large number of medical imaging features quantifying tumor phenotypic c...
International audienceAn increasing number of parameters can be considered when making decisions in ...
Abstract Background To investigate the effect of machine learning methods on predicting the Overall ...
{Radiomics leverages existing image datasets to provide non-visible data extraction via image post-p...
Aims: Despite the promising results achieved by radiomics prognostic models for various clinical app...
Objectives: In this study, we aimed to analyze preoperative MRI images of oropharyngeal cancer patie...
Head and neck cancer has great regional anatomical complexity, as it can develop in different struct...
International audienceHepatocellular carcinoma (HCC) is the sixth more frequent cancer worldwide. Th...
Background: Radiomics can provide in-depth characterization of cancers for treatment outcome predict...