In many medical applications, interpretable models with high prediction performance are sought. Often, those models are required to handle semistructured data like tabular and image data. We show how to apply deep transformation models (DTMs) for distributional regression that fulfill these requirements. DTMs allow the data analyst to specify (deep) neural networks for different input modalities making them applicable to various research questions. Like statistical models, DTMs can provide interpretable effect estimates while achieving the state-of-the-art prediction performance of deep neural networks. In addition, the construction of ensembles of DTMs that retain model structure and interpretability allows quantifying epistemic and aleato...
The prediction of functional outcome after a stroke remains a relevant, open problem. In this articl...
Acute stroke is often superimposed on chronic damage from previous cerebrovascular events. This back...
International audienceMachine Learning (ML) has been proposed for tissue fate prediction after acute...
Applying deep learning models to MRI scans of acute stroke patients to extract features that are ind...
International audienceAdvances in deep learning can be applied to acute stroke imaging to build powe...
Ischaemic stroke, occurs due to an interruption in blood flow to the brain tissue, is the leading ca...
International audienceThe relationship between stroke topography and functional outcome has largely ...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
© Springer International Publishing AG 2017. Many predictive techniques have been widely applied in ...
International audiencePredictive maps of the final infarct may help therapeutic decisions in acute i...
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. C...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
State-of-the-art machine learning (ML) artificial intelligence methods are increasingly leveraged in...
Predicting infarct volume from magnetic resonance perfusion-weighted imaging can provide helpful inf...
The prediction of functional outcome after a stroke remains a relevant, open problem. In this articl...
Acute stroke is often superimposed on chronic damage from previous cerebrovascular events. This back...
International audienceMachine Learning (ML) has been proposed for tissue fate prediction after acute...
Applying deep learning models to MRI scans of acute stroke patients to extract features that are ind...
International audienceAdvances in deep learning can be applied to acute stroke imaging to build powe...
Ischaemic stroke, occurs due to an interruption in blood flow to the brain tissue, is the leading ca...
International audienceThe relationship between stroke topography and functional outcome has largely ...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
© Springer International Publishing AG 2017. Many predictive techniques have been widely applied in ...
International audiencePredictive maps of the final infarct may help therapeutic decisions in acute i...
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. C...
In developed countries, the second leading cause of death is stroke, which has the ischemic stroke a...
State-of-the-art machine learning (ML) artificial intelligence methods are increasingly leveraged in...
Predicting infarct volume from magnetic resonance perfusion-weighted imaging can provide helpful inf...
The prediction of functional outcome after a stroke remains a relevant, open problem. In this articl...
Acute stroke is often superimposed on chronic damage from previous cerebrovascular events. This back...
International audienceMachine Learning (ML) has been proposed for tissue fate prediction after acute...